基于增量学习的改进多核LS-SVR时间序列在线预测

Yangming Guo, Xiangtao Wang, Yafei Zheng, Chong Liu
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引用次数: 0

摘要

由于复杂系统难以建立精确的物理模型,通常采用时间序列预测来预测其健康趋势和运行状态。针对在线预测问题,提出了一种基于LS-SVR模型和增量学习算法的时间序列在线预测新方案。该方案包括两个方面。首先,将单个核替换为由多个基核组成的新的固定核,得到较好的高维信息映射;其次,通过建立新的无偏置项b的LS-SVR模型,简化了增量学习的计算过程;通过某航电应用进行预测实验。初步结果表明,该方案预测精度高,计算时间短,是一种有效的预测方法。该方法在实际应用中具有一定的实用价值。
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Improved multi-kernel LS-SVR for time series online prediction with incremental learning
Since it is difficult to establish precise physical model of complex systems, time series prediction is often used to predict their health trend and running state. Aiming at online prediction, we proposed a new scheme to fix the problems of time series online prediction, which is based on LS-SVR model and incremental learning algorithm. The scheme includes two aspects. Firstly, by replacing single kernel with new fixed kernel consisting of several basis kernels, a better information mapping in high dimension is obtained; secondly, by establishing new LS-SVR model without bias term b, the calculation process with incremental learning is simplified. Prediction experiment is performed via certain avionics application. The results indicate preliminarily that the proposed scheme is an effective prediction approach for its good prediction precision and less computing time. The method will be useful in actual application.
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