Impact and Potential of Sustainable Development Goals in Dimension of the Technological Revolution Industry 4.0 within the Analysis of Industrial Enterprises
Abstract
:1. Introduction
2. Theoretical Framework
3. Materials and Methods
3.1. Research Methodology
- Definition of research issue—identification of the current state of sustainability in manufacturing and logistics in accordance with the SDGs, in the context of Industry 4.0 technologies and innovations in industrial enterprises.
- Development of conceptual framework—consisted of a literature review of the current state of the research issue in journals, reports and studies.
- Identification of research problem—based on the review of previous literature and studies, the authors identified four research questions.
- Defining research hypotheses—after formulating the research questions, null and alternative hypotheses were proposed.
- Determining research object—the object of research was manufacturing enterprises in Slovakia. The research sample consisted of 105 manufacturing enterprises of various sizes and sectors.
- Questionnaire construction—a standardised electronic questionnaire was used, which consisted of several parts. The first part dealt with classification questions: location of enterprises, geographical coverage of the enterprise, industry sector, and size of the enterprise. The second part of the questionnaire consisted of identification questions concerned with sustainability issues and the SDGs. The third part focused on production and logistics processes in the context of the Industry 4.0 technological revolution and the implementation of sustainability.
- Selection of data collection methods—the following data collection methods were used: (Computer Assisted Web Interviewing), CATI (Computer Assisted Telephone Interviewing) and CASI (Computer Assisted Self Interviewing).
- Realisation of questionnaire research—data collection was conducted anonymously in manufacturing enterprises in Slovakia. The respondents were production and logistics managers in enterprises from several industries.
- Descriptive analysis of collected data—univariate descriptive statistics, bivariate descriptive statistics and multivariate descriptive statistics were used in this analysis.
- Inferential analysis of collected data—in the statistical analysis, the null and alternative hypotheses were tested using correlation tests in the form of non-parametric 2-tailed Spearman’s correlation test and Pearson’s chi-square test of independence, while the strength of association was performed through Phi and Cramer’s V coefficient and also the non-parametric Kruskal–Wallis test which is a one-way ANOVA for an independent variable that has more than two categories.
- Summary of survey data—in conclusion, the most important findings from the descriptive and inferential analysis were summarised and then also a comparison was made with similar surveys conducted within the countries of the world between 2020 and 2022, thus enhancing the research’s meaning and justification.
- Proposal for further research—the research conducted is the basis for further, more in-depth research that would explore the identification of Industry 5.0 and its benefits in production and logistics processes, as it provides greener solutions compared to previous industrial transformations.
- Definition of research limits—they consist of the representative sample of manufacturing enterprises, and the limitation of the conducted study is only to manufacturing enterprises operating in the Slovak Republic.
3.2. Description of Collection Tool
3.3. Description of Research Sample
3.4. Description of Research Methods
4. Results and Discussion
- Research Question 1 (RQ1): What are the sustainability initiatives of manufacturing enterprises in production and logistics?
- Research Question 2 (RQ2): What is the relationship between sustainable logistics activities and the industrial sector?
- Research Question 3 (RQ3): What role do the selected sustainable technologies have in the industry sector regarding the environment?
- Research Question 4 (RQ4): How do manufacturing enterprises perceive Industry 4.0 technologies in the context of sustainability?
4.1. Descriptive Analysis in Quantitative Research
4.2. Evaluation of Research Questions
4.2.1. Research Question 1 (RQ1): What Are the Sustainability Initiatives of Manufacturing Enterprises in Production and Logistics?
4.2.2. Research Question 2 (RQ2): What Is the Relationship between Sustainable Logistics Activities and the Industrial Sector?
4.2.3. Research Question 3 (RQ3): What Role Do the Selected Sustainable Technologies Have in the Industry Sector Regarding the Environment?
4.2.4. Research Question 4 (RQ4): How Do Manufacturing Enterprises Perceive Industry 4.0 Technologies in the Context of Sustainability?
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Enterprise Category | Staff Headcount | Absolute Frequency | Relative Frequency [%] |
---|---|---|---|
Small enterprises | 10–49 persons employed | 8 | 7.6 |
Medium-sized enterprises | 50–249 persons employed | 49 | 46.7 |
Large enterprises | 250 or more persons employed | 48 | 45.7 |
Total | 105 | 100 |
Location of Enterprises | Absolute Frequency | Relative Frequency [%] |
---|---|---|
Transnational | 76 | 72.4 |
Regional | 4 | 3.8 |
Local | 4 | 3.8 |
National | 21 | 20.0 |
Total | 105 | 100 |
NUTS 2 | NUTS 3 | Absolute Frequency | Relative Frequency [%] |
---|---|---|---|
Bratislava Region | Bratislava Region | 22 | 21.0 |
Western Slovakia | Trnava Region | 18 | 17.1 |
Western Slovakia | Trenčín Region | 21 | 20.0 |
Western Slovakia | Nitra Region | 11 | 10.5 |
Central Slovakia | Žilina Region | 10 | 9.5 |
Central Slovakia | Banská Bystrica Region | 9 | 8.6 |
Eastern Slovakia | Prešov Region | 10 | 9.5 |
Eastern Slovakia | Košice Region | 4 | 3.8 |
Total | 105 | 100 |
Selected Industrial Sector | Absolute Frequency | Relative Frequency [%] |
---|---|---|
Mining industry | 17 | 16.2 |
Mechanical engineering industry | 28 | 26.7 |
Automotive industry | 25 | 23.8 |
Metallurgical industry | 14 | 13.3 |
Electrical engineering industry | 21 | 20.0 |
Total | 105 | 100 |
Spearman’s Correlation Rho | Reducing Solid Waste | Minimising the Use of Dangerous Materials | Eliminating Air Emission | Reducing the Amount of Wastewater | |
---|---|---|---|---|---|
Environmental management of the enterprise which is influenced by the SDGs | Correlation Coefficient | 0.413 ** | 0.436 ** | 0.355 ** | 0.484 ** |
Sig. (2-tailed) | 0.000 | 0.000 | 0.000 | 0.000 | |
N | 105 | 105 | 105 | 105 |
Kruskal–Wallis Test | Chi-Square | df | Asymp. Sig. |
---|---|---|---|
Efficient storage of materials and goods | 4.709 | 4 | 0.319 |
Optimisation of transport routes | 4.878 | 4 | 0.300 |
Waste separation and recycling | 14.717 | 4 | 0.005 |
Use of electronic documentation | 5.870 | 4 | 0.209 |
Environmental certification | 11.538 | 4 | 0.021 |
Efficient handling of transported materials | 7.060 | 4 | 0.133 |
Environmental training of employees | 19.657 | 4 | 0.001 |
Reduction of packaging materials | 2.416 | 4 | 0.660 |
Use of renewable energy sources | 12.139 | 4 | 0.016 |
Efficient use of external transport | 7.706 | 4 | 0.103 |
Use of alternative transport modes in internal transport | 3.736 | 4 | 0.443 |
Continuous CO2 reduction in all logistics activities | 10.768 | 4 | 0.029 |
Working with suppliers to achieve sustainable development goals | 8.332 | 4 | 0.080 |
Purchasing materials from local suppliers | 6.188 | 4 | 0.186 |
Selecting suppliers with regard to their environmental profile | 2.658 | 4 | 0.617 |
Spearman’s Correlation Rho | Industrial Sector | Renewable Energy Technology | |
---|---|---|---|
Industrial Sector | Correlation Coefficient | 1.000 | 0.420 ** |
Sig. (2-tailed) | 0.024 | ||
N | 105 | 105 | |
Renewable Energy Technology | Correlation Coefficient | 0.420 ** | 1.000 |
Sig. (2-tailed) | 0.024 | ||
N | 105 | 105 |
Chi-Square Test | Value | df | Asymp. Sig. |
---|---|---|---|
Pearson Chi-Square | 54.876 | 36 | 0.023 |
Likelihood Ratio | 51.794 | 36 | 0.043 |
Linear-by-Linear Association | 12.922 | 1 | 0.000 |
N of Valid Cases | 105 |
Symmetric Measures | Value | Approx. Sig. | |
---|---|---|---|
Nominal by Nominal | Phi | 0.723 | 0.023 |
Cramer’s V | 0.295 | 0.023 | |
N of Valid Cases | 105 |
Kruskal–Wallis Test | Chi-Square | df | Asymp. Sig. |
---|---|---|---|
Autonomous robots | 16.079 | 5 | 0.007 |
Cyber-physical system | 20.845 | 5 | 0.001 |
Big Data Analytics | 19.150 | 5 | 0.002 |
Cloud technologies | 10.839 | 5 | 0.055 |
Blockchain | 6.190 | 5 | 0.288 |
Renewable Energy | 13.911 | 5 | 0.016 |
Advanced Materials | 15.329 | 5 | 0.009 |
Cybersecurity | 7.966 | 5 | 0.158 |
Drones | 7.764 | 5 | 0.170 |
Augmented reality | 3.630 | 5 | 0.604 |
Artificial intelligence | 2.285 | 5 | 0.808 |
Additive manufacturing | 20.507 | 5 | 0.001 |
Internet of Things | 13.133 | 5 | 0.022 |
Virtual technologies and simulation | 11.540 | 5 | 0.042 |
Autonomous vehicles | 3.265 | 5 | 0.659 |
Kruskal–Wallis Test | Chi-Square | df | Asymp. Sig. |
---|---|---|---|
Autonomous robots | 12.102 | 5 | 0.033 |
Cyber-physical system | 6.141 | 5 | 0.293 |
Big Data Analytics | 7.859 | 5 | 0.164 |
Cloud technologies | 7.616 | 5 | 0.179 |
Blockchain | 4.011 | 5 | 0.548 |
Renewable Energy | 13.311 | 5 | 0.021 |
Advanced Materials | 11.875 | 5 | 0.037 |
Cybersecurity | 4.781 | 5 | 0.443 |
Drones | 10.855 | 5 | 0.054 |
Augmented reality | 3.593 | 5 | 0.609 |
Artificial Intelligence | 2.383 | 5 | 0.794 |
Additive manufacturing | 11.587 | 5 | 0.041 |
Internet of Things | 9.597 | 5 | 0.088 |
Virtual technologies and simulation | 12.178 | 5 | 0.032 |
Autonomous vehicles | 22.210 | 5 | 0.000 |
Kruskal–Wallis Test | Chi-Square | df | Asymp. Sig. |
---|---|---|---|
Autonomous robots | 12.925 | 5 | 0.024 |
Cyber-physical system | 5.392 | 5 | 0.370 |
Big Data Analytics | 9.952 | 5 | 0.047 |
Cloud technologies | 8.365 | 5 | 0.137 |
Blockchain | 3.892 | 5 | 0.565 |
Renewable Energy | 13.033 | 5 | 0.023 |
Advanced Materials | 11.953 | 5 | 0.035 |
Cybersecurity | 1.841 | 5 | 0.871 |
Drones | 3.801 | 5 | 0.578 |
Augmented reality | 3.837 | 5 | 0.573 |
Artificial Intelligence | 2.592 | 5 | 0.763 |
Additive manufacturing | 4.588 | 5 | 0.468 |
Internet of Things | 12.797 | 5 | 0.025 |
Virtual technologies and simulation | 30.070 | 5 | 0.000 |
Autonomous vehicles | 5.649 | 5 | 0.342 |
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Richnák, P.; Fidlerová, H. Impact and Potential of Sustainable Development Goals in Dimension of the Technological Revolution Industry 4.0 within the Analysis of Industrial Enterprises. Energies 2022, 15, 3697. https://doi.org/10.3390/en15103697
Richnák P, Fidlerová H. Impact and Potential of Sustainable Development Goals in Dimension of the Technological Revolution Industry 4.0 within the Analysis of Industrial Enterprises. Energies. 2022; 15(10):3697. https://doi.org/10.3390/en15103697
Chicago/Turabian StyleRichnák, Patrik, and Helena Fidlerová. 2022. "Impact and Potential of Sustainable Development Goals in Dimension of the Technological Revolution Industry 4.0 within the Analysis of Industrial Enterprises" Energies 15, no. 10: 3697. https://doi.org/10.3390/en15103697
APA StyleRichnák, P., & Fidlerová, H. (2022). Impact and Potential of Sustainable Development Goals in Dimension of the Technological Revolution Industry 4.0 within the Analysis of Industrial Enterprises. Energies, 15(10), 3697. https://doi.org/10.3390/en15103697