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Multiple linear regression, multi-layer perceptron network and adaptive neuro-fuzzy inference system for forecasting precipitation based on large-scale climate signals

机译:基于大型气候信号的多元线性回归,多层感知器网络和自适应神经模糊推理系统

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摘要

Nowadays, mathematical models are widely used to predict climate processes, but little has been done to compare the models. In this study, multiple linear regression (MLR), multi-layer perceptron (MLP) network and adaptive neuro-fuzzy inference system (ANFIS) models were compared for precipitation forecasting. The large-scale climate signals were considered as inputs to the applied models. After selecting the most effective climate indices, the effects of large-scale climate signals on the seasonal standardized precipitation index (SPI) of the Maharlu-Bakhtaran catchment, Iran, simultaneously and with a delay, was analysed using a cross-correlation function. Hence, the SPI time series was forecasted up to four time intervals using MLR, MLP and ANFIS. The results showed that most of the indices were significant with SPI of different lag times. Comparison of the SPI forecast results by MLR, MLP and ANFIS models showed better performance for the MLP network than the other two models (RMSE=0.86, MAE=0.74 for the first step ahead of SPI forecasting).
机译:如今,数学模型已被广泛用于预测气候过程,但几乎没有进行比较。在这项研究中,比较了多元线性回归(MLR),多层感知器(MLP)网络和自适应神经模糊推理系统(ANFIS)模型进行的降水预报。大规模的气候信号被认为是应用模型的输入。选择最有效的气候指数后,使用互相关函数同时并延迟地分析了大规模气候信号对伊朗马哈鲁-巴赫塔兰流域的季节性标准化降水指数(SPI)的影响。因此,使用MLR,MLP和ANFIS可以预测多达四个时间间隔的SPI时间序列。结果表明,大多数指数在不同滞后时间的SPI下均显着。通过MLR,MLP和ANFIS模型对SPI预测结果的比较显示,MLP网络的性能要优于其他两个模型(RMS = 0.86,MAE = 0.74是SPI预测之前的第一步)。

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