基于PCA-SVR的冬小麦土壤水分预测
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S152.7;S572

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国家重点研发计划课题(2016YFD0800307)、教育部人文社会科学研究规划项目(10YJA910010)、陕西省农业科技攻关项目(2011K02-11)、西安市科技计划农业技术研发项目(NC150201;NC1402)和西北大学研究生质量工程提升项目(YZZ17147;YZZ17151)资助。


Prediction of Soil Moisture of Winter Wheat by PCA-SVR
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    摘要:

    土壤含水量状况是影响农作物生长的重要因素,对农作物生长关键期土壤水分的精准预测是田间管理的重要内容。研究选取宝鸡市2014年至2016年冬小麦种植区3—5月的气象、地形和土壤属性3个方面共15个预测因子,建立基于主成分分析(principal component analysis,PCA)的支持向量回归机(support vector regression,SVR)模型预测0 ~ 20 cm和20 ~ 40 cm土层的土壤水分,并同时采用随机森林(random forest,RF)回归模型对同质数据进行预测分析,以对比分析PCA-SVR模型的预测效果。结果表明:PCA-SVR模型对宝鸡市冬小麦土壤水分的预测在0 ~ 20 cm和20 ~ 40 cm土层的平均预测精度分别为92.899% 和92.656%,RMSE分别为7.521和8.011;随机森林回归预测模型在0 ~ 20 cm和20 ~ 40 cm土层的平均预测精度为87.632% 和87.842%,RMSE分别为10.759和11.042。因此,PCA-SVR模型对宝鸡市冬小麦土壤水分具有更好的预测能力,且模型在0 ~ 20 cm土层的预测效果略优于20 ~ 40 cm土层。

    Abstract:

    Soil moisture is one of the important factors affecting the growth of crops, accurate prediction of soil moisture in the critical period of crop growth is an important part of the field management. In this study 15 prediction factors were selected from meteorology, topography and soil properties from March to May in the winter wheat growing area from 2014 to 2016 in Baoji of Shaanxi Province, soil moistures in 0–20 cm and 20–40 cm soil layers were predicated and compared by using the established PCA-SVR (Principal Component Analysis-Support Vector Regression) model and Random Forest (RF) regression model. The results showed that prediction accuracies in 0–20cm and 20–40cm soil layers were 92.899% and 92.656% for PCA-SVR model, 87.632% and 87.842% for RF regression model, with the corresponding RMSEs of 7.521 and 8.011 for PCA-SVR model, 10.759 and 11.042 for RF regression model, respectively, indicating that PCA-SVR model had better predictive ability on soil moisture of winter wheat in Baoji, particularly for 0–20 cm soil layer.

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聂红梅,杨联安,李新尧,封涌涛,任 丽,张 斌.基于PCA-SVR的冬小麦土壤水分预测[J].土壤,2018,50(4):812-818. NIE Hongmei, YANG Lian’an, LI Xinyao, FENG Yongtao, REN Li, ZHANG Bin. Prediction of Soil Moisture of Winter Wheat by PCA-SVR[J]. Soils,2018,50(4):812-818

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  • 收稿日期:2017-11-29
  • 最后修改日期:2018-01-18
  • 录用日期:2018-01-22
  • 在线发布日期: 2018-08-21
  • 出版日期: 2017-12-25