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Ensemble committee-based data intelligent approach for generating soil moisture forecasts with multivariate hydro-meteorological predictors

机译:基于集合委员会的数据智能方法,用于产生多变量水力气象预测器的土壤水分预测

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摘要

Soil moisture (SM) is a key component of the global energy cycle that regulates all domains of the natural environmental and the agricultural system. In this research, the challenge is to develop a low-cost data-intelligent SM forecasting model using climate dynamics (i.e., the climate indices, atmospheric and hydro-meteorological parameters) as the model inputs. A newly designed, multi-model ensemble committee machine learning approach based on the artificial neural network (ANN-CoM) is developed to forecast monthly upper layer ( similar to 0.2 m from the surface) and the lower layer ( similar to 0.2-1.5 m deep) SM at four agricultural sites in Australia's Murray-Darling Basin. ANN-CoM model is validated with respect to non-tuned second-order Volterra, M5 model tree, random forest, and an extreme learning machine (ELM) models. To construct the ANN-CoM model, the input variables comprised of the hydro-meteorological data from the Australian Water Availability Project, large-scale climate indices and atmospheric parameters derived from the Interim ERA European Centre for Medium-Range Weather Forecasting ECMWF reanalysis fields leads to a total of 60 potential predictors used for SM forecasting. To reduce the model input data dimensionality for accurate forecasts, the Neighborhood Component Analysis (NCA) based feature selection algorithm for regression purposes (fsrnca) is applied to determine the relative feature weights related to the targeted variable. The optimal predictor variables are then screened with an ELM model as the fitness function of the fsrnca algorithm to identify the set of most pertinent model variables. Extensive performance evaluation using statistical score metrics with visual and diagnostic plots show that the ensemble committee based, ANN-CoM model is able to effectively capture the nonlinear dynamics involved in the modeling of monthly upper and lower layer SM levels. Therefore, the ANN-CoM multi-model ensemble-based approach can be considered to be a superior SM forecasting tool, portraying as an amicable, integrated (or ensemble) machine learning stratagem that can be explored for soil moisture modeling and applications in agriculture and other hydro-meteorological phenomena.
机译:土壤水分(SM)是全球能量循环的关键组成部分,调节自然环境和农业系统的所有领域。在这项研究中,挑战是使用气候动力学(即气候指数,大气和水流 - 气象参数)作为模型输入来开发低成本数据智能SM预测模型。基于人工神经网络(ANN-COM)的新设计的多模型集合委员会机器学习方法是为了预测每月上层(类似于0.2米,距离表面)和下层(类似于0.2-1.5米在澳大利亚穆雷 - 达令盆地的四个农业遗址深处。 Ann-COM模型是关于未调整的二阶Volterra,M5模型树,随机林和极端学习机(ELM)模型的验证。为了构建Ann-Com模型,来自澳大利亚水可用性项目的水力气象数据,大规模的气候指标和大气参数所包含的输入变量,来自中期时代的中期天气预报ECMWF Reanalysis Fields的中期天气预报域导线总共有60个用于SM预测的潜在预测因子。为了减少准确的预测的模型输入数据维度,应用基于邻域分量分析(NCA)的回归目的(FSRNCA)的特征选择算法来确定与目标变量相关的相对特征权重。然后用ELM模型作为FSRNCA算法的适应性函数来筛选最佳预测器变量,以识别大多数相关模型变量的集合。广泛的性能评估使用具有视觉和诊断图的统计分数指标表明,基于集合委员会的Ann-COM模型能够有效地捕获每月上层和下层SM水平建模中涉及的非线性动力学。因此,基于ANN-COM多模型集合的方法可以被认为是一个优越的SM预测工具,描绘成可友好的,集成(或集成)机器学习策略,可以探索土壤水分建模和农业应用的应用其他水力气象学现象。

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