用于逼近关键基础设施生存特征的人工神经网络集成

IF 1.8 Q2 ENGINEERING, MULTIDISCIPLINARY
Francesco Di Maio, Chiara Pettorossi, Enrico Zio
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引用次数: 0

摘要

摘要生存签名可以用于关键基础设施的可靠性评估。然而,分析计算和蒙特卡罗模拟(MCS)对于近似大型基础设施的生存特征是不可行的,因为其复杂性和计算需求由于大量的组件。在这种情况下,寻求有效和准确的近似。本文将生存签名近似问题表述为缺失数据问题。利用MCS获得的生存特征集训练人工神经网络集合。然后,使用训练好的人工神经网络集合来检索生存签名的缺失值。最后给出了一个数值算例,并给出了针对大规模现实基础设施设计人工神经网络集成的建议。英国电网、新英格兰电网(IEEE 39总线案例)、简化的柏林地铁系统和近似的美国电力系统(IEEE 118总线案例),然后,最后作为具体的案例研究进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Of Artificial Neural Networks For Approximating The Survival Signature Of Critical Infrastructures
Abstract Survival signature can be useful for the reliability assessment of critical infrastructures. However, analytical calculation and Monte Carlo Simulation (MCS) are not feasible for approximating the survival signature of large infrastructures, because of the complexity and computational demand due to the large number of components. In this case, efficient and accurate approximations are sought. In this paper we formulate the survival signature approximation problem as a missing data problem. An ensemble of artificial neural networks (ANNs) is trained on a set of survival signatures obtained by MCS. The ensemble of trained ANNs is, then, used to retrieve the missing values of the survival signature. A numerical example is worked out and recommendations are given to design the ensemble of ANNs for large-scale, real-world infrastructures. The electricity grid of Great Britain, the New England power grid (IEEE 39-Bus Case), the reduced Berlin metro system and the approximated American Power System (IEEE 118-Bus Case) are, then, eventually, analyzed as particular case studies.
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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