[1]WANG Tongtong,ZHAI Junhai,HE Huan,et al.Applicability of BP Neural Network Model and SVM Model to Predicting Soil Moisture Under incorporation of Biochar into Soils[J].Research of Soil and Water Conservation,2017,24(03):86-91.
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Applicability of BP Neural Network Model and SVM Model to Predicting Soil Moisture Under incorporation of Biochar into Soils

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