A systematic literature review on machine learning applications for sustainable agriculture supply chain performance
AffiliationNational Institute of Industrial Engineering
University of the West of England
California State University, Bakersfield
University of Derby
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AbstractAgriculture plays an important role in sustaining all human activities. Major challenges such as overpopulation, competition for resources poses a threat to the food security of the planet. In order to tackle the ever-increasing complex problems in agricultural production systems, advancements in smart farming and precision agriculture offers important tools to address agricultural sustainability challenges. Data analytics hold the key to ensure future food security, food safety, and ecological sustainability. Disruptive information and communication technologies such as machine learning, big data analytics, cloud computing, and blockchain can address several problems such as productivity and yield improvement, water conservation, ensuring soil and plant health, and enhance environmental stewardship. The current study presents a systematic review of machine learning (ML) applications in agricultural supply chains (ASCs). Ninety three research papers were reviewed based on the applications of different ML algorithms in different phases of the ASCs. The study highlights how ASCs can benefit from ML techniques and lead to ASC sustainability. Based on the study findings an ML applications framework for sustainable ASC is proposed. The framework identifies the role of ML algorithms in providing real-time analytic insights for pro-active data-driven decision-making in the ASCs and provides the researchers, practitioners, and policymakers with guidelines on the successful management of ASCs for improved agricultural productivity and sustainability.
CitationKumar, V., Sharma, R., Kamble, S.S., Gunasekaran, A. and Kumar, A., (2020). 'A systematic literature review on machine learning applications for sustainable agriculture supply chain performance'.Computers & Operations Research, pp. 1-47.
JournalComputers & Operations Research