一种基于自适应精度仿真的模式搜索算法的收敛优化方法

M. Wetter, E. Polak
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引用次数: 68

摘要

热建筑模拟程序,如EnergyPlus,计算微分代数方程组解的数值近似。我们发现这些系统的精确解在建筑设计参数中通常是光滑的,但由于自适应求解器和有限的精度计算,数值近似通常是不连续的。如果将这种近似解与依赖于代价函数平滑度的优化算法结合使用,则需要计算高精度解,如果用于所有迭代,则可能会非常昂贵。针对这种情况,我们开发了一种自适应仿真精度控制算法,该算法可以与一系列无导数优化算法结合使用。本文给出了复合算法的主要组成部分,证明了所得到的复合算法构造了具有平稳积累点的序列,并通过数值实验证明了在早期迭代中使用粗近似可以显著减少计算时间。
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A convergent optimization method using pattern search algorithms with adaptive precision simulation
Thermal building simulation programs, such as EnergyPlus, compute numerical approximations to solutions of systems of differential algebraic equations. We show that the exact solutions of these systems are usually smooth in the building design parameters, but that the numerical approximations are usually discontinuous due to adaptive solvers and finite precision computations. If such approximate solutions are used in conjunction with optimization algorithms that depend on smoothness of the cost function, one needs to compute high precision solutions, which can be prohibitively expensive if used for all iterations. For such situations, we have developed an adaptive simulation–precision control algorithm that can be used in conjunction with a family of derivative free optimization algorithms. We present the main ingredients of the composite algorithms, we prove that the resulting composite algorithms construct sequences with stationary accumulation points, and we show by numerical experiments that using coarse approximations in the early iterations can significantly reduce computation time.
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