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Research on soil moisture prediction model based on deep learning

机译:基于深度学习的土壤水分预测模型研究

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摘要

Soil moisture is one of the main factors in agricultural production and hydrological cycles, and its precise prediction is important for the rational use and management of water resources. However, soil moisture involves complex structural characteristics and meteorological factors, and it is difficult to establish an ideal mathematical model for soil moisture prediction. Existing prediction models have problems such as prediction accuracy, generalization, and multi-feature processing capability, and prediction performance must improve. Based on this, taking the Beijing area as the research object, the deep learning regression network (DNNR) with big data fitting capability was proposed to construct a soil moisture prediction model. By integrating the dataset, analyzing the time series of the predictive variables, and clarifying the relationship between features and predictive variables through the Taylor diagram, selected meteorological parameters can provide effective weights for moisture prediction. Test results prove that the deep learning model is feasible and effective for soil moisture prediction. Its’ good data fitting and generalization capability can enrich the input characteristics while ensuring high accuracy in predicting the trends and values of soil moisture data and provides an effective theoretical basis for water-saving irrigation and drought control.
机译:土壤水分是影响农业生产和水文循环的主要因素之一,其准确预测对合理利用和管理水资源具有重要意义。然而,土壤水分涉及复杂的结构特征和气象因素,很难建立理想的数学模型来预测土壤水分。现有的预测模型存在诸如预测准确性,泛化和多特征处理能力的问题,并且预测性能必须提高。在此基础上,以北京地区为研究对象,提出了具有大数据拟合能力的深度学习回归网络(DNNR),用于建立土壤水分预测模型。通过整合数据集,分析预测变量的时间序列并通过泰勒图阐明特征与预测变量之间的关系,选定的气象参数可以为水分预测提供有效的权重。测试结果证明,深度学习模型对土壤水分的预测是可行和有效的。其良好的数据拟合和泛化能力可以丰富输入特征,同时确保高精度地预测土壤湿度数据的趋势和值,并为节水灌溉和干旱控制提供有效的理论基础。

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