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A Quadratic Exterior Penalty Function Based Probabilistic Analytical Target Cascading Method

机译:基于二次外部惩罚功能的概率分析目标级联方法

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Probabilistic Analytical Target Cascading (PATC) is developed for hierarchical multi-disciplinary design optimization under random uncertainty. In this method, to let all parts of the designed system work well together, coordination strategies should be used. Traditionally, consistency constraints (equality constraints) are formulated as inequality constraints by adding corresponding parameters which are considered as design variables, and the object is to minimize deviations from the propagated targets and thus achieve intersystem compatibility, because of the additional variables, it always takes a lot of time to find the results fulfill all the optimizations. In order to relax the consistency constraints without increasing the number of design variables, the Quadratic Exterior Penalty Function (QEPF) method is introduced into PATC, and the consistency constraints become a part of the object with a dynamic weighting coefficient. This proposed method QEPF-PATC is tested on a geometric programming problem. And the accuracy and efficiency are demonstrated by comparing QEPF-PATC results to those obtained by using Probabilistic All-In-One (PAIO) and PATC.
机译:概率分析目标级联(PATC)为下随机不确定层次多学科设计优化开发。在这种方法中,让所设计的系统工作的所有部分很好地协同,应采用协调策略。传统上,一致性约束(等式约束)通过添加了被认为是设计变量对应参数配制为不等式约束,并且该对象是因为附加的变量,从传播目标最小化的偏差,从而实现系统间的兼容性,总是需要很多的时间去寻找,结果符合所有的优化。为了放松一致性约束而不增加设计变量的数量,所述二次外观罚函数(QEPF)方法被引入PATC,并且一致性约束成为动态加权系数的对象的一部分。该提出的方法QEPF-PATC上的几何规划问题进行测试。和精度和效率通过比较QEPF-PATC结果通过使用概率的所有多功能一体机(PAIO)和PATC获得的那些证实。

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