扩展近伪拟2吸收子模块(II)

Layla A. Ahmed, M. Mohammed
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引用次数: 1

摘要

时间序列分析是用来分析一系列数据的统计方法。时间序列是最流行的预测统计方法,广泛应用于统计和经济领域。小波变换是一种强大的数学技术,它将分析过的信号转换成时频表示。小波变换方法同时提供时域和频域的信号信息。本研究的目的是提出一个由两个不同的斐波那契系数多项式推导商的小波函数,并比较ARIMA和wavelet-ARIMA。本研究采用日风速的时间序列数据。结果表明,所提出的小波- arima是最适合风速的小波。与小波相比,所提出的小波是最适合风速预报的小波,它给出的MAE和RMSE值较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extend Nearly Pseudo Quasi-2-Absorbing submodules(II)
      Time series analysis is the statistical approach used to analyze a series of data. Time series is the most popular statistical method for forecasting, which is widely used in several statistical and economic applications. The wavelet transform is a powerful mathematical technique that converts an analyzed signal into a time-frequency representation. The wavelet transform method provides signal information in both the time domain and frequency domain. The aims of this study are to propose a wavelet function by derivation of a quotient from two different Fibonacci coefficient polynomials, as well as a comparison between ARIMA and wavelet-ARIMA. The time series data for daily wind speed is used for this study. From the obtained results, the proposed wavelet-ARIMA is the most appropriate wavelet for wind speed. As compared to wavelets the proposed wavelet is the most appropriate wavelet for wind speed forecasting, it gives us less value of MAE and RMSE.
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