A multi-task learning model for global soil moisture prediction based on adaptive weight allocation

基于自适应权重分配的全球土壤湿度预测多任务学习模型

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Abstract

Global soil moisture is crucial for multiple disciplines such as earth science and agricultural science. Therefore, there are many studies on how to improve the prediction accuracy of soil moisture, especially the rapid development of deep learning in recent years, which has greatly improved data-driven models. This paper proposes an adaptive weight long short-term memory (AW-LSTM) model based on dynamic weight allocation, which dynamically optimizes the model by calculating the correlation coefficient [Formula: see text] between tasks. The experimental verification demonstrated that the AW-LSTM model exhibited the most accurate soil moisture prediction, with [Formula: see text] and [Formula: see text] values of 0.9456 and 0.8489, respectively. These values were 0.019 and 0.072 higher than the single-task prediction values observed in the benchmark dataset.

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