A Novel Bayesian Additive Regression Trees Ensemble Model Based on Linear Regression and Nonlinear Regression for Torrential Rain Forecasting

Jiansheng Wu, Liangyong Huang, Xiaoming Pan
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引用次数: 17

Abstract

In order to improve the accuracy of precipitation forecasting with the linear regression of traditional statistical model and the nonlinear regression of Neural Network (NN) model, especially in torrential rain, a novel Bayesian Additive Regression Trees (BART) ensemble model is proposed in this paper. Firstly, three different linear regression model are used to extract the linear characteristic of rainfall system with the Partial Squares Least Regression, the Quantile Regression and the M-regression. Secondly, three different NNs model are used to extract the nonlinear characteristics of rainfall system with the General Regression Neural Network (GR--NN), the Radial Basis Function Neural Network (RBF--NN) and the Levenberg-Marquardt Algorithm Neural Network (LMA--NN). Finally, the BART is used for ensemble model based on linear and nonlinear regression. For illustration, a summer daily rainfall example is utilized to show the feasibility of the BART ensemble model in improving the accuracy of torrential rainfall with linear regression and nonlinear regression model. Empirical results obtained reveal that the torrential rainfall prediction by using the BART ensemble model is generally better than those obtained using other models presented in this paper in terms of the same evaluation measurements. Our findings reveal that the BRAT ensemble model proposed here can be used as an alternative forecasting tool for a Severe Weather application in achieving greater forecasting accuracy and improving prediction quality further.
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基于线性回归和非线性回归的暴雨预报贝叶斯加性回归树集成模型
为了提高传统统计模型的线性回归和神经网络(NN)模型的非线性回归对暴雨降水预报的精度,提出了一种新的贝叶斯加性回归树(BART)集合模型。首先,采用偏二乘最小回归、分位数回归和m回归三种不同的线性回归模型提取降雨系统的线性特征;其次,利用广义回归神经网络(GR—NN)、径向基函数神经网络(RBF—NN)和Levenberg-Marquardt算法神经网络(LMA—NN)三种不同的神经网络模型提取降雨系统的非线性特征;最后,将BART用于基于线性和非线性回归的集成模型。以夏季日降水为例,说明BART集合模型在提高线性回归和非线性回归模型对暴雨预报精度方面的可行性。实证结果表明,在相同评价测度条件下,利用BART集合模型对暴雨的预报效果普遍优于本文提出的其他模型。我们的研究结果表明,本文提出的BRAT集合模型可以作为一种替代的预测工具用于恶劣天气应用,以实现更高的预测精度和进一步提高预测质量。
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