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Forecasting performance of nonlinear time-series models: an application to weather variable

机译:预测非线性时间序列模型的性能:天气变量的应用

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Modelling the dynamic dependent data by the linear approach is the most popular among the researchers because of its simplicity in calculation and approximation, however, in real-world phenomena, most of the time-dependent data follow the nonlinearity. Moreover, most of the nonlinear modelling of time-dependent data have found in the financial applications. Besides this sector, the authors of this paper found the presence of nonlinearity in meteorological data with the help of four popular nonlinearity tests. Furthermore, there is a scarcity of the application of regime-switching threshold autoregressive nonlinear time-series model in forecasting the weather variables like temperature. Thus, this paper aims to compare the forecasting accuracy of the linear autoregressive (linear AR), self-exciting threshold autoregression (SETAR), logistic smooth transition autoregressive model (LSTAR), and feed-forward neural network (ANNs) and fitted with the determination of regime and hyperparameters. After fitting the models, twenty steps ahead forecast considered for the comparison along with the selected model selection criteria; and results depict that the LSTAR models are selected as the most appropriate fitted models for forecasting the daily Average, Maximum and Minimum temperature. Finally, it has observed that the average, as well as maximum temperature of Dhaka, Bangladesh, have an increasing trend and minimum temperature having a decreasing trend.
机译:通过线性方法建模动态依赖数据是研究人员中最受欢迎的,因为它在计算和近似值中的简单性,然而,在现实世界中,大多数时间依赖数据都遵循非线性。此外,在金融应用中发现了大多数时间依赖数据的非线性建模。除了这一部门,本文的作者还发现了在四种流行的非线性测试的帮助下存在气象数据中的非线性。此外,在预测温度下的天气变量时,缺乏制度开关阈值自回转非线性时间序列模型的应用。因此,本文旨在比较线性自回归(线性AR),自我激发阈值自动增加(SETAR),物流平滑过渡自动增加(LSTAR)和前馈神经网络(ANNS)的预测精度并配备确定政权和近似数目。拟合模型后,将预测二十台步骤预测,与所选模型选择标准一起考虑进行比较;结果描绘了LSTAR模型被选为最合适的拟合模型,用于预测每日平均,最大和最小温度。最后,它观察到,平均,达卡,孟加拉国的最高温度,趋势越来越高,具有降低趋势的最低温度。

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