Machine Learning and Artificial Intelligence in Circular Economy: A
Bibliometric Analysis and Systematic Literature Review
- URL: http://arxiv.org/abs/2205.01042v1
- Date: Fri, 1 Apr 2022 07:05:13 GMT
- Title: Machine Learning and Artificial Intelligence in Circular Economy: A
Bibliometric Analysis and Systematic Literature Review
- Authors: Abdulla All noman, Umma Habiba Akter, Tahmid Hasan Pranto and AKM
Bahalul Haque
- Abstract summary: Circular economy (CE) aims to complete the product life cycle loop by bringing out the highest values from raw materials in the design phase and later on by reusing, recycling, and remanufacturing.
This study explores the adoption and integration of applied AI techniques in CE.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With unorganized, unplanned and improper use of limited raw materials, an
abundant amount of waste is being produced, which is harmful to our environment
and ecosystem. While traditional linear production lines fail to address
far-reaching issues like waste production and a shorter product life cycle, a
prospective concept, namely circular economy (CE), has shown promising
prospects to be adopted at industrial and governmental levels. CE aims to
complete the product life cycle loop by bringing out the highest values from
raw materials in the design phase and later on by reusing, recycling, and
remanufacturing. Innovative technologies like artificial intelligence (AI) and
machine learning(ML) provide vital assistance in effectively adopting and
implementing CE in real-world practices. This study explores the adoption and
integration of applied AI techniques in CE. First, we conducted bibliometric
analysis on a collection of 104 SCOPUS indexed documents exploring the critical
research criteria in AI and CE. Forty papers were picked to conduct a
systematic literature review from these documents. The selected documents were
further divided into six categories: sustainable development, reverse
logistics, waste management, supply chain management, recycle & reuse, and
manufacturing development. Comprehensive research insights and trends have been
extracted and delineated. Finally, the research gap needing further attention
has been identified and the future research directions have also been
discussed.
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