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Sequential probabilistic analytical target cascading method for hierarchical multilevel optimization under uncertainty

机译:不确定条件下分层多级优化的顺序概率分析目标级联方法

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摘要

Probabilistic Analytical Target Cascading (PATC) is a methodology for hierarchical multilevel optimization under uncertainty. In PATC, the statistical moments of the stochastic interrelated responses are matched between neighbouring levels to ensure the consistency of the solution. When the interrelated response is far from normal distribution, high order moments may need to be matched in the PATC formulation, which results in great computational difficulty. To overcome this disadvantage, a sequential PATC (SPATC) approach is proposed in this paper. SPATC firstly decouples the original probabilistic design problem into deterministic optimization problem and probabilistic analysis, and then hierarchically decomposes them into subproblems. The statistical information matching between neighbouring levels in the existing PATC framework is eliminated in SPATC. All in one probabilistic analysis and hierarchical probabilistic analysis are established to calculate the probabilistic characteristic of the interrelated responses and linking variables. Three examples are used to demonstrate the effectiveness and efficiency of the proposed SPATC approach. The results show that the SPATC approach is more efficient and accurate than PATC, especially for the multilevel design problem with non-normal interrelated responses.
机译:概率分析目标级联(PATC)是不确定性下进行分层多级优化的方法。在PATC中,随机相关响应的统计时刻在相邻级别之间匹配,以确保解决方案的一致性。当相关的响应远离正态分布时,在PATC公式中可能需要匹配高阶矩,这会导致很大的计算难度。为了克服这个缺点,本文提出了一种顺序式PATC(SPATC)方法。 SPATC首先将原始的概率设计问题分解为确定性优化问题和概率分析,然后将其分层分解为子问题。 SPATC中消除了现有PATC框架中相邻级别之间的统计信息匹配。建立了概率分析和分层概率分析中的所有内容,以计算相互关联的响应和链接变量的概率特征。使用三个示例来证明所建议的SPATC方法的有效性和效率。结果表明,SPATC方法比PATC更为有效和准确,特别是对于具有非正常相关响应的多级设计问题。

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