DeepFarm:使用可解释的因果关系的人工智能驱动的农业生产管理

Yingjie Wang, Jaganmohan Chandrasekaran, Flora Haberkorn, Yan Dong, M. Gopinath, Feras A. Batarseh
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引用次数: 1

摘要

在过去的十年里,美国农业受到了许多异常事件的影响,比如几次自然灾害、网络攻击、贸易战和全球流行病。这种前所未有的黑天鹅现象在整个食品供应链中造成了结果的不确定性,从农业生产者的农场层面开始,到家庭和国际贸易流动的消费层面。农业生产力受到冲击的主要驱动因素包括与强烈天气有关的事件、短暂的运输中断、航运延误和政策变化。本文介绍了DeepFarm,这是一个支持人工智能(AI)的框架,用于在评估农业生产中的多种因果情景时测量和管理不确定性。我们部署深度学习(DL)模型来预测极端天气事件和网络攻击等异常事件对作物产量的影响。此外,我们使用基于因果推理的方法来量化这些事件对农业生产关键阶段的影响。建立模型;进行了实验;结果被记录、评价和讨论。我们的研究结果表明,DeepFarm可以有效地预测和量化异常事件对美国不同地区作物产量的影响。
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DeepFarm: AI-Driven Management of Farm Production using Explainable Causality
American agriculture has been afflicted by numerous outlier events in the past decade, such as several natural disasters, cyber-attacks, trade wars, and a global pandemic. Such unprecedented black-swans have created outcome uncertainties throughout the food supply chain, starting at the farm level for agricultural producers and aggregating at the consumption level for households and international trade flows. The primary drivers behind the shocks in agricultural productivity include strong weather-related events, transitory transportation disruptions, shipping delays, and policy shifts. This paper presents DeepFarm, an Artificial Intelligence (AI)-enabled framework to measure and manage uncertainties while evaluating multiple cause-effect scenarios in agricultural farm production. We deploy Deep Learning (DL) models to predict the impact of crop yield during outlier events such as extreme weather events and cyber-attacks. Additionally, we use a causal inference-based approach to quantity the impact of such events affecting the critical phases of farm production. Models are developed; experiments are performed; the results are recorded, evaluated, and discussed. Our results suggest that DeepFarm can effectively forecast and quantity the impact of outlier events on crop yield across different regions in the US.
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