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首页> 外文期刊>Journal of Sound and Vibration >Machine health prognostics using the Bayesian-inference-based probabilistic indication and high-order particle filtering framework
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Machine health prognostics using the Bayesian-inference-based probabilistic indication and high-order particle filtering framework

机译:使用基于贝叶斯推理的概率指示和高阶粒子过滤框架进行机器健康预测

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摘要

Prognostics is much efficient to achieve zero-downtime performance, maximum productivity and proactive maintenance of machines. Prognostics intends to assess and predict: the time evolution of machine health degradation so that machine failures can be predicted and prevented. A novel prognostics system is developed based on the data-model-fusion scheme using the Bayesian inference based self organizing map (SOM) and an integration of logistic regression (LR) and high order particle filtering (HOPF). In this prognostics system, a baseline SOM is constructed to model the data distribution space of healthy machine under an assumption that predictable fault patterns are not available. Bayesian inference-based probability (BIP) derived from the baseline SOM is developed as a quantification indication of machine health degradation. BIP is capable of offering failure probability for the monitored machine, which has intuitionist explanation related to health degradation state. Based on those historic BIPs, the constructed LR and its modeling noise constitute a high-order Markov process (ROMP) to describe machine health propagation. HOPF is used to solve the ROMP estimation to predict: the evolution of the machine health in the form of a probability density function (PDF). An on-line model update scheme is developed to adapt: the Markov process changes to machine health dynamics quickly. The experimental results on a bearing test bed illustrate the potential applications of the proposed system as an effective and simple tool for machine health prognostics. (C) 2015 Elsevier Ltd. All rights reserved.
机译:为了实现零停机时间性能,最高的生产率和对机器的主动维护,预测功能非常有效。预测专家打算评估和预测:机器运行状况下降的时间演变,以便可以预测和预防机器故障。基于数据模型融合方案,使用基于贝叶斯推理的自组织图(SOM)以及逻辑回归(LR)和高阶粒子滤波(HOPF)的集成,开发了一种新颖的预测系统。在此预测系统中,在无法获得可预测的故障模式的假设下,构建了基线SOM以对健康机器的数据分布空间进行建模。从基线SOM得出的基于贝叶斯推理的概率(BIP)被开发为机器健康状况下降的量化指标。 BIP能够为受监视的机器提供故障概率,它具有与运行状况下降状态有关的直观解释。基于这些历史BIP,构造的LR及其建模噪声构成了描述机器健康传播的高阶马尔可夫过程(ROMP)。 HOPF用于求解ROMP估计,以预测:机器健康状况的演变,形式为概率密度函数(PDF)。开发了一种在线模型更新方案以适应:马尔可夫过程快速更改为机器运行状况动态。轴承测试台上的实验结果说明了该系统作为机器健康预测的有效而简单的工具的潜在应用。 (C)2015 Elsevier Ltd.保留所有权利。

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