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Machine degradation prognostic based on RVM and ARMA/GARCH model for bearing fault simulated data

机译:基于RVM和ARMA / GARCH模型的机器劣化预后用于轴承故障模拟数据

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Recently, prognostics is an active area and growth rapidly. In this paper, bearing prognostic has been studied in viewpoint of failure degradation as an object of prediction. This study proposes the application of relevance vector machine (RVM), logistic regression (LR) and ARMA/GARCH in order to assess the failure degradation of run-to-failure bearing simulated data. Failure degradation is calculated using LR and then regarded as target vectors of failure probability for RVM training. ARMA/GARCH based on multi-step-ahead prediction is employed for censored data. Furthermore, RVM is selected as intelligent system then trained by using run-to-failure bearing data and target vectors of failure probability estimated by LR. After training process, RVM is employed to predict failure probability of individual unit of bearing sample. The result shows the novelty of the proposed method which can be considered as machine degradation prognostic model.
机译:最近,预后性是一个活跃的区域和增长迅速。 在本文中,在失败的视点作为预测对象的观点来看,已经研究了轴承预后。 本研究提出了相关矢量机(RVM),逻辑回归(LR)和ARMA / GARCH的应用,以便评估碰到失效轴承模拟数据的故障劣化。 使用LR计算失败劣化,然后被视为RVM训练的故障概率的目标向量。 基于多级预测的ARMA / GARCH用于被审查的数据。 此外,RVM被选为智能系统,然后通过使用碰碰故障承载数据和LR估计的故障概率的目标向量训练。 在训练过程之后,使用RVM来预测各个轴承样品单位的失效概率。 结果表明,该方法的新颖性可以被视为机器降解预后模型。

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