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A Tutorial on Nonlinear Time-Series Data Mining in Engineering Asset Health and Reliability Prediction: Concepts, Models, and Algorithms

机译:工程资产运行状况和可靠性预测中的非线性时间序列数据挖掘教程:概念,模型和算法

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The primary objective of engineering asset management is to optimize assets service delivery potential and to minimize the related risks and costs over their entire life through the development and application of asset health and usage management in which the health and reliability prediction plays an important role. In real-life situations where an engineering asset operates under dynamic operational and environmental conditions, the lifetime of an engineering asset is generally described as monitored nonlinear time-series data and subject to high levels of uncertainty and unpredictability. It has been proved that application of data mining techniques is very useful for extracting relevant features which can be used as parameters for assets diagnosis and prognosis. In this paper, a tutorial on nonlinear time-series data mining in engineering asset health and reliability prediction is given. Besides that an overview on health and reliability prediction techniques for engineering assets is covered, this tutorial will focus on concepts, models, algorithms, and applications of hidden Markov models (HMMs) and hidden semi-Markov models (HSMMs) in engineering asset health prognosis, which are representatives of recent engineering asset health prediction techniques.
机译:工程资产管理的主要目标是通过开发和应用资产运行状况和使用管理(在运行状况和可靠性预测中起重要作用)来优化资产服务交付潜力,并在其整个生命周期内将相关的风险和成本降至最低。在工程资产在动态运行和环境条件下运行的现实情况下,工程资产的寿命通常被描述为受监视的非线性时间序列数据,并且存在高度的不确定性和不可预测性。已经证明,数据挖掘技术的应用对于提取可用作资产诊断和预测参数的相关特征非常有用。本文给出了关于非线性时间序列数据挖掘在工程资产健康和可靠性预测中的指南。除了涵盖工程资产的健康和可靠性预测技术概述之外,本教程还将重点介绍隐马尔可夫模型(HMM)和隐半马尔可夫模型(HSMM)在工程资产健康预测中的概念,模型,算法和应用。 ,它们是最新工程资产健康预测技术的代表。

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