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Wavelet–copula‐based mutual information for rainfall forecasting applications

机译:基于小波-copula的互信息用于降雨预报应用

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Under a climate change, the physical factors that influence the rainfall regime are diverse and difficult to predict. The selection of skilful inputs for rainfall forecasting models is, therefore, more challenging. This paper combines wavelet transform and Frank copula function in a mutual information-based input variable selection (IVS) for non-linear rainfall forecasting models. The marginal probability density functions (PDFs) of a set of potential rainfall predictors and the rainfall series (predictand) were computed using a wavelet density estimator. The Frank copula function was applied to compute the joint PDF of the predictors and the predictand from their marginal PDFs. The relationship between the rainfall series and the potential predictors was assessed based on the mutual information computed from their marginal and joint PDFs. Finally, the minimum redundancy maximum relevance was used as an IVS stopping criterion to determine the number of skilful input variables. The proposed approach was applied to four stations of the Nigerien Sahel with rainfall series spanning the period 1950-2016 by considering 24 climate indices as potential predictors. Adaptive neuro-fuzzy inference system, artificial neural networks, and random forest-based forecast models were used to assess the skill of the proposed IVS method. The three forecasting models yielded satisfactory results, exhibiting a coefficient of determination between 0.52 and 0.69 and a mean absolute percentage error varying from 13.6% to 21%. The adaptive neuro-fuzzy inference system performed better than the other models at all the stations. A comparison made with KDE-based mutual information showed the advantage of the proposed wavelet-copula approach.
机译:在气候变化下,影响降雨状况的物理因素是多种多样的,并且难以预测。因此,为降雨预报模型选择熟练的输入更具挑战性。本文将小波变换和Frank copula函数结合在基于相互信息的非线性降雨预测模型的输入变量选择(IVS)中。使用小波密度估计器计算了一组潜在的降雨预报器的边际概率密度函数(PDF)和降雨序列(predictand)。应用Frank copula函数来计算预测变量和预测变量的联合PDF以及边缘预测PDF。降雨序列与潜在预测因子之间的关系是根据从边缘和联合PDF计算出的相互信息进行评估的。最后,将最小冗余最大相关性用作IVS停止标准,以确定熟练的输入变量的数量。通过将24个气候指数作为潜在的预测指标,将拟议的方法应用于1950-2016年期间尼日尔·萨赫勒地区四个降水量站。自适应神经模糊推理系统,人工神经网络和基于森林的随机预测模型用于评估所提出的IVS方法的技能。这三个预测模型产生了令人满意的结果,确定系数在0.52至0.69之间,平均绝对百分比误差在13.6%至21%之间。自适应神经模糊推理系统在所有站点的表现均优于其他模型。与基于KDE的互信息进行的比较显示了所提出的小波-copula方法的优势。

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