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A hybrid self-adjusted mean value method for reliability-based design optimization using sufficient descent condition

机译:充分下降条件的基于可靠性的优化设计的混合自调整均值方法

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Due to the efficiency and simplicity, advanced mean value (AMV) method is widely used to evaluate the probabilistic constraints in reliability-based design optimization (RBDO) problems. However, it may produce unstable results as periodic and chaos solutions for highly nonlinear performance functions. In this paper, the AMV is modified based on a self-adaptive step size, named as the self-adjusted mean value (SMV) method, where the step size for reliability analysis is adjusted based on a power function dynamically. Then, a hybrid self-adjusted mean value (HSMV) method is developed to enhance the robustness and efficiency of iterative scheme in the reliability loop, where the AMV is combined with the SMV on the basis of sufficient descent condition. Finally, the proposed methods (i.e. SMV and HSMV) are compared with other existing performance measure approaches through several nonlinear mathematical/structural examples. Results show that the SMV and HSMV are more efficient with enhanced robustness for both convex and concave performance functions.
机译:由于效率和简便性,高级均值(AMV)方法被广泛用于评估基于可靠性的设计优化(RBDO)问题中的概率约束。但是,作为高度非线性性能函数的周期解和混沌解,它可能产生不稳定的结果。本文基于自适应步长大小对AMV进行了修改,称为自调整平均值(SMV)方法,其中基于幂函数动态调整用于可靠性分析的步长。然后,开发了一种混合自调整平均值(HSMV)方法,以提高可靠性循环中迭代方案的鲁棒性和效率,其中在充分下降的情况下,将AMV与SMV组合在一起。最后,通过几个非线性数学/结构示例,将提出的方法(即SMV和HSMV)与其他现有的性能度量方法进行了比较。结果表明,SMV和HSMV对于凸和凹性能函数都具有更高的鲁棒性,效率更高。

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