Multi-Hazard Early Warning Systems for Agriculture with Featural-Temporal Explanations
- URL: http://arxiv.org/abs/2507.22962v1
- Date: Wed, 30 Jul 2025 05:16:35 GMT
- Title: Multi-Hazard Early Warning Systems for Agriculture with Featural-Temporal Explanations
- Authors: Boyuan Zheng, Victor W. Chu,
- Abstract summary: Climate extremes present escalating risks to agriculture.<n>Traditional single-hazard forecasting methods fall short in capturing complex interactions among concurrent climatic events.<n>In this paper, we combine sequential deep learning models and advanced Explainable Artificial Intelligence (XAI) techniques to introduce a multi-hazard forecasting framework for agriculture.
- Score: 5.363664265121231
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Climate extremes present escalating risks to agriculture intensifying the need for reliable multi-hazard early warning systems (EWS). The situation is evolving due to climate change and hence such systems should have the intelligent to continue to learn from recent climate behaviours. However, traditional single-hazard forecasting methods fall short in capturing complex interactions among concurrent climatic events. To address this deficiency, in this paper, we combine sequential deep learning models and advanced Explainable Artificial Intelligence (XAI) techniques to introduce a multi-hazard forecasting framework for agriculture. In our experiments, we utilize meteorological data from four prominent agricultural regions in the United States (between 2010 and 2023) to validate the predictive accuracy of our framework on multiple severe event types, which are extreme cold, floods, frost, hail, heatwaves, and heavy rainfall, with tailored models for each area. The framework uniquely integrates attention mechanisms with TimeSHAP (a recurrent XAI explainer for time series) to provide comprehensive temporal explanations revealing not only which climatic features are influential but precisely when their impacts occur. Our results demonstrate strong predictive accuracy, particularly with the BiLSTM architecture, and highlight the system's capacity to inform nuanced, proactive risk management strategies. This research significantly advances the explainability and applicability of multi-hazard EWS, fostering interdisciplinary trust and effective decision-making process for climate risk management in the agricultural industry.
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