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Complex Electronic System Performance Degradation Prediction Using Incomplete Measurement Data

机译:基于不完整测量数据的复杂电子系统性能退化预测

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A performance degradation prediction method for multi-unit system with insufficient measurement data is proposed by integrating data recovering model, hidden Markov model and support vector regression (SVR) model. The development of the model includes three main parts. Part one, a principal component analysis (PCA) model is build based on normal state. Part two, a hidden Markov model(HMM) is trained based on principal data and log-likelihood ratios that the normal state's HMM give to the life-cycle historical degradation sequence are calculated to evaluate system degradation. Part three, a SVR model is adopted for modeling degradation process. So, when a new sample with missing data comes, following steps will be taken: recover the principal component based on PCA model, calculate the log-likelihood of degradation sequence based on normal HMM, and then predict future degradation with SVR model. A numerical simulation is taken as an example to show the feasibility and validity of the proposed method.
机译:通过集成数据恢复模型,隐马尔可夫模型和支持向量回归模型,提出了一种测量数据不足的多单元系统性能下降的预测方法。该模型的开发包括三个主要部分。第一部分,基于正常状态构建主成分分析(PCA)模型。第二部分,基于主数据训练隐马尔可夫模型(HMM),计算正常状态的HMM对生命周期历史退化序列的对数似然比,以评估系统退化。第三部分,采用SVR模型对退化过程进行建模。因此,当出现缺少数据的新样本时,将采取以下步骤:基于PCA模型恢复主成分,基于正常HMM计算退化序列的对数似然率,然后使用SVR模型预测未来的退化。以数值模拟为例,说明了该方法的可行性和有效性。

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