LGJan 2, 2024

Learning-based agricultural management in partially observable environments subject to climate variability

arXiv:2401.01273v15 citationsh-index: 5
Originality Incremental advance
AI Analysis

This research addresses agricultural management challenges for farmers and policymakers by providing adaptable fertilization strategies, though it is incremental as it builds on existing DRL and POMDP methods.

The study tackled optimizing nitrogen fertilization for corn crops under climate variability by integrating Deep Reinforcement Learning with Recurrent Neural Networks, demonstrating that policies adapt to minor fluctuations but require retraining for extreme events, achieving commendable yields, cost-effectiveness, and environmental conservation.

Agricultural management, with a particular focus on fertilization strategies, holds a central role in shaping crop yield, economic profitability, and environmental sustainability. While conventional guidelines offer valuable insights, their efficacy diminishes when confronted with extreme weather conditions, such as heatwaves and droughts. In this study, we introduce an innovative framework that integrates Deep Reinforcement Learning (DRL) with Recurrent Neural Networks (RNNs). Leveraging the Gym-DSSAT simulator, we train an intelligent agent to master optimal nitrogen fertilization management. Through a series of simulation experiments conducted on corn crops in Iowa, we compare Partially Observable Markov Decision Process (POMDP) models with Markov Decision Process (MDP) models. Our research underscores the advantages of utilizing sequential observations in developing more efficient nitrogen input policies. Additionally, we explore the impact of climate variability, particularly during extreme weather events, on agricultural outcomes and management. Our findings demonstrate the adaptability of fertilization policies to varying climate conditions. Notably, a fixed policy exhibits resilience in the face of minor climate fluctuations, leading to commendable corn yields, cost-effectiveness, and environmental conservation. However, our study illuminates the need for agent retraining to acquire new optimal policies under extreme weather events. This research charts a promising course toward adaptable fertilization strategies that can seamlessly align with dynamic climate scenarios, ultimately contributing to the optimization of crop management practices.

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