Fuzzy based Decision-Making Algorithm for Solving Big Data Issues in Smart Cities

Authors

  • Weining Li Faculty of Civil Engineering and Surveying, Guilin University of Technology at Nanning, Nanning, Guangxi, 530001, China
  • Hui Zhu Department of Human Resources, Guilin University of Technology at Nanning, Nanning, Guangxi, 530001, China

DOI:

https://doi.org/10.12694/scpe.v25i6.3229

Keywords:

Big Data, Difficulties, Environmental Sustainability, Intelligent towns, Fuzzy DEMATEL, and Fuzzy Interpretation Structured Modelling (fuzzy ISM)

Abstract

To better provide urban services and build an increasingly sustainable architecture, big data can be used to make more efficient use of current assets while enhancing the caliber of services offered to local inhabitants. However, there are several challenges to incorporating big data into existing infrastructure. Therefore, this research aims to determine the problems associated with Big Data’s effectiveness in developing intelligent towns and to investigate the connections between those difficulties. The 14 issues with Big Data were found through a literature study, and the precision was checked by feedback from professionals. Next, we employ a combined approach based on fuzzy interpretation, Structured simulation, and the Fuzzy Making Decisions Trial and Assessment Laboratories to decipher the connections between our identified problems incorporating Big Data into the development of smart cities is hampered, as shown by the analysis of links between challenges, primarily by the heterogeneous inhabitants in developed cities and the lack of connectivity. The findings of this study will provide creative city practitioners and policy planners with the information they need to successfully tackle these obstacles, clearing the way for the widespread adoption of smart city technologies. This research is a first step towards creating an interpretive structural model of the difficulties brought on by Big Data in cutting-edge urban planning. The study attempts, in part, to use this paradigm to better understand the relationship among the highlighted issues.

Downloads

Published

2024-10-01

Issue

Section

Special Issue - High-performance Computing Algorithms for Material Sciences