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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Particle filtering-based methods for time to failure estimation with a real-world prognostic application
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Particle filtering-based methods for time to failure estimation with a real-world prognostic application

机译:基于颗粒滤波的方法与现实世界预后应用的失败估算

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摘要

One of core technologies for prognostics is to predict failures before they occur and estimate time to failure (TTF) by using built-in predictive models. The predictive model could be either physics-based model or machine learning-based model. Machine learning-based predictive modeling is an emerging application of machine learning to machinery maintenance. Accurate TTF estimation could help performing predictive action "just-in-time". However, the developed predictive models sometimes fail to provide a precise TTF estimate. To address this issue, we propose a Particle Filtering (PF)-based method to estimate TTF. After introducing the PF-based algorithm, we present the implementation along with the experimental results obtained from a case study of Auxiliary Power Unit (APU) prognostics. To our best knowledge, this is the first application of PF-based method to APU prognostic. The results demonstrated that the PF-based method is useful for estimating TTF for predictive maintenance and it greatly improved TTF estimation precision for APU prognostics.
机译:预测的核心技术之一是通过使用内置预测模型来预测它们发生并估计失败时间(TTF)的故障。预测模型可以是基于物理的模型或基于机器学习的模型。基于机器学习的预测建模是机器学习到机械维护的新兴应用。准确的TTF估计可以帮助执行预测行动“即时”。然而,开发的预测模型有时不能提供精确的TTF估计。为了解决这个问题,我们提出了一种粒子过滤(PF)的基于估计TTF的方法。在引入基于PF的算法之后,我们呈现了从辅助动力单元(APU)预后学的案例研究中获得的实验结果。为了我们的最佳知识,这是基于PF的方法对APU预后的第一次应用。结果表明,基于PF的方法可用于估计用于预测性维护的TTF,并且它大大提高了APU预后的TTF估计精度。

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