Energy Usage and Environmental Risk Management in Residential and Commercial Sector using Fuzzy TOPSIS&Game Theory

Elif Altintas, Çiğdem Ozari, Zafer Utlu

Abstract


Studies in recent years show that the process of energy planning has been a vital problem in the sense of sustainability, insufficient sources and increased industrial energy request. The commercial buildings are the main consumers of electricity, and play an important role in sustainable cities and societies. The effective energy management in these building is usually influenced by the social, technical, and environmental restraints. These restraints determine the standard of living and comfort. The purpose of this study is to determine the best energy management strategy, to formulate Game theory approach with different environmental strategies and develop various indicators related to energy efficiency and the comfort level of power components. Players which are the residential-commercial sector and environment try to ensure sustainability and comfort. In the recommended method, the closeness coefficient of each policy scenario figured out utilizing Fuzzy TOPSIS and different performance indices have been developed for energy use, taking into account the comfort level ranked. The equilibrium point (RCS2, ES5) is found to identify the most appropriate strategies by using payoff matrix. This result means that renewable energy usage and sustainability strategies are the ideal solutions for the RCS player the environment player, respectively.

Keywords


Residential Commercial Sector; Environment; Energy; Fuzzy TOPSIS; MCDM; Game Theory

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References


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DOI: http://dx.doi.org/10.21533/scjournal.v10i2.212

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Copyright (c) 2021 Elif Altintas, Çiğdem Ozari, Zafer Utlu

ISSN 2233 -1859

Digital Object Identifier DOI: 10.21533/scjournal

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