Enhancement of land subsidence prediction capabilities using machine learning and SHAP value analysis with Sentinel-1 InSAR Data
Heng Su,
Tingting Xu,
Xiancai Xion
et al.
Abstract:Land subsidence has been a significant focus of geoscience studies, and researching the factors contributing to it and predicting future incidents is essential. However, current research requires a systematic and coherent strategy to identify symptoms of land sinking with scientific rigor. This study employs neural networks and SHAP values to forecast land subsidence. We utilized SHAP values as a substitute for the usual random forest (RF) technique to evaluate the attributes of land subsidence. In addition, w… Show more
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