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Online Fault Prediction Based on Combined AOSVR and ARMA Models

机译:基于AOSVR和ARMA模型相结合的在线故障预测

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Accurate fault prediction can obviously reduce cost and decrease the probability of accidents so as to improve the performance of the system test and maintenance. Traditional fault prediction methods are always off-line that are not suitable for online and real-time processing. For the complicated nonlinear and non-stationary time series, it is hard to achieve exact predicting result with single models such as SVR, ANN and ARMA. Combined with the AOSVR (accurate online support vector regression) algorithm and the ARMA model, this paper presents a new online approach to forecast fault with time series prediction. The fault trend feature can be extracted by the AOSVR with global kernel for general fault modes. Moreover, its prediction residual that characterized the local high-frequency components is synchronously revised and suppled by the sliding time window ARMA model. Fault prediction with combined AOSVR and ARMA has realized better result than the single ones. Experiments on Tennessee Eastman process fault data show the new method is practical and effective.
机译:准确的故障预测可以明显降低成本,降低事故发生的可能性,从而提高系统测试和维护的性能。传统的故障预测方法总是离线的,不适用于在线和实时处理。对于复杂的非线性和非平稳时间序列,很难通过SVR,ANN和ARMA等单一模型来获得准确的预测结果。结合AOSVR(精确的在线支持向量回归)算法和ARMA模型,提出了一种新的在线时间序列预测故障在线预测方法。故障趋势特征可以由具有全局内核的AOSVR提取,以用于一般故障模式。此外,通过滑动时间窗ARMA模型同步修正和补充了表征局部高频成分的预测残差。结合使用AOSVR和ARMA进行的故障预测比单个方法具有更好的结果。对田纳西州伊士曼过程故障数据的实验表明,该方法是实用有效的。

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