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An augmented Lagrangian relaxation for analytical target cascading using the alternating direction method of multipliers

机译:使用乘子交替方向法的增强拉格朗日松弛法用于分析目标级联。

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Analytical target cascading is a method for design optimization of hierarchical, multilevel systems. A quadratic penalty relaxation of the system consistency constraints is used to ensure subproblem feasibility. A typical nested solution strategy consists of inner and outer loops. In the inner loop, the coupled subproblems are solved iteratively with fixed penalty weights. After convergence of the inner loop, the outer loop updates the penalty weights. The article presents an augmented Lagrangian relaxation that reduces the computational cost associated with ill-conditioning of subproblems in the inner loop. The alternating direction method of multipliers is used to update penalty parameters after a single inner loop iteration, so that subproblems need to be solved only once. Experiments with four examples show that computational costs are decreased by orders of magnitude ranging between 10 and 1000.
机译:分析目标级联是一种用于分层,多层系统设计优化的方法。系统一致性约束的二次惩罚松弛用于确保子问题的可行性。典型的嵌套解决方案策略由内部和外部循环组成。在内部循环中,耦合子问题以固定的惩罚权重迭代求解。内循环收敛后,外循环更新惩罚权重。本文提出了一种增强的拉格朗日松弛法,该方法降低了与内部循环中子问题的病状相关的计算成本。乘法器的交替方向方法用于在单个内循环迭代之后更新惩罚参数,因此子问题只需要解决一次。通过四个示例进行的实验表明,计算成本降低了10到1000个数量级。

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