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A globally convergent sequential convex programming using an enhanced two-point diagonal quadratic approximation for structural optimization

机译:使用增强的两点对角线二次逼近的全局收敛顺序凸规划,用于结构优化

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摘要

In this study, we propose a sequential convex programming (SCP) method that uses an enhanced twopoint diagonal quadratic approximation (eTDQA) to generate diagonal Hessian terms of approximate functions. In addition, we use nonlinear programming (NLP) filtering, conservatism, and trust region reduction to enforce global convergence. By using the diagonal Hessian terms of a highly accurate two-point approximation, eTDQA, the efficiency of SCP can be improved. Moreover, by using an appropriate procedure using NLP filtering, conservatism, and trust region reduction, the convergence can be improved without worsening the efficiency. To investigate the performance of the proposed algorithm, several benchmark numerical examples and a structural topology optimization problem are solved. Numerical tests show that the proposed algorithm is generally more efficient than competing algorithms. In particular, in the case of the topology optimization problem of minimizing compliance subject to a volume constraint with a penalization parameter of three, the proposed algorithm is found to converge well to the optimum solution while the other algorithms tested do not converge in the maximum number of iterations specified.
机译:在这项研究中,我们提出了一种顺序凸规划(SCP)方法,该方法使用增强的两点对角二次逼近(eTDQA)来生成近似函数的对角黑森州项。另外,我们使用非线性规划(NLP)过滤,保守性和信任区缩减来强制进行全局收敛。通过使用高度精确的两点近似eTDQA的对角Hessian项,可以提高SCP的效率。此外,通过使用适当的过程使用NLP过滤,保守性和信任区缩减,可以在不降低效率的情况下提高收敛性。为了研究该算法的性能,解决了几个基准数值示例和一个结构拓扑优化问题。数值测试表明,所提出的算法通常比竞争算法更有效。尤其是在拓扑优化问题中,在体积约束条件下将惩罚参数设为3时,将合规性降至最低,发现该算法可以很好地收敛于最优解,而其他测试算法却没有收敛于最大值指定的迭代次数。

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