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Particle swarm metaheuristics for robust optimisation with implementation uncertainty

机译:粒子群成形培育机构,实现不确定性的鲁棒优化

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摘要

We consider global non-convex optimisation problems under uncertainty. In this setting, it is not possible to implement a desired solution exactly. Instead, any other solution within some distance to the intended solution may be implemented. The aim is to find a robust solution, i.e., one where the worst possible solution nearby still performs as well as possible.Problems of this type exhibit another maximisation layer to find the worst case solution within the minimisation level of finding a robust solution, which makes them harder to solve than classic global optimisation problems. So far, only few methods have been provided that can be applied to black-box problems with implementation uncertainty. We improve upon existing techniques by introducing a novel particle swarm based framework which adapts elements of previous methods, combining them with new features in order to generate a more effective approach. In computational experiments, we find that our new method outperforms state of the art comparator heuristics in almost 80% of cases. (C) 2020 The Author(s). Published by Elsevier Ltd.
机译:我们在不确定性下考虑全球非凸优化问题。在该设置中,无法精确地实现所需的解决方案。相反,可以实现与预期解决方案的一定距离内的任何其他解决方案。目的是找到一种强大的解决方案,即附近最糟糕的解决方案仍然表现的最糟糕的解决方案。这种类型的问题表现出另一个最大化层,以找到最小化的查找稳健解决方案的最小案例解决方案比经典的全局优化问题更难解决。到目前为止,已经提供了很少的方法,可以应用于具有实施不确定性的黑匣子问题。我们通过引入基于基于粒子的基于群体的框架来改进现有技术,该框架适应先前方法的元素,将它们与新功能组合以产生更有效的方法。在计算实验中,我们发现我们的新方法在近80%的情况下占艺术比较器启发式的状态。 (c)2020提交人。 elsevier有限公司出版

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