Underlying Probability Measure Approximated by Monte Carlo Simulations in Event Prognostics

David Acuña-Ureta, Marcos Orchard
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Abstract

The prognostic of events, and particularly of failures, is a key step towards allowing preventive decision-making, as in the case of predictive maintenance in Industry 4.0, for example. However, the occurrence time of a future event is subject to uncertainty, so it is natural to think of it as a random variable. In this regard, the default procedure (benchmark) to compute its probability distribution is empirical, through Monte Carlo simulations. Nonetheless, the analytic expression for the probability distribution of the occurrence time of any future event was presented and demonstrated in a recent publication. In this article it is established a direct relationship between these empirical and analytical procedures. It is shown that Monte Carlo simulations numerically approximate the analytically known probability measure when the future event is triggered by the crossing of a threshold.
蒙特卡罗模拟在事件预测中的潜在概率测度
事件预测,特别是故障预测,是实现预防性决策的关键一步,例如工业4.0中的预测性维护。然而,未来事件的发生时间受制于不确定性,因此很自然地将其视为随机变量。在这方面,默认的程序(基准)计算其概率分布是经验性的,通过蒙特卡罗模拟。尽管如此,任何未来事件发生时间的概率分布的解析表达式已在最近的出版物中提出并证明。在本文中,建立了这些经验和分析过程之间的直接关系。结果表明,当未来事件由阈值的跨越触发时,蒙特卡罗模拟在数值上近似于解析上已知的概率测度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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