A Deep Learning Approach for Multi-Depth Soil Water Content Prediction in Summer Maize Growth Period
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Jingxin Yu | Song Tang | Lili Zhangzhong | Wengang Zheng | Long Wang | Alexander Wong | Linlin Xu | Linlin Xu | Long Wang | Lili Zhangzhong | Wengang Zheng | A. Wong | Jingxin Yu | Song Tang
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