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Online multi-step-ahead time series prediction based on LSSVR using UKF with sliding-windows

机译:使用带有滑动窗口的UKF的基于LSSVR的在线多步提前时间序列预测

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Accurate multi-step-ahead prediction over long future horizons posts great challenges for the application of time series prediction. A novel online multi-step-ahead prediction method based on least squares support vector regression (LSSVR) is proposed in this paper. Taken the superiorities of using sliding-windows to reduce largely computation burden and implementing LSSVR model updating by Unscented Kalman Filter (UKF) into consideration, the proposed method not only can construct online predicted model in much fewer training data (such as the size of original training data set required is only the sum of embedding dimension corresponding to phase-space-reconstruction and the length of sliding-windows), but also has the better accuracy over multi-step-ahead prediction. When the prediction horizon reached the predefined step p in the process of predicting, model parameters consisted of kernel width σ, support values {α} and bias term b are updated by new arrived measurements and UKF. Finally, several simulations are provided to show the validity and applicability of the proposed method.
机译:未来很长一段时间内的准确多步提前预测对时间序列预测的应用提出了巨大挑战。提出了一种基于最小二乘支持向量回归的在线多步提前预测方法。考虑到使用滑动窗口可大大减少计算负担并通过无味卡尔曼滤波器(UKF)实施LSSVR模型更新的优势,该方法不仅可以在更少的训练数据(例如原始数据的大小)中构建在线预测模型所需的训练数据集仅仅是对应于相空间重构的嵌入维数和滑动窗口的长度之和,而且比多步提前预测具有更好的准确性。在预测过程中,当预测范围达到预定义的步骤p时,将通过新到达的测量值和UKF更新由内核宽度σ,支持值{α}和偏差项b组成的模型参数。最后,提供了一些仿真来证明所提方法的有效性和适用性。

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