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A tolerance interval based approach to address uncertainty for RAMS + C optimization

机译:基于公差区间的方法来解决RAMS + C优化的不确定性

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This paper proposes an approach based on tolerance intervals to address uncertainty for RAMS + C informed optimization of design and maintenance of safety-related systems using a combined Monte Carlo (MC) (simulation) and Genetic Algorithm (search) procedure. This approach is intended to keep control of the uncertainty effects on the decision criteria and reduce the computational effort in simulating RAMS + C using a MC procedure with simple random sampling. It exploits the advantages of order statistics to provide distribution free tolerance intervals for the RAMS + C estimation, which is based on the minimum number of runs necessary to guarantee a probability content or coverage with a confidence level. This approach has been implemented into a customization of the Multi-Objective Genetic Algorithm introduced by the authors in a previous work. For validation purposes, a simple application example regarding the testing and maintenance optimization of the High-Pressure Injection System of a nuclear power plant is also provided, which considers the effect of the epistemic uncertainty associated with the equipment reliability characteristics on the optimal testing and maintenance policy. This example proves that the new approach can provide a robust, fast and powerful tool for RAMS + C informed multi-objective optimization of testing and maintenance under uncertainty in objective and constraints. It is shown that the approach proposed performs very favourably in the face of noise in the output (i.e. uncertainty) and it is able to find the optimum over a complicated, high-dimensional non-linear space in a tiny fraction of the time required for enumeration of the decision space. In addition, a sensitivity study on the number of generations versus the number of trials (i.e. simulation runs) shows that overall computational resources must be assigned preferably to evolving a larger number of generations instead of being more precise in the quantification of the RAMS + C attributes for a candidate solution, i.e. evolution is preferred to accuracy.
机译:本文提出了一种基于公差区间的方法,以解决蒙特卡罗(MC)(模拟)和遗传算法(搜索)程序相结合的RAMS + C告知的安全相关系统的设计和维护优化问题。这种方法旨在保持对决策标准的不确定性影响的控制,并减少使用带有简单随机采样的MC程序模拟RAMS + C的计算量。它利用顺序统计的优势为RAMS + C估计提供无分布公差间隔,该间隔基于保证概率内容或置信度范围所需的最小运行次数。该方法已实现为作者在先前工作中引入的多目标遗传算法的自定义。为了进行验证,还提供了一个有关核电厂高压喷射系统的测试和维护优化的简单应用示例,其中考虑了与设备可靠性特征相关的认知不确定性对最佳测试和维护的影响。政策。此示例证明,该新方法可以为在目标和约束不确定的情况下RAMS + C告知的测试和维护多目标优化提供鲁棒,快速而强大的工具。结果表明,所提出的方法在面对输出中的噪声(即不确定性)时表现非常出色,并且能够在复杂的高维非线性空间中找到所需的极小时间,从而获得最佳的解决方案。决策空间的枚举。此外,关于世代数与试验数(即模拟运行)的敏感性研究表明,必须优先分配总体计算资源,以发展更大的世代数,而不是更精确地量化RAMS + C候选解决方案的属性,即进化优先于准确性。

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