• Title of article

    Renewable Energy Location in Disruption Situation by MCDM Method and Machine Learning

  • Author/Authors

    Rezvanjou ، kian Department of Engineering - California State University East Bay , Amini ، Mahyar Department of Industrial Engineering - Islamic Azad University, Tehran branch , Bigham ، Mohammad Department of Civil Engineering - University of Houston

  • From page
    75
  • To page
    89
  • Abstract
    In times of disruption and uncertainties, identifying suitable locations for renewable energy projects becomes crucial. This paper explores the use of Multi-Criteria Decision-Making (MCDM) methods to determine optimal locations for renewable energy installations. The study aims to address challenges faced during disruption situations and provide insights into decision-making processes for renewable energy investments. A comprehensive review of the literature is conducted, followed by the application of MCDM techniques to evaluate potential locations. Numerical results demonstrate the effectiveness of the proposed approach, highlighting the importance of considering multiple criteria when making decisions related to renewable energy projects. The findings have implications for policymakers, investors, and stakeholders involved in the renewable energy sector.
  • Keywords
    Renewable Energy , Location , MCDM , Disruptions , Uncertainty
  • Journal title
    International journal of industrial engineering and operational research
  • Journal title
    International journal of industrial engineering and operational research
  • Record number

    2765307