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Article

Technology Entrepreneurship and the Performance of Enterprises in the Conditions of Covid-19 Pandemic: The Fuzzy Set Analysis of Waste to Energy Enterprises in Poland

Organization and Management Department, Silesian University of Technology, 41-800 Zabrze, Poland
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Authors to whom correspondence should be addressed.
Energies 2021, 14(13), 3891; https://doi.org/10.3390/en14133891
Submission received: 26 April 2021 / Revised: 21 June 2021 / Accepted: 24 June 2021 / Published: 28 June 2021

Abstract

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This article’s aim is to explain the impact of technology entrepreneurship phenomenon on waste management enterprise performance in the conditions of COVID-19 pandemic. The concept of technology entrepreneurship according to the configuration approach and the category of high-performance organization are the theoretical bases of empirical investigation. For the implementation of empirical research, Fuzzy set Qualitative Comparative Analysis (FsQCA) was adopted. The research sample included a group of producers of Refused Derived Fuel (RDF) as a central part of the waste to energy industry located in Poland. The research results showed that the waste to energy sector is highly immune to pandemic threats. While during COVID-19, the basic economic parameters (i.e., sales, profitability and employment) of the entire industry in Poland clearly decreased, the same parameters in the case of the waste to energy industry remained at the same level. The research results allow the formulation of two high-performance models of technology entrepreneurship in the waste to energy industry under COVID-19 conditions. The first model is based on traditional technologies and hierarchical organizational structures, and the second is using innovative technologies and flexible structures. Both technology entrepreneurship models are determined by their emergence as complementary to implementation strategies and the opportunity-oriented allocation of resources within business model portfolios.

1. Introduction

Nowadays, the ongoing COVID-19 pandemic has influenced many sectors of business and many types of business activities [1,2,3,4,5,6,7,8]. Additionally, entrepreneurship has changed due to pandemic conditions [9]. The pandemic affected entrepreneurship because it requires some form of engagement with society. Because of COVID-19, organizations are changing into more digital entities with remote work and web-based teams [10,11,12]. The entrepreneurships in those conditions move towards digital entrepreneurship. Digital entrepreneurship was already widespread after the pandemic, but COVID-19 has influenced entrepreneurs to try to work in a totally digital environment [13,14,15,16,17].
Technological entrepreneurship has an important role in the process of creating a regional economy. When there are many technological organizations in a region, and the level of technological entrepreneurship is high, it has a positive impact on the region in which the organizations exist [18,19,20,21]. Based on that assumption, governments should to emphasise the level of entrepreneurship among students, engineers and managers which can lead into the increase of technological entrepreneurship in the future [22,23]. The possibility of creating new, innovative technological solutions is very important for the organizations and economy [24,25,26,27].
We think that it is especially important in the waste to energy market. This can be a very important part of creating solutions towards transformation of the economy towards a circular economy. In industrialized countries we face a big challenge connected with quickly and safely depositing the growing amount of waste [28,29]. Waste to energy is one of the very important circular economy solutions which have social, economic and environmental positive effects because of better usage of natural resources, potential job creation, reduction of emission amounts and also fostering innovations [30]. This last point is especially important from this paper’s point of view. We think that waste to energy organizations can foster innovation in a circular economy, but it needs technology entrepreneurship. Rada, in his paper, points out many consequences of the circular economy on the waste to energy market and the process of plant designing [31].
Waste to energy facilities can lead to positive environmental and economic effects [32]. In particular, plants operating in the waste to energy market can be recommended in urban areas in big agglomerations, because in those places there is not sufficient space for the installation of biological treatment dedicated for municipal waste [33,34]. However, we think that for increasing the waste to energy market, it is not sufficient to have access to new technological solutions, but we also need a sufficient level of technology entrepreneurship. Without this entrepreneurship, it is not easy to implement new technological solutions. On this basis, we think that is worth analysing the impact of technology entrepreneurship on the waste to energy market and identifying those technology entrepreneurship configurations which have a positive effect on the development of waste to energy organizations.
On the basis of literature analysis, we found that relations between technology entrepreneurship and the COVID-19 pandemic are not well known. This was the research gap on the basis of which we chose our research area. In particular, there is not research about the impact on entrepreneurship in the waste to energy sector. It is interesting to know those relations from scientific and practical point of view.
On the basis of this research gap, we have established our research aim, which is to explain the impact of technology entrepreneurship phenomenon on waste management enterprise performance in the conditions of the COVID-19 pandemic.

2. Literature Analysis

Technology entrepreneurship is something that facilitate functioning and prosperity of firms, individuals, regions and nations [23,35,36,37]. Nowadays it has very big impact on the economy, and this is the reason it is worth studying and analyzing [38,39]. The process of creating technological entrepreneurship itself is based largely on endogenous factors of the organization. For important factors, we can include: expertise and qualifications of employees and also their ability to implement those innovative solutions into practice in their organizations [9,16]. Entrepreneurs are able to be proactive and able to anticipate. They should to build a credible vision of their own business [40,41,42]. In the case of technology, entrepreneur organizations should to understand their business environment, their technology, and also have the ability to know the influence of ecosystem components on new venture strategies [43,44,45,46].
The concept of technology entrepreneurship has many definitions described in the literature [47,48,49,50]. Technology entrepreneurship exists when a new development in science and/or engineering constitutes a core element of the opportunity that can enable the emergence of new market, cluster, venture or industry [51,52,53]. The new development may lead to a new business model based on first-mover advantages, network effects, technical standards and declining costs [54,55].
In Table 1, we present some often-used definitions from important international papers.
The definitions presented in Table 1 suggest that entrepreneurship technology is connected with small rather than big organizations and concentrates on launching and introducing new ventures, products and applications [56,57]. On the basis of the presented definitions, we can propose our definition of entrepreneurship technology which corresponds with our research. Technological entrepreneurship is defined as the specific configuration of strategy and organizational structure around the core of new technologies. A key feature of the organizational configuration of technological entrepreneurship is the ability to dynamically allocate resources within a constantly created portfolio of business models as a response to unpredictable changes in the environment.
Very interesting analysis of the technology entrepreneurship concept was presented by T. Bailetti [58]. He has undertaken a deep analysis of the articles on technology entrepreneurship published from 1970 to identify the various types of definition of the technology entrepreneurship concept, and topics related with this concept, which were in the papers.
Bailetti’s analysis literature about technology entrepreneurship has determined the following main findings about the topic especially often described in international papers [58]:
  • the literature about entrepreneurship concentrates on the topic of technology firm formations;
  • the main part of the literature concentrates rather on small technology organizations, not mid-sized or large firms [59];
  • especially often, papers concentrated on the topic of external factors influencing the formation of technology organizations;
  • additionally, some papers describe the influence of technology entrepreneurship on regional development;
  • very rarely, papers about technology entrepreneurship contribute to the other fields such as economics, management, etc.
Badzińska thinks [60] that the process of creating technological entrepreneurship in a company is an effect of joint achievements of team work which offer support, expertise and knowledge. To achieve successful effects in the field of technological entrepreneurship, an employee should have a tendency to take risks and actions which are concentrated on continuous development [38,39]. Managers should manifest the characteristics of a leader who is open to innovativeness.
The technology entrepreneurship is especially important when we deal with high-performance organizations. The main concept of high-performance organizations was presented by de Wall [61]. He analyzed the impact of the financial crisis and economic downturn (2007–2010) on the functioning of the business world. On the basis of his analysis he tried to identify factors that determined sustainable organizational success in times of economic downturn. This is very interesting, because now we are in the times of another economic downturn due to the COVID-19 pandemic.
The high-performance organizations are organizations whose long-term performance is better than in the case of comparable organizations [62,63,64]. There are many definitions of high-performance organizations but they have the common components as following: employee involvement, participation, empowerment, self-managing work teams, use of total quality management concepts, learning organization and integrated production technologies [65,66].
High-performance organizations lead the way and do not perform better because of only technical or human resources reasons [67,68,69]. Their success is based on a set of factors which should operate together to achieve the effect of synergy [70,71].
The main high-performance organization factors are [61]:
  • autonomy,
  • continuous improvement and renewal,
  • management quality,
  • workforce quality,
  • long-term orientation.
In our paper we used the configurational approach to organization. The concept of configuration can be viewed from a systemic perspective. The organization in this concept should be viewed as a constellation of interconnected elements and is one of the central ideas in many organization studies. It can be dated back to the emergence of systemic thinking [72]. The term organizational configuration can be used to denote a multidimensional constellation of conceptually distinctive characters that can commonly occur together [73].
The problems with the rise of configurational theories were connected with: complexity that can grow exponentially when more elements are added to the system, the need to develop a theory that can deal with the complexity of configuration and methodology that can account for the complexity of interconnected elements which can bring outcomes synergistically and jointly rather than individually [74].
The starting point to resolve those problems was connected with the emergence of set of configurational theoretical methods, especially Qualitative Comparative Analysis (QCA) and the possibility of its use in social sciences. The method itself has its origins in the tradition of the use comparative methods in social sciences and using this method can be transformed into a systematized and developed approach. Especially the conception of the usage of Qualitative Comparative Analysis was developed and described by C. Ragin [75,76,77] and next the conception was improved by other scientists [78,79].
The conception of Qualitative Comparative Analysis was developed as a link between the case-oriented approaches (qualitative approaches) and variable-oriented approaches (quantitative approaches). The use of conception provides the researcher a novel set of tools useful for disentangling many complex casual relationships. The method has its ability to be used to understand the configurational nature of a limited set of cases. The method can be especially attractive in the case in the field of organization and management. This is because the organization is a cluster of interconnected practices and structures and not something of which all components can be easily understood in isolation [80,81].
A very important part of our analysis is connected with the waste to energy industry. The waste to energy concept can be defined as a process used to recover energy from waste by treating and using and it in the form of transport fuel, electricity or heat [82,83]. In European Union countries, Schiffer thinks that biological treatment of waste has the most potential to grow and this technology can be, in the future, commercially viable [11]. The waste to energy conception is a part of municipal waste management. This is an important area which is in the European Commission’s interest. This area has significant impact on the plan for transformation towards a circular economy [32].
Psomopulos describes positive experiences with waste to energy implementation in the USA. He points out that waste to energy can be a good and relevant source of renewable energy. With a good level of maintenance, a waste to energy plant can last about 30 years. Compared the amount of land needed for landfilling, the waste to energy plant needs a much lower amount of land, and because of that the initial capital for land is very small [84,85]. In another paper, Psomopoulos also describes the positive effects of using waste management methods in EU countries. The EU now promotes energy recovery using thermal treatment that leads to providing electricity and heat to industrial, domestic and commercial consumers and also can have a positive effect in eliminating the amount of waste to be landfilled [86]. In EU countries the most widespread technology for waste to energy is grate combustion. Using this technology, thermal energy can be recovered and in this way heat is converted to electricity [87]. Psomopoulos in his paper has described many valuable examples from EU countries about using various types of waste to energy approaches in many EU cities. He, based on his research, points out that waste is a very valuable source of energy and materials. The highest priority in waste to energy usage is reuse and also recycling, combined with source separation. All analyzed cities used various methods of energy recovery from waste. The usage of energy from waste is also a very important factor towards sustainable city development [87]. Other examples of successful implementation of waste to energy projects are described by Kumarasi and Dissanayke. They found that the stakeholders’ involvement is a very indispensable element in the successful implementation of waste to energy conceptions in business [88]. They can influence a new waste to energy project and contribute by source reduction and helping with cooperation with civil bodies and identification of potential waste to energy technologies and facilities. Stakeholders can also impact on implementing environmental standards and regulations, which are important for waste to energy companies. Moreover, they apply pressure on implementing environmental policies and standards [88]. The good level of economic efficiency of using waste to energy technology is also described by Wen-Tsa [89,90]. He points out that using of waste to energy is a win-win approach. This technology can generate a good amount of electricity, and also decrease dependence on imported fossil fuels and greenhouse gas emissions [89,91]. Further, Zhao described positive economic effects of using waste to energy technology in China [92]. We can observe the same positive effects in many European Union-related researches [93,94,95,96].
Amongst the EU countries and organizations which contribute to waste to energy development is CEWP—The Confederation of European Waste-To-Energy Plants. This organization is an umbrella association of many international and national operators of waste to energy. It represents 410 plants which operate in 23 countries. Those organizations make up about 80% of the waste to energy market in Europe [97]. According to CEWP, waste to energy is an important factor in the way towards a circular economy. Now, the current capacity of EU plants in the case of waste to energy is about 90 million tones, and it will increase significantly in the following years [98]. In addition, it needs to be underlined that the broader usage of renewable energy paves the way towards decarbonisation of the economy. The production of energy from waste leads to significant saveings in greenhouse gas emissions, because this type of energy can replace traditional energy from fossil fuels; also very important is the organic (biodegradable) part of waste input [99,100].
Further, we can find in the literature analysis about problems in the process of implementing a waste to energy strategy. For example, Vujic describe some barriers connected with implementation of this strategy in developing countries. He points out problems connected with [101]:
  • lack of good distinctions between city ownership and state,
  • problems with job positions,
  • problems with corruption in the country which can have negative impact on waste to energy projects,
  • lack of sufficient sources of investment,
  • problems connected with low capacity needed for new legislation implementation,
  • problems with sufficient capacity of local government and ministries.
The waste to energy market operates in EU based on some legislation acts. One very important act is a Waste Framework Directive 2018/851. This directive sets the basic definitions and concepts related to problems connected with waste management—for example, definition of waste and definition of recycling. The directive also introduces the waste hierarchy [102]. The Landfill Directive (2018/850) is about prevention and reduction of the adverse effects of the landfill of waste on the surroundings. The Directive classifies the type of landfills and obligates Member States to minimize the amount of biodegradable waste in landfills [103]. Additionally, problems connected to waste to energy are mentioned in The European Green Deal (11 December 2020). It provides the EU strategy which aims towards the efficient usage of resources by moving towards a circular economy [104]. Another very important EU new document connected with waste to energy is the Circular Economy Action Plan (11 March 2020). This document gives specific strategies for how to move from a linear to a circular economy in the case of many materials such as, for example, textiles, food, plastics, construction, batteries, etc. [105].

3. Methodology

The main goal of this article is to describe the impact of technology entrepreneurship on strategic organizational effectiveness under the unexpected change COVID-19 in municipal waste to energy industry. Technology entrepreneurship is a strategic management category which theoretically should play a positive role in the context of organizational strategic development occurring in the context of an uncertain environment. The pandemic of COVID-19 is an example of unpredictable change, the nature of which is complex and its influence on organizational strategic development is multidimensional. The empirical research was conducted in the fourth quarter of 2020, while all statements were related to the situation of the surveyed company in the period from March to June 2020, i.e., the period of the first wave of the COVID-19 pandemic. This made it possible to capture the behavior of the surveyed enterprises during a surprising change.
The survey statements were developed based on the analysis of previously published research on technology entrepreneurship and high-performance organizations. Technology entrepreneurship was measured in light of the configuration approach according to which various organizational phenomena consist of interconnected strategies and structures, and is not a situation in which all components can be easily understood in isolation. The most important strategies and structures which constitute the configuration of technology entrepreneurship which were measured in the questionnaire are the following [106,107,108,109,110]: (a) the strategy understood as long-term oriented organizational behavior is both the executive following the previously prepared plans and emergent according to occurring unpredictable changes (strategy both executed and emergent); (b) the organizational structure within which the technology entrepreneurship strategy is happening is flexible, team-based organization with distributed leadership (flexible structure and distributed leadership); (c) the organization has free resources at its disposal which allows the quick allocation of resources within the business model portfolio and according to unpredictable changes (unpredictable opportunity based resource allocation); (d) the central element of technology entrepreneurship in the form of the most advanced technologies used by the organization in its value-creation process (innovative technologies in value-creation process). High-performance organizations were measured using a three-dimensional effectiveness model consisting of financial, development, and social organizational perspectives [61]. Each questionnaire statement was measured using a seven—point Likert scale with a choice of answers from 1 (strongly disagree) through 4 (don’t know) to 7 (strongly agree). Particular statements were measured as the degree of compliance of the organization’s state with a given statement, with performance statements assessed in relation to average industry performance. The research questionnaire is included in the Appendix A.
Waste management was chosen as a research area because, on the one hand, waste is a litmus test of the development processes of the entire economy, and on the other hand it is particularly exposed to viral infections such as COVID-19. The development measured by sales, financial measured by profitability of sales and employment performance statistics which describe the situation of whole waste management industry in Poland under COVID—19 are presented in Table 2.
The statistics show the three—dimensional performance of the whole waste management industry after the first half of 2020, in comparison with the same periods in the past three years. Additionally, the same statistics are shown for the whole industry; in other words, the table includes main performance indicators of waste management in Poland under COVID-19 in time and industrial perspectives. From the information contained in the table, it can be concluded that the waste management industry has shown great resistance in relation to the unpredictable change in the form of the COVID-19 pandemic. This is clear in both time- and industrial-level comparisons, and taking into account all three performance indicators, but especially the development measured by sale level. Comparing all three waste management industry performance parameters in the same periods over the last three years (i.e., in the end of the June), it should be stated that they did not change. Surprisingly, the waste management industry developed at the same pace during the COVID-19 pandemic’s first wave and during the three previous analogous periods when comparing the waste management industry with the entire Polish industry. Clear differences should be noted, especially with regard to the parameter of sales revenues. While sale showed stability for waste management industry, the entire Polish industry clearly slowed down.
The surprisingly positive results of the research on the resilience of the whole waste management industry in COVID-19 conditions encouraged us to continue the investigation in the form of a technology entrepreneurship explorative study of a small sample of the most effective enterprises. It was decided to focus on a deliberately selected sample of Polish companies producing alternative fuel based on waste Refused Derived Fuel (RDF). These enterprises are located in the center of the waste to energy industry, between storing and processing enterprises, which is part of the whole waste management branch. The high development potential of the waste to energy industry in Poland is shown in the below table (see Table 3); compared with recycling and landfilling, energy recovery in Poland is especially underestimated.
While recycling and landfilling indicators are similar in Poland and the EU (counted as an average of 27 countries) the energy recovery measures counted as a percentage of the whole waste management industry are at least two times lower. This shows that entrepreneurial development potential of the energy recovery sector is very strong in Poland. In addition, the waste to energy industry is based on incineration technologies which especially predispose them in the context of viral infections such as COVID-19. Because of regulatory and technological reasons, investments in energy recovery plants (R1) are very specific and decisions about location and the size of a waste to energy facility should also consider such factors as the gate fee. In other words, the investment algorithm in this case should be complex, e.g., taking into account that efficiency of R1 requires high utilization factor while the minimization of gate fee requires high R1 and high metals recovery (99). Similar to investment decisions, the development paths of individual plants and the whole waste to energy industry are multidimensional and go far beyond the free market conditions. On the one hand, scientific research shows the lack of impact of Purchase Power Priority (PPP) on the development of this industry, and, on the other hand, they condition this development with such determinants as the type of plant ownership, waste mobility or decentralization (100, 101). The very specific characteristics of the waste to energy industry were the stimulus to research the meaning of technology entrepreneurship as a conventional uncertainty management tool [111,112,113] in the circumstances of unpredictable change, such as COVID-19.
The analysis of the structure of the Polish WTE industry in the end of 2016 in the part of RDF producers and RDF processors is presented in Table 4. The total level of the market, market shares of the four biggest players, the market concentration ratio (105), minimum efficient scale (128) and economies of scale (130) are included in this table. The market concentration ration is defined as the accumulated percentage of market share of the four largest firms in the industry. Minimum efficient scale is formulated as the average firm size of the largest firms accounting for half of the industry output. The economies of scale ratios are calculated by dividing the minimum efficient scale by the market’s total output.
The structural analysis of RDF producers shows that this sector in Poland is an industry with medium concentration and a significant number of firms. The measures of minimum efficient scale and economies of scale are quite low. A different situation is seen in the RDF R1 processors sector, as this industry in Poland is highly concentrated with few companies, mainly from the cement industry. The measures of minimum efficient scale and economies of scale are high, creating strong entry barriers. Comparing the economic parameters of RDF producers and processors presented in the above table, one can easily see the definite advantage of supply over demand of RDF on the Polish market. The bargaining power of the recipients in relation to RDF suppliers is overwhelming; additionally, low barriers to entry into the RDF producers sector create the possibility for processors to build their own RDF production plants. This results in increasing fees for RDF adoption and further, increasing profitability of RDF processing plants for energy. In Poland, a network of municipal plants transforming RDF into energy is currently being projected. Mostly, due to the high importance for local communities, high transport costs and large-scale investments, these are initiatives in the area of local public-private partnerships. Local, public-private RDF processing plants for energy should balance the current advantage of supply over demand in the RDF market in Poland and reduce the currently very strong competitive position of cement plants [114].
In the above-described industrial structure circumstances, a very interesting research question emerged about the technology entrepreneurship as an important success driver of RDF producers. The research question formulated on this phase of research was: what are the characteristic configurations of technology entrepreneurship in the case of high-performing RDF producers within the COVID-19 pandemic in Poland? The surveyed enterprises were manufacturers of RDF which represent an intermediary element of the Polish waste to energy industry (see Figure 1 below).
Exactly 25 enterprises represented by respondents who were members of management teams took part in the Computer Aided Telephone Interview (CATI) conducted in fourth quarter of 2020. The respondents were the members of top management of chosen enterprises. Ten enterprises were qualified for further research as high-performing RDF manufacturers (In Poland, the 15 biggest RDF producers cover 50% of the whole RDF industry production, so only small sample research (n < 50) is possible). These were the respondents who declared at least one of three performance indicators more than the average in the industry. To analyze technology entrepreneurship as the driver of the high performance of RDF producers, the Fuzzy set Comparative Qualititave Method (FsQCA) was used. FsQCA is a methodology for obtaining linguistic summarizations from data that are associated with cases. It was developed by the social scientist Prof. Charles C. Ragin. FsQCA seeks to establish logical connections between combinations of causal conditions and an outcome, the result being rules that describe how combinations of causal conditions would cause the desired outcome. As such, each rule is a possible path from the causal conditions to the outcome. The rules are connected by the word OR to the output. In this article, in accordance with research question “what are the characteristic configurations of technology entrepreneurship in the case of high-performing RDF producers within the COVID-19 pandemic in Poland?”, the combinations of causal conditions are configurations of technology entrepreneurship and an outcome is high-performance organization in the time of COVID-19. The general research idea with the use of the FsQCA method is presented below (see Figure 2).
The FsQCA method is especially dedicated to entrepreneurship research because of its configurative nature with asymmetries and multiple pathways [115]. As noted previously, technology entrepreneurship as a casual factor was measured using five survey statements regarding strategic executive and emergent behaviors, flexible structures and distributive leadership, allocation of resources within the business model portfolio and using the most advanced technologies in value creation process. High-performance organization as an outcome factor was measured using a three-dimensional performance scale consisting of development, financial and social effectiveness. The contextual dimension of the conceptual research model is the waste to energy industry in Poland in the COVID-19 pandemic.

4. Results

The main data analytic methodology was FsQCA. Fuzzy sets method was the base analytic logic, according to which fuzzy set A in the certain space of considerations X was defined as a set of the following pairs:
A = {(µA(x), x): x € X, µA(x): X → [0, 1]}
According to the conceptual research model (see Figure 2.) two main fuzzy sets were analyzed, i.e., a fuzzy set of enterprises characterized by different technology entrepreneurship features (in other words casual factors fuzzy sets) and a fuzzy set of high-performance organizations (in other words, the outcome factor fuzzy set). Considerations X is the whole sample of researched enterprises and consideration x is the particular ith enterprise as the part of X. Membership function µA has two sub-functions:
-
µCj (i)—function of membership of the ith company to the set of enterprises with particular feature describing their technology entrepreneurship Cj (i.e., casual factor);
-
µE (i)—function of membership of the ith enterprise to the set of high-performance organization E (i.e., outcome factor).
In order to transform the 7-point Likert interval scale into fuzzy sets, the standard calibration procedure was used. According to this procedure, both measured variables (i.e., casual factor in the form of technology entrepreneurship and outcome factor as high-performance organization) were calibrated from the 7-point Likert scale to function of membership using the threshold for full membership (7—strongly agree), the threshold for full nonmembership (1—strongly disagree), and the cross-over point (5—I don‘t know).
Afterwards, on the basis of the functions µE (i) and µCj (i), based on the logic of fuzzy sets and Bool’s algebra, the impact of belonging to particular sets Cj and to the set E was analyzed. These analyzes can be formalized in the following form:
Y → F(x1,x2,…)
where: Y means that a company belongs to the set of high-performance organizations, and xj means that a company belongs to the set of companies with the j-th feature (however, instead of x, its negation may occur). F means the logic formula which is the sum of products of logic simple sentences (each of which expresses the belonging of a company to one set Cj).
The above-described FsQCA procedure was carried out with the use of fsQCA 3.0 Windows software. Table 5 shows the calibration cutoffs and descriptive statistics of the research sample.
The Table 6 includes the models of technology entrepreneurship configurations in the high-performing enterprises and RDF producers in the waste management industry in Poland under the conditions of the first wave of COVID 19 (i.e., in the period from March to June 2020). According to FsQCA methodology, consistency and coverage are two essential indexes for data synthesis. Consistency measures the degree to which solution terms and the solution as a whole are subsets of the outcome. It assesses the degree to which the combination of casual variables in the form of solution consistently produces the outcome variable. Coverage measures how much of the outcome is explained by each solution term and by the solution as a whole. In other words, it indicates the proportion of the sample’s cases that reflects the solution. Raw coverage measures the proportion of memberships in the outcome explained by each term of the solution. Unique coverage measures the proportion of memberships in the outcome explained solely by each individual solution term. Consistency threshold indicates the acceptable level of dissimilarity between the conditions and the outcome for the cases represented by a particular configuration. Coverage threshold is to exclude solutions that are empirically trivial. In the literature there is a common practice that minimal consistency should be set at 0,8 and the coverage should be greater than 0.2 [116,117]. (The formalizations of consistency and coverage calculations are the following: Consistency = ∑ (min (µCj, µE))/∑(µCj); Coverage = ∑ (min (µCj, µE))/∑( µE)).
Two alternative models of technology entrepreneurship of high-performing RDF producers in Poland were identified with solution coverage of 0.97 and solution consistency 0.89, as evident in the Table 3. Both configurations are based on strategic behaviors based on both execution and emergence and opportunity-based resource allocation. They differ taking into account flexible structure and distributed leadership and using innovative technologies in value creation process.
The first model is based on the strategic behavior of the organization as both the implementation of strategic plans and current opportunism, rigid organizational structures and a permanent leadership position, and flexible, opportunity based allocation of resources within a business models portfolio. This model does not take into account process innovations and is based on manufacturing technologies that are traditional in the industry. The second model, as with the previous one, is based on implementation and emergent strategic behaviors of the organization and flexible allocation of resources within the business model portfolio; however, unlike the previous model, it uses innovative manufacturing technologies. By synthesizing the obtained models of technological entrepreneurship in the RDF producers industry, it can be concluded that the strategic emergence and flexible allocation of resources, characteristic for organizational entrepreneurship, occur in the first model based on rigid organizational structures and around traditional manufacturing technologies, while in the second model around innovative RDF manufacturing technologies. Both configurations in an equal way lead to above-average performance in the RDF producers industry. Thus, two different main configurations of casual variables describing technology entrepreneurship concepts culminate in the high-performing RDF producer. The main difference between models is rooted in structures, leadership and using innovative technologies in the production process.

5. Discussion and Conclusions

Technology entrepreneurship as a strategic development process plays an especially important role in the context of unpredictable change management. Strategic organizational behaviors which are based only on strategy execution are insufficient in the uncertain environment and strategic emergency seems to be necessary. In turbulent times, such as in times of the COVID-19 pandemic, the strategic thinking in an organization is not easy. The problems with strategic thinking come from the fact that the future is unpredictable and represents unknown domains in terms of business evolution, disruption and technology. Additionally, technology entrepreneurship is not easy in those times [35,36,37].
In this paper, we tried to find out the impact of technology entrepreneurship on strategic organizational effectiveness under the unexpected change of COVID-19 in the municipal waste to energy industry. We tried to find out what combination of organization characteristics in the field of technological entrepreneurship leads to being a high-performing producer in the waste to energy sector. There were not analyses about such a topic in the literature, but we can find many papers about the impact of a pandemic on the various types of business [118]. It is interesting that in some branches the pandemic effect was the decrease of the production amount and problems with functioning of the organizations [1,119,120,121,122]. In others the effect was not so big, or even in some cases authors observed a positive effect of the pandemic on organizations [123,124,125].
Flexible organizational structures and distributed leadership occurring around the most innovative technologies are key organizational capabilities in uncertain times [126,127]. In other words, technology entrepreneurship understood as emergent strategic behaviors based on flexible structures and distributed leadership around the core of the most innovative technologies is a key organizational capability which allows achieving high-performance strategic measures. The COVID-19 pandemic is an example of unpredictable change which affects the performance of the entire economy. Waste management, as an important part of the entire economic system, was chosen as a research area because on the one hand, waste is a litmus test of the development processes of the entire economy, and on the other hand it is particularly exposed to viral infections such as COVID-19. The main purpose of the article was to describe the performance meaning of technology entrepreneurship in waste management industry in the context of unpredictable complex change such as the COVID-19 pandemic.
The overall conclusions can be divided in two parts, first regarding the influence of COVID-19 on the whole waste to energy industry in Poland and second regarding the most effective technology entrepreneurship configuration in the industry. Describing the influence of COVID-19 on the whole industry, surprisingly, the waste management industry in Poland developed at the same pace during the COVID-19 first wave pandemic and during the three previous years’ analogous periods. Level of sales and employment in the entire waste management industry did not change under COVID-19, and what is especially interesting is that the level of profitability of sales even grew. It is an especially interesting conclusion that, in the context of the same sale, profitability of sale and employment indicators for the entire industry in Poland fell very noticeably (see Table 1). In our analysis, we observe that in waste to energy enterprises the pandemic has positive effects on organizations. It is interesting that the sales increased and also we can observe the increase of profitability of sales. The same was observed in the wastetoenergy branch in China by Zhou [6]. This suggests that the situation is not only specific for the researched organization in Poland, but could be typical for this branch. However, in many other branches we lead with different situations and the pandemic lead to decreases in production levels, and it was troublesome for organizations [118].
Additionally, in this branch the COIVID-19 pandemic has positive effects on innovativeness. For example, Sarkodie and Owusu have found that COVID-19 has a positive impact on the zero-waste approach in European Union countries. This approach encompasses the conservation of all needed resources by means of responsible consumption, production, recovery of products and reuse with no discharges to land, water or air that could treat the environment of humans [128,129]. Further, other authors think that the troublesome situation can be a chance for progress in this industry.
It can therefore be concluded that the industry was a kind of economic oasis in the pandemic.
The second part of our research was performed using Qualitative Comparative Analysis (QCA) which is based on fuzzy set logic. Using QCA, we tried to identify patterns which lead organizations to achieve high-performance results. In our research, we have found that there are two possible patterns of high-performance companies in the waste to energy industry.
The two prevailing technology entrepreneurship configurations characteristic for high-performing waste to management industry enterprises are the following:
M1: traditional manufacturing technologies and hierarchical structures with a fixed leader position technology entrepreneurship model and
M2: an innovative manufacturing technologies technology entrepreneurship model.
Our models were identified using a configurational approach based on Ragin’s conception [72,73,75,76,77]. We use the mentioned software to identify those two models based on empirical data. The models are not trivial and we can spot, in analyzing them, some differentials with typical, well-established conceptions.
The first model is used in traditional organizations. The model means that an organization can have good results and be included as a high-performance organization even if they are not very innovative. However, this is possible only in organizations with established market positions and flexible allocations of the organization’s resources. We think this is an very interesting finding of the paper, because many other authors think that the high-performance organizations should be very innovative and flexible [54,56,57,130,131]. We think that is not always true. Additionally, De Wall’s concept about high-performing organizations [61] concentrated on autonomy and continuous improvement. Sometimes it is needed, and those traits will be important in our second identified model, but this first model is not accordance with it. In this particular situation some organizations can be high-performance organizations without a high level of autonomy.
In some situations, big organizations with hierarchical structures may function well on the market and may have a potential to grow. This type of organization uses its good market position and tries to defend it using a rather passive strategy. However, in an industry which is not very innovative this could be a successful strategy.
The second strategy that leads to a high-performance organization position is based on innovative approaches and entrepreneurship. It is used in the case of organizations without an established market position which can be increased using new, innovative solutions. This solution is more typical for high–performance organizations and many international researchers have found that innovativeness is a very important part of high-performing enterprise configurations [51,52,53,56,57]. This model is in accordance with others authors’ main findings [38,39,54,55,56,57,58,59].
Both models are based on emergent strategic behaviors which complement the strategy execution and flexible allocation of resources within the business model portfolio. The difference between them, beyond the technology innovativeness, is the type of organizational structure and leadership. The first model leverages the traditional organizational structures, and the second seems to be based on more flexible forms.
The main contribution of our paper is the finding that traditional organization can also achieve good results in the waste to energy market if they use an appropriate strategy. Those types of organizations can also be high-performing organizations and have a good market position and good results of their activity.
Our main finding is that in the waste to energy industry, there are two independent paths to achieve being a high-performing enterprise. One path is useful for bigger, established, on-the-market organizations and the second one is useful for new organizations trying to find their place on market. Those two strategies should not be mixed and each one is adjusted to a particular type of organization. We think this finding is important for waste to energy organizations, not only from Poland but also from other countries. They, based on their market position, should choose an appropriate strategy to achieve a good position and to be a type of high-performing organization.
The main novelty in this study connects with implementing technological entrepreneurship conceptions and the QCA method to the waste to energy market. The implementation of new circular economy solutions for waste to energy needs a sufficient level of technological entrepreneurship. It is interesting from an economics and management point of view to know what configuration of entrepreneurship traits lead to an organization’s good functioning and achieving a high efficiency in the waste to energy market. To do this, we used the very prospecting and mathematically advanced method of QCA based on fuzzy logic. The use of this method allowed us to identify configurations of entrepreneurship characteristics which are not possible to identify in another way. We think that the usage of the QCA method in this case is interesting because we did not find a paper about technological entrepreneurship in the waste to energy market based on the QCA method. In addition, we think the identification of two types of configuration of technological entrepreneurship trends means that the identification of two different models leading to high-performing organizations can be a contribution to the field of the management of the waste to energy market. Those two models are valuable from a scientific and also practical perspective, because organizations on this market can use them to achieve high performance.
The solution can be useful for an organization in the process of transformation towards a circular economy. When an organization knows what configurations of traits leads to high performance, an organization can try to use this knowledge. We think our findings can be very useful especially for stakeholders of organizations. The two types of technology entrepreneurship configurations are useful because when organizations implement a waste to energy strategy, they can use one of them to achieve good results. When organizations have good results, we can include it as a high achieving organization as it leads to the fulfillment of customers’ and employer’s needs. These organizations have a positive impact on the natural environment and also generate places of work in local communities. This is important and positive from a local government and economical organization point of view. This study has some limitations. The first limitation is that the research was done on a small populace of organizations from one country. However, we should mention that the waste to energy market in Poland is not big and researched organizations are about 40% of Polish waste to energy industry organizations. Further, we used the fs/QCS method, which is appropriate for analysis of small groups of data [116,117]. The second limitation is connected with operalization of variables. Our operalization was only one possible solution, but we based it on extensive literature analysis [38,39,56,57,106,107,108,109,110,132,133,134,135,136,137,138,139,140]. Because of the limitations of our study we cannot generalize all results on the whole waste to energy industry. We analyzed only high-performance organizations and, in the case of our identified configurations, they can be used only for those parts of waste to energy organizations.
Future research can concentrate on using this method in other types of organizations and other industries. It is worth investigating if the same two models of how to achieve a level of high-performing organization by technological entrepreneurship are present in other industries or if in each industry we can find different types of models.

Author Contributions

The main activities of the team of authors can be described as follows: Conceptualization, P.K.; methodology, P.K., R.W.; software, P.K.; validation, P.K., R.W.; formal analysis, P.K., R.W.; investigation, P.K.; resources, P.K., R.W.; data curation P.K., R.W.; writing—original draft preparation, P.K., R.W.; writing—review and editing, P.K., R.W.; visualization, P.K., R.W.; supervision, P.K., R.W.; funding acquisition, P.K., R.W. All authors have read and agreed to the published version of the manuscript.

Funding

The analysis in this publication has been made in the course of the internal research project of Silesian University of Technology project 13/010/BK_21/0057.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data is contained within the article.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A. Technology Entrepreneurship Questionnaire

1.Name, legal form and www of the company……..
2.Employment in the end of 2019……..
3. Revenues in the end of 2019………
4. After the first half of 2020 the company gained the return on sale higher than avarege in the RDF producers sector in Poland 1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
5. After the first half of 2020 the company gained the level of sale increase higher than avarege in the RDF producers sector in Poland1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
6. Within the first half of 2020 the company employees level of engagement in its processes were greater than avarege in the RDF producers sector in Poland 1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
7. The strategy understood as long term oriented organizational behavior is both the executive following the previously prepared plans and emergent according to occurring unpredictable changes (strategy both executed and emergent)1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
8. The organizational structure within which the technology entrepreneurship strategy is happening is flexible, team based organization with distributed leadership (flexible structure and distributed leadership)1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
9. The organization has free resources at disposal which allows the quick allocation of resources within the business model portfolio and according to the unpredictable changes (unpredictable opportunity based resource allocation)1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)
10. The central element of technology entrepreneurship in the form of most advanced technologies used by the organization in value creation process (innovative technologies in value creation process)1 (strongly disagree)2 (no)3 (rather no)4 (I don’t know)5 (rather yes)6 (yes)7 (strongly agree)

Appendix B. The Market Shares of 15 the Biggest RDF Producers and Processors in Poland in 2016

NrNames of RDF ProducersProduction Size [Tons per Year]Market Share [%]Cumulative Market Share [%]NrNames of RDF R1 ProcessorsR1 Processing Size [Tons per Year]Market Share [%]Cumulative Market Share [%]
1NOVAGO Sp. z o.o.194,932.77.477.471GÓRAŻDŻE CEMENT S.A.266,02027.5827.58
2PPHU LEKARO Jolanta Zagórska186,730.37.1614.632Grupa Ożarów S.A.181,72618.8446.41
3MPO m.st. Warszawie Sp. z o.o.150,193.75.7620.393LAFARGE CEMENT S.A.146,56615.1961.61
4NOVAGO ŻNIN Sp. z o.o.94,110.933.6123.994Dyckerhoff Polska Sp. z o.o.123,00812.7574.36
5ZGOK Sp. z o.o. w Olsztynie90,100.23.4527.455Lafarge Cement S.A.113,071.0811.7286.08
6EKOPALIWA CHEŁM Sp. z o.o.88,538.173.3930.846CEMEX Polska Sp. z o.o.51,763.985.3791.44
7PUK Empol Sp. z o.o.76,1322.9233.767Cementownia ODRA S.A.25,800.72.6794.12
8EKO-MYŚL Sp. z o.o.65,878.42.5336.288STORA ENSO Sp z o.o.16,613.891.7295.84
9NOVAGO Sp. z o.o.58,890.362.2638.549P.U.H.P. LECH Sp z o.o.13,489.681.4097.24
10ZUO CLEAN CITY Sp. z o.o.53,934.582.0740.6110Grupa OŻARÓW S.A.13,040.981.3598.59
11KOM-EKO S.A.53,2612.0442.6511MPO Warszawa Sp. z o.o.12,142.41.2699.85
12BM Recykling Sp. z o.o.52,2952.0044.6512Elektrownia Połaniec S.A.1118.10.1299.96
13STAROL Sp. z o.o.48,455.841.8646.5113Mo-BRUK S.A.290.960.0399.99
14Partners Sp. z o.o. Sp. K.47,073.541.8048.3214MZGOK Konin400.00#####
15Mo-BRUK S.A.45,617.21.7550.0615
Sum:1,306,144 Sum:964,692
Total:2,608,958 Total:964,702
Source: website database on wastes, https://ibdo.pl/rynek-paliw-alternatywnych-20162017/ (accessed on 31 June 2020).

Appendix C. Technology Entrepreneurship Configurations of High-Performing RDF Producers in Poland—Raw Output Generated by the fs/QCA 3.0 Windows Software

Energies 14 03891 i001

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Figure 1. The case study research objects.
Figure 1. The case study research objects.
Energies 14 03891 g001
Figure 2. The conceptual research model.
Figure 2. The conceptual research model.
Energies 14 03891 g002
Table 1. The main definitions of technology entrepreneurship.
Table 1. The main definitions of technology entrepreneurship.
AuthorDefinition
Jones-Evans (1995)The establishment of a new technology venture
Jelinek (1996)Efforts to interpret data which are ambiguous to sustain technology efforts and coordinated persistent endeavors used to accomplish technological change.
Venkataraman and Sarasvathy (2001)Solutions used in search of problems
Nicholas and Armstrong (2003)Organization risk bearing and management in technology based businesses
Graud and Karnøe (2003)An agency that can be distributed across different kinds of actors. Each of them is involved with a technology and also in the process can generate inputs resulting in transformation of an new, emerging technologies.
Liu (2005)Ways in which entrepreneurs can draw on structures and resources to exploit opportunities in emerging technologies
to sustain technology efforts and coordinated persisted endeavor used to accomplish technological change.
Dorf and Byers (2005)Technological entrepreneurship is a style of business leadership that involves factors as: human resource high-potential capitalization, identification, managing accelerated growth, technology intensive commercial opportunities and significant risk taking.
Abdullah and Ahcene (2011)Technology entrepreneurship can be understood as the integration of technological and entrepreneurial realms.
Bailetti (2012)Technology entrepreneurship is an investment in a project. This investment assembles and deploys specialized heterogeneous assets and individuals which are intricately related to the new conceptions in scientific and technological knowledge. The purpose of the activity is creation and capturing additional value for a firm.
Beckman, Eisenhardt, Kotha, Meyer, Rajagopolan, (2012)Technological entrepreneurship occurs when the development of science and engineering creates a key element of an entrepreneurial opportunity, enabling the generation of a given venture, market, cluster or even the entire industry
Source: on basis: [1,2,3,4,5,6,7,11,19,20,21,56,57].
Table 2. Economic indicators of waste management industry in Poland under first wave of the COVID-19 pandemic, in comparison with the entire industry; results after the first half of 2020 in light of the same date’s previous three years.
Table 2. Economic indicators of waste management industry in Poland under first wave of the COVID-19 pandemic, in comparison with the entire industry; results after the first half of 2020 in light of the same date’s previous three years.
End of 2017–2020 Half Year/Economic ParameterSale
Industry [in mln EUR]
Sale Waste Manag. [in mln EUR]Profitability of Sale Industry [%]Profitability of Sale Waste Management [%]Employment Industry [in Thousand, Month Average]Employment Waste Management [in Thousand, Month Average]
2017167,02515706.64.8264856
2018170,884/
2.3
1555/
−0.95
6.6/
0
3.5/
−0.27
2720/
0.03
59/
0.05
2019184,663/
8
1823/
17.2
5.8/
−0.12
6.9/
0.97
2773/
0.02
61/
0.03
2020 (after COVID-19 first wave)162,945/
−11.8
1999/
9.6
5.6/
−0.03
10.9/
0.58
2660/
−0.04
63/
0.03
Each data is supplemented with dynamics calculated as a degree of change in relation to the previous year.
Source: Statistics Poland database: stat.gov.pl (accessed on 31 June 2020), (according to NACE; industry: sections B, C, D, E; waste management industry: E38—waste collection, treatment and disposal activities; materials recovery).
Table 3. The place of waste to energy in the whole Polish and EU waste management industries.
Table 3. The place of waste to energy in the whole Polish and EU waste management industries.
Years/QuantityWaste ManagementRecovery-Energy Recovery (R1)Recovery-RecyclingDisposal-Landfilling (D1, D5, D12)
EU-27 CountriesPolandEU-27 CountriesPolandEU-27 CountriesPolandEU-27 CountriesPoland
2016kgs/cap150417972641518401 007357519
%10010018856562429
2014kgs/cap153320552331428481 238389542
%10010015755602526
2012kgs/cap1510178021791817983402511
%10010014554552729
2010kgs/cap14481704184102776989393471
%10010013654582728
Rows: years/kilograms per capita and percentage; columns: waste management operations/EU and Poland
Table 4. Structural analysis of WTE (RDF producers and processors) in Poland in 2016.
Table 4. Structural analysis of WTE (RDF producers and processors) in Poland in 2016.
NrName of RDF ProducerProduction Size [Tons per Year]Market Share [%]Cum. MARKET Share [%]NrNamesof RDF R1 ProcessorR1 Processing Size [Tons per Year]Market Share [%]Cum. Market Share [%]
1NOVAGO Ltd.194,932.737.477.471GÓRAŻDŻE CEMENT JSC266,020.1027.5827.58
2PPHU LEKARO Jolanta Zagórska186,730.307.1614.632Grupa Ożarów JSC181,726.2618.8446.41
3MPO m.st. Warszawie Ltd.150,193.655.7620.393LAFARGE CEMENT JSC146,566.3115.1961.61
4NOVAGO ŻNIN Ltd.94,110.933.6123.994Dyckerhoff Polska Ltd.123,008.0012.7574.36
Total production2,608,958 Total processing964,702
Concentration ratio0.24 Concentration ratio0.47
Minimum efficient scale87,076.26 Minimum efficient scale198,104.22
Economies of scale0.03 Economies of scale0.21
Source: website database on wastes, https://ibdo.pl/rynek-paliw-alternatywnych-20162017/ (accessed on 31 June 2020). The longer list of 15 the biggest RDF producers and processors in Poland in 2016 is included in the Appendix B.
Table 5. Sample Statistics and Calibration Parameters for fsQCA.
Table 5. Sample Statistics and Calibration Parameters for fsQCA.
MeanStd. Dev.MinMaxMedFully inMax. AmbFully out
Outcome variable:
V0: organizational effectiveness
4.41.070375741
Casual variables:
V1: strategy both executed and emergent
5.81.033575741
V2: flexible structure and distributed leadership4.31.636175741
V3: opportunity based resource allocation5.51.08475741
V4: innovative technologies in value creation process4.71.567275741
Source: own study with use of excel.
Table 6. Technology entrepreneurship configurations of high-performing RDF producers in Poland.
Table 6. Technology entrepreneurship configurations of high-performing RDF producers in Poland.
ModelRow CoveregeUnique CoverageConsistency
Construct: f_V0 = f_(V1, V2, V3, V4)
M1: V1*~V2*V3
M2: V1*V3*V4
Solution coverage: 0.97; solution consistency: 0.89
0.59
0.88
0.09
0.38
1
0.88
Explanations: f_V0 is an outcome factor consisted of one variable (i.e., organizational effectiveness); M1 and M2 are technology entrepreneurship configurations or models for high effectiveness organizations; M1 stands for hig- performance technology entrepreneurship model 1 (solution term1); M2 stands for high-performance technology entrepreneurship model 2 (solution term2). The sum of solution term 1 and solution term 2 is the whole solution.
Source: own study with use of fs/QCA 3.0 Windows Software on the base of complex solution (the raw output generated by the software is included as Appendix C).
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Kordel, P.; Wolniak, R. Technology Entrepreneurship and the Performance of Enterprises in the Conditions of Covid-19 Pandemic: The Fuzzy Set Analysis of Waste to Energy Enterprises in Poland. Energies 2021, 14, 3891. https://doi.org/10.3390/en14133891

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Kordel P, Wolniak R. Technology Entrepreneurship and the Performance of Enterprises in the Conditions of Covid-19 Pandemic: The Fuzzy Set Analysis of Waste to Energy Enterprises in Poland. Energies. 2021; 14(13):3891. https://doi.org/10.3390/en14133891

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Kordel, Piotr, and Radosław Wolniak. 2021. "Technology Entrepreneurship and the Performance of Enterprises in the Conditions of Covid-19 Pandemic: The Fuzzy Set Analysis of Waste to Energy Enterprises in Poland" Energies 14, no. 13: 3891. https://doi.org/10.3390/en14133891

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