Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures

Solid waste management has gained a reputation among environmentalists as it poses a significant threat to the environment when done incorrectly and leading to effects longing for more than a century. Current solid waste management (SWM) concerns are inextricably linked to maintaining mandated organ...

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Autores principales: Muhammad Saeed, Muhammad Ahsan, Muhammad Haris Saeed, Asad Mehmood, Salwa El-Morsy
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Publicado: IEEE 2021
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spelling oai:doaj.org-article:2def73fd9a70416aa87c5e71bc6b434e2021-11-18T00:08:33ZAssessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures2169-353610.1109/ACCESS.2021.3125727https://doaj.org/article/2def73fd9a70416aa87c5e71bc6b434e2021-01-01T00:00:00Zhttps://ieeexplore.ieee.org/document/9605627/https://doaj.org/toc/2169-3536Solid waste management has gained a reputation among environmentalists as it poses a significant threat to the environment when done incorrectly and leading to effects longing for more than a century. Current solid waste management (SWM) concerns are inextricably linked to maintaining mandated organic waste treatment and reusing objectives following European directive regulations. Characterizing and spreading uncertainty, as well as verifying forecasts, are all challenges in decision-making. This study presents a multi-attribute decision-making approach based on entropy and similarity measures to evaluate SWM strategies. This research examined the novelty of the complex fuzzy HyperSoft set (CFHSS), which may respond to instabilities, ambiguity, and vagueness of facts in knowledge by simultaneously putting into consideration the amplitude and phase characteristics (P-terms) of complex numbers (C-numbers). The presented structure is the most suitable option for exploring SWM concerns as it allows for a more comprehensive array of membership values, and the periodic nature of the content can be expressed in P-terms to widen the content to a unit circle in a dynamic reference frame through the specification of the fuzzy HyperSoft set (FHSS). Secondly, the features in CFHSS may be further sub-divided into attribute values for easier comprehension. The paper also illustrates the apparent connection between CFHSS similarity measures (SM) and entropy (ENT) and explores colloquial meaning. These strategies may be used to determine the best approach from a group of possibilities that have a variety of applications in the field of optimization. The recommended methodology’s reliability and effectiveness are examined by evaluating the acquired findings to those of several prior studies. An assessment is done using various parameter values to validate the robustness of the suggested approach.Muhammad SaeedMuhammad AhsanMuhammad Haris SaeedAsad MehmoodSalwa El-MorsyIEEEarticleSolid waste management (SWM)fuzzy set (FS)fuzzy hypersoft set (FHSS)complex fuzzy hypersoft set (CFHSS)entropy (ENT)similarity measures (SM)Electrical engineering. Electronics. Nuclear engineeringTK1-9971ENIEEE Access, Vol 9, Pp 150700-150714 (2021)
institution DOAJ
collection DOAJ
language EN
topic Solid waste management (SWM)
fuzzy set (FS)
fuzzy hypersoft set (FHSS)
complex fuzzy hypersoft set (CFHSS)
entropy (ENT)
similarity measures (SM)
Electrical engineering. Electronics. Nuclear engineering
TK1-9971
spellingShingle Solid waste management (SWM)
fuzzy set (FS)
fuzzy hypersoft set (FHSS)
complex fuzzy hypersoft set (CFHSS)
entropy (ENT)
similarity measures (SM)
Electrical engineering. Electronics. Nuclear engineering
TK1-9971
Muhammad Saeed
Muhammad Ahsan
Muhammad Haris Saeed
Asad Mehmood
Salwa El-Morsy
Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
description Solid waste management has gained a reputation among environmentalists as it poses a significant threat to the environment when done incorrectly and leading to effects longing for more than a century. Current solid waste management (SWM) concerns are inextricably linked to maintaining mandated organic waste treatment and reusing objectives following European directive regulations. Characterizing and spreading uncertainty, as well as verifying forecasts, are all challenges in decision-making. This study presents a multi-attribute decision-making approach based on entropy and similarity measures to evaluate SWM strategies. This research examined the novelty of the complex fuzzy HyperSoft set (CFHSS), which may respond to instabilities, ambiguity, and vagueness of facts in knowledge by simultaneously putting into consideration the amplitude and phase characteristics (P-terms) of complex numbers (C-numbers). The presented structure is the most suitable option for exploring SWM concerns as it allows for a more comprehensive array of membership values, and the periodic nature of the content can be expressed in P-terms to widen the content to a unit circle in a dynamic reference frame through the specification of the fuzzy HyperSoft set (FHSS). Secondly, the features in CFHSS may be further sub-divided into attribute values for easier comprehension. The paper also illustrates the apparent connection between CFHSS similarity measures (SM) and entropy (ENT) and explores colloquial meaning. These strategies may be used to determine the best approach from a group of possibilities that have a variety of applications in the field of optimization. The recommended methodology’s reliability and effectiveness are examined by evaluating the acquired findings to those of several prior studies. An assessment is done using various parameter values to validate the robustness of the suggested approach.
format article
author Muhammad Saeed
Muhammad Ahsan
Muhammad Haris Saeed
Asad Mehmood
Salwa El-Morsy
author_facet Muhammad Saeed
Muhammad Ahsan
Muhammad Haris Saeed
Asad Mehmood
Salwa El-Morsy
author_sort Muhammad Saeed
title Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
title_short Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
title_full Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
title_fullStr Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
title_full_unstemmed Assessment of Solid Waste Management Strategies Using an Efficient Complex Fuzzy Hypersoft Set Algorithm Based on Entropy and Similarity Measures
title_sort assessment of solid waste management strategies using an efficient complex fuzzy hypersoft set algorithm based on entropy and similarity measures
publisher IEEE
publishDate 2021
url https://doaj.org/article/2def73fd9a70416aa87c5e71bc6b434e
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