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Partitioning of daily evapotranspiration using a modified shuttleworth-wallace model, random Forest and support vector regression, for a cabbage farmland

机译:使用改进的Shuttleworth-Wallace模型,随机森林和支持向量回归,为白菜农田分区每日蒸散量

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摘要

Prediction of vegetation transpiration (T) is of increasing importance in water resources management and agricultural practices, in particular to facilitate precision irrigation. Traditional evapotranspiration (ET) partitioning dual source modeling requires an extensive array of ground-level parameters and needs model correction and calibration to attain model certainty. In response, a quick and low-cost method is described to predict T using artificial intelligence (AI) modeling based on meteorological factors, status of crop growth factors and soil parameters. This study compares Random Forest (RF) and Support Vector Regression (SVR) in building AI models using three years (2014-2017) of continuous high-resolution monitoring data in a cabbage farmland. Input data included air temperature (T-a), solar radiation (R-a), relative humidity (RH), vapor pressure deficit (VPD), wind speed (W-s), soil moisture (SM), vegetation height (H), and leaf area index (LAI). The results show that soil surface resistance calculations by Monte Carlo iterative method and vegetation stomatal resistance calculations and carbon dioxide concentration and emission, improve performance of the original Shuttleworth-Wallace(S-W) model. In addition, the AI model indicates T-a and R-a are essential inputs for both model types. When there are sufficient observation data, or only lacking soil and vegetation data, the RF model is recommended for use. When there are only limited data or lack of critical T-a and R-a data, the SVR model is the preferred model. Scientific guidance is provided for agriculture precision irrigation, indicating which AI model can best estimate T and water demand for irrigation planning and water management.
机译:植被蒸腾(T)的预测是水资源管理和农业实践的重要性,特别是促进精密灌溉。传统的蒸发(ET)分区双源建模需要广泛的一系列地面参数,并需要模型校正和校准以获得模型确定性。作为响应,描述了一种快速和低成本的方法来预测基于气象因素,作物生长因子和土壤参数的地位的人工智能(AI)建模。该研究将随机森林(RF)和支持向量回归(SVR)与白菜农田连续高分辨率监测数据的三年(2014-2017)建立AI模型。输入数据包括空气温度(TA),太阳辐射(RA),相对湿度(RH),蒸气压赤字(VPD),风速(WS),土壤水分(SM),植被高度(H)和叶面积指数(莱)。结果表明,蒙特卡罗迭代法和植被气孔抗性计算和二氧化碳集中和排放的土壤表面电阻计算,提高了原始的ShuttleWorth-Wallace(S-W)模型的性能。此外,AI模型表示T-A和R-A是两个模型类型的必要输入。当有足够的观察数据时,或仅缺乏土壤和植被数据时,建议使用RF模型。当只有有限的数据或缺乏关键的T-A和R-A数据时,SVR模型是首选模型。为农业精密灌溉提供了科学指导,表明AI模型可以最佳估计T和水需求对灌溉计划和水管理。

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