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A risk-averse stochastic program for integrated system design and preventive maintenance planning

机译:用于集成系统设计和预防性维护计划的风险厌恶随机计划

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摘要

The failure of high-consequence systems, such as highspeed railways, can result in a series of severe damages. Due to the volatility of real circumstances, stochastic optimization methods are needed to aid decisions on reliability design and maintenance for the high-consequence systems. Traditionally, risk-neutral approaches are used by considering the expectation of random variables as a preference criterion. The risk-neutral approaches may achieve the solutions that are good in the long run but do not control poor results under certain realizations of random variables. From a perspective of risk analysis, such solutions are not acceptable for high-consequence systems. To address this issue, this paper uses the conditional value at risk (CVaR) to more properly account for some of the worst realizations of random future usage scenarios, and then proposes a risk-averse two-stage stochastic programming model to simultaneously determine the numbers of components in each subsystem and preventive maintenance time intervals for the high-consequence systems that are exposed to uncertain future usage stresses. The proposed stochastic programming model can be converted to a nonconvex mixed-integer nonlinear programming (MINLP) model. To solve the model, we derive the analytical properties of the recourse function and the closed form of CVaR and then design a decomposition algorithm. Numerical examples demonstrate the proposed risk-averse stochastic approach and the effectiveness of incorporating the CVaR in modeling. The results show the research problem significantly benefits from the proposed approach. Furthermore, the robustness of the optimal system design and maintenance plan under different profiles of future usage scenarios is addressed. (C) 2019 Elsevier B.V. All rights reserved.
机译:高后果系统(如高速铁路)的失败可能导致一系列严重损害。由于实际情况的波动,需要随机优化方法来帮助决策高后果系统的可靠性设计和维护。传统上,通过考虑随机变量作为偏好准则来使用风险中性方法。风险中性方法可以实现长期良好的解决方案,但在某些随机变量的实现下,不控制差的结果。从风险分析的角度来看,这种解决方案对高后果系统不可接受。要解决此问题,本文使用风险(CVAR)的条件值更适当地占随机未来使用场景的一些最严重的实现,然后提出了一种风险厌恶的两阶段随机编程模型,以同时确定数字每个子系统中的组件和接触不确定的未来使用压力的高后果系统的预防性维护时间间隔。所提出的随机编程模型可以转换为非凸混合整数非线性编程(MINLP)模型。为了解决模型,我们推出了追索功能的分析属性和CVAR的封闭形式,然后设计了分解算法。数值示例展示了提出的风险厌恶随机方法以及将CVAR掺入建模中的有效性。结果表明,研究问题从所提出的方法中显着益处。此外,解决了未来使用场景的不同简档下最佳系统设计和维护计划的鲁棒性。 (c)2019 Elsevier B.v.保留所有权利。

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