Gills B, Morgan J. Global Climate Emergency: after COP24, climate science, urgency, and the threat to humanity, 1st edn. In: Economics and climate emergency. Routledge. 2022, p 18.
Olabi A, Abdelkareem MA. Renewable energy and climate change. Renew Sustain Energy Rev. 2022;158:112111.
Ji X, Chen X, Mirza N, Umar M. Sustainable energy goals and investment premium: evidence from renewable and conventional equity mutual funds in the Euro zone. Resour Policy. 2021;74:102387.
Omri A, Belaïd F. Does renewable energy modulate the negative effect of environmental issues on the socio-economic welfare? J Environ Manage. 2021;278:111483.
Liu J, Jain V, Sharma P, Ali SA, Shabbir MS, Ramos-Meza CS. The role of Sustainable Development Goals to eradicate the multidimensional energy poverty and improve social Wellbeing’s. Energ Strat Rev. 2022;42:100885.
Paraschiv LS, Paraschiv S. Contribution of renewable energy (hydro, wind, solar and biomass) to decarbonization and transformation of the electricity generation sector for sustainable development. Energy Rep. 2023;9:535–44.
Dinçer H, Yüksel S, Martínez L. Collaboration enhanced hybrid fuzzy decision-making approach to analyze the renewable energy investment projects. Energy Rep. 2022;8:377–89.
Göçer F. A novel extension of Fermatean fuzzy sets into group decision making: a study for prioritization of renewable energy technologies. Arab J Sci Eng. 2024;49(3):4209–28.
Li T, et al. Evaluating renewable energy projects using fuzzy bipolar soft aggregation and entropy weights. Evol Syst. 2024;15(5):1971–88.
Hosseinzadeh A, Zhou JL, Li X, Afsari M, Altaee A. Techno-economic and environmental impact assessment of hydrogen production processes using bio-waste as renewable energy resource. Renew Sustain Energy Rev. 2022;156:111991.
Krupnik S, et al. Beyond technology: a research agenda for social sciences and humanities research on renewable energy in Europe. Energy Res Soc Sci. 2022;89:102536.
Inês C, Guilherme PL, Esther M-G, Swantje G, Stephen H, Lars H. Regulatory challenges and opportunities for collective renewable energy prosumers in the EU. Energy Policy. 2020;138:111212.
Hoang AT, et al. Impacts of COVID-19 pandemic on the global energy system and the shift progress to renewable energy: opportunities, challenges, and policy implications. Energy Policy. 2021;154:112322.
Zhong J, Hu X, Yüksel S, Dinçer H, Ubay GG. Analyzing the investments strategies for renewable energies based on multi-criteria decision model. IEEE Access. 2020;8:118818–40.
Wang C-N, Kao J-C, Wang Y-H, Nguyen VT, Nguyen VT, Husain ST. A multicriteria decision-making model for the selection of suitable renewable energy sources. Mathematics. 2021;9(12):1318.
Zou WC, Wan SP, Dong JY, Martínez L. A new social network driven consensus reaching process for multi-criteria group decision making with probabilistic linguistic information. Inf Sci. 2023;632:467–502.
Akram M, Muhiuddin G, Santos-García G. An enhanced VIKOR method for multi-criteria group decision-making with complex Fermatean fuzzy sets. Math Biosci Eng. 2022;19(7):7201–31.
Awodi NJ, Liu Y-K, Ayo-Imoru RM, Ayodeji A. Fuzzy TOPSIS-based risk assessment model for effective nuclear decommissioning risk management. Prog Nucl Energy. 2023;155:104524.
Rahim M, Garg H, Khan S, Alqahtani H, Khalifa HAE-W. Group decision-making algorithm with sine trigonometric p, q-quasirung orthopair aggregation operators and their applications. Alex Eng J. 2023;78:530–42.
Zadeh LA. Fuzzy sets. Inform Control. 1965;8(3):338–53.
de Andrés-Sánchez J. A systematic review of the interactions of fuzzy set theory and option pricing. Exp Syst Appl. 2023;223:119868.
Tan T, Zhao T. A data-driven fuzzy system for the automatic determination of fuzzy set type based on fuzziness. Inf Sci. 2023;642:119173.
Al-shami TM. (2, 1)-Fuzzy sets: properties, weighted aggregated operators and their applications to multi-criteria decision-making methods. Complex Intell Syst. 2023;9(2):1687–705.
Kamran M, Ashraf S, Salamat N, Naeem M, Botmart T. Cyber security control selection based decision support algorithm under single valued neutrosophic hesitant fuzzy Einstein aggregation information. AIMS Mathematics. 2023;8(3):5551–73.
Kamran M, Ashraf S, Salamat N, Naeem M, Hameed MS. Smart city design plan selection through single-valued neutrosophic probabilistic hesitant fuzzy rough aggregation information. J Intell Fuzzy Syst. 2023;45(6):10693–737. https://doi.org/10.3233/JIFS-224364.
Zhang N, Qi W, Pang G, Cheng J, Shi K. Observer-based sliding mode control for fuzzy stochastic switching systems with deception attacks. Appl Math Comput. 2022;427:127153.
Sun Q, Ren J, Zhao F. Sliding mode control of discrete-time interval type-2 fuzzy Markov jump systems with the preview target signal. Appl Math Comput. 2022;435:127479.
Duan Z, Liang J, Xiang Z. H∞ control for continuous-discrete systems in TS fuzzy model with finite frequency specifications. Discret Contin Dyn Syst S. 2022;64(1):1–18.
Ge J, Zhang S. Adaptive inventory control based on fuzzy neural network under uncertain environment. Complexity. 2020;2020(1):6190936.
Yager RR. Generalized orthopair fuzzy sets. IEEE Trans Fuzzy Syst. 2016;25(5):1222–30.
Seikh MR, Mandal U. q-Rung orthopair fuzzy Archimedean aggregation operators: application in the site selection for software operating units. Symmetry. 2023;15(9):1680.
Seikh MR, Chatterjee P. Determination of best renewable energy sources in India using SWARA-ARAS in confidence level based interval-valued Fermatean fuzzy environment. Appl Soft Comput. 2024;155:111495.
Seikh MR, Mandal U. Multiple attribute group decision making based on quasirung orthopair fuzzy sets: application to electric vehicle charging station site selection problem. Eng Appl Artif Intell. 2022;115:105299.
Ali J, Naeem M. Analysis and application of p, q-quasirung orthopair fuzzy Aczel-Alsina aggregation operators in multiple criteria decision-making. IEEE Access. 2023;11:49081–101.
Rahim M, Shah K, Abdeljawad T, Aphane M, Alburaikan A, Khalifa HAE-W. Confidence levels-based p, q-quasirung orthopair fuzzy operators and its applications to criteria group decision making problems. IEEE Access. 2023;11:109983–96.
Ahmad T, Rahim M, Yang J, Alharbi R, Khalifa HAE-W. Development of p, q− quasirung orthopair fuzzy hamacher aggregation operators and its application in decision-making problems. Heliyon. 2024;10(3):e24726.
Ali J, Mehmood Z. p, q-Quasirung orthopair fuzzy multi-criteria group decision-making algorithm based on generalized Dombi aggregation operators. J Appl Math Comput. 2024;1–34.
Chu Y-M, Garg H, Rahim M, Amin F, Asiri A, Ameer E. Some p, q-cubic quasi-rung orthopair fuzzy operators for multi-attribute decision-making. Complex Intell Syst. 2024;10(1):87–110.
Seikh MR, Mandal U. Multiple attribute decision-making based on 3, 4-quasirung fuzzy sets. Granul Comput. 2022;1–14. https://link.springer.com/article/10.1007/s41066-021-00308-9.
Ramot D, Milo R, Friedman M, Kandel A. Complex fuzzy sets. IEEE Trans Fuzzy Syst. 2002;10(2):171–86.
Garg H, Mahmood T, Rehman UU, Ali Z. "CHFS: complex hesitant fuzzy sets-their applications to decision making with different and innovative distance measures. CAAI Trans Intell Technol. 2021;6(1):93–122.
Ramot D, Friedman M, Langholz G, Kandel A. Complex fuzzy logic. IEEE Trans Fuzzy Syst. 2003;11(4):450–61.
Sobhi S, Dick S. An investigation of complex fuzzy sets for large-scale learning. Fuzzy Sets Syst. 2023;471:108660.
Yousafzai F, Zia MD, Khalaf MM, Ismail R. Linear Diophantine fuzzy sets over complex fuzzy information with applications in information theory. Ain Shams Eng J. 2024;15(1):102327.
Alkouri AS, Salleh AR. Complex intuitionistic fuzzy sets. AIP Conf Proc. 2012;1482(1):464–70 (American Institute of Physics).
Ullah K, Mahmood T, Ali Z, Jan N. On some distance measures of complex Pythagorean fuzzy sets and their applications in pattern recognition. Complex Intell Syst. 2020;6:15–27.
Ali Z, Mahmood T. Maclaurin symmetric mean operators and their applications in the environment of complex q-rung orthopair fuzzy sets. Comput Appl Math. 2020;39(3):161.
Dick S, Yager RR, Yazdanbakhsh O. On Pythagorean and complex fuzzy set operations. IEEE Trans Fuzzy Syst. 2015;24(5):1009–21.
Garg H, Rani D. Novel aggregation operators and ranking method for complex intuitionistic fuzzy sets and their applications to decision-making process. Artif Intell Rev. 2020;53:3595–620.
Bi L, Dai S, Hu B, Li S. Complex fuzzy arithmetic aggregation operators. J Intell Fuzzy Syst. 2019;36(3):2765–71.
Hezam IM, Rahman K, Alshamrani A, Božanić D. Geometric aggregation operators for solving multicriteria group decision-making problems based on complex pythagorean fuzzy sets. Symmetry. 2023;15(4):826.
Liu P, Mahmood T, Ali Z. Complex q-rung orthopair fuzzy aggregation operators and their applications in multi-attribute group decision making. Information. 2019;11(1):5.
Chang D-Y. Applications of the extent analysis method on fuzzy AHP. Eur J Oper Res. 1996;95(3):649–55.
Kong Z, Zhang G, Wang L, Wu Z, Qi S, Wang H. An efficient decision making approach in incomplete soft set. Appl Math Model. 2014;38(7–8):2141–50.
Garg H, Rani D. Some generalized complex intuitionistic fuzzy aggregation operators and their application to multicriteria decision-making process. Arab J Sci Eng. 2019;44:2679–98.
Akram M, Peng X, Sattar A. Multi-criteria decision-making model using complex Pythagorean fuzzy Yager aggregation operators. Arab J Sci Eng. 2021;46:1691–717.
Khan Z, Ullah I, Hussain F, Rahim T, Jan R, Khan M. Multi-attribute decision-making problem using complex q-rung orthopair fuzzy interaction aggregation operators, J Appl Math Comput. 2024;1–37.
Javeed S, Javed M, Shafique I, Shoaib M, Khan MS, Cui et al. Complex q-rung orthopair fuzzy yager aggregation operators and their application to evaluate the best medical manufacturer. Appl Soft Comput. 2024;157:111532
Mahmood T, Ali Z. Entropy measure and TOPSIS method based on correlation coefficient using complex q-rung orthopair fuzzy information and its application to multi-attribute decision making. Soft Comput. 2021;25:1249–75.
Zaman M, Ghani F, Khan A, Abdullah S, Khan F. Complex Fermatean fuzzy extended TOPSIS method and its applications in decision making. Heliyon. 2023;9:e19170.
Gul M, Lo H-W, Yucesan M. Fermatean fuzzy TOPSIS-based approach for occupational risk assessment in manufacturing. Complex Intell Syst. 2021;7(5):2635–53.
Atanassov KT. Intuitionistic fuzzy sets. Fuzzy Sets Syst. 1986;20:87–96.
Yager RR. Pythagorean fuzzy subsets. In: 2013 Joint IFSA World Congress and NAFIPS Annual Meeting (IFSA/NAFIPS), Edmonton. 2013; pp 57–61. https://doi.org/10.1109/IFSA-NAFIPS.2013.6608375.
Joudar SS, Albahri A, Hamid RA. Intelligent triage method for early diagnosis autism spectrum disorder (ASD) based on integrated fuzzy multi-criteria decision-making methods. Inform Med Unlocked. 2023;36:101131.
Comments (0)