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Online Forecasting of Time Series Using Incremental Wavelet Decomposition and Least Squares Support Vector Machine

机译:使用增量小波分解和最小二乘支持向量机的时间序列在线预测

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摘要

Time series is widely concerned in industry engineering, finance, economy, traffic and many other fields. Forecasting of time series is an important work and online forecasting is necessary in some real time application. An efficient method for forecasting of time series using wavelet transform and least squares support vector machine (LS-SVM) is presented, which can provide high accuracy and cost less time. Sliding window model is used to follow the data changing, and incremental algorithms for wavelet decomposition is used to save time. Simulation experiment using real power load dataset show the effectiveness of proposed method.
机译:时间序列在工业工程,金融,经济,交通和许多其他领域中受到广泛关注。时间序列的预测是一项重要的工作,在线预测对于某些实时应用是必要的。提出了一种利用小波变换和最小二乘支持向量机(LS-SVM)进行时间序列预测的有效方法,该方法可以提供较高的精度和较少的时间开销。滑动窗口模型用于跟踪数据变化,小波分解的增量算法用于节省时间。使用实际功率负荷数据集的仿真实验表明了该方法的有效性。

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