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A systematic literature review on machine learning applications for sustainable agriculture supply chain performance

机译:可持续农业供应链绩效机器学习应用的系统文献综述

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Agriculture 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. (C) 2020 Elsevier Ltd. All rights reserved.
机译:农业在维持所有人类活动方面发挥着重要作用。资源竞争等重大挑战,对地球粮食安全构成威胁。为了解决农业生产系统中不断增加的复杂问题,智能农业和精密农业的进步提供了解决农业可持续发展挑战的重要工具。数据分析保持关键,以确保未来的粮食安全,食品安全和生态可持续性。颠覆性信息和通信技术,如机器学习,大数据分析,云计算和区块链可以解决生产力和产量提高,水资源保护,保证土壤和植物健康等几个问题,以及加强环境管理。目前的研究提出了农业供应链中机器学习(ML)应用的系统审查(ASCS)。根据ASC的不同阶段的不同ML算法的应用综述了九十三个研究论文。该研究突出了ASCS如何从ML技术中受益,并导致ASC可持续性。基于研究结果,提出了可持续ASC的ML应用框架。该框架识别ML算法在ASC中提供了基于主动数据驱动的决策的实时分析见解,并为研究人员,从业者和政策制定者提供了关于ASC的成功管理准则,以提高农业生产力和可持续性。 (c)2020 elestvier有限公司保留所有权利。

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