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Optimizing Large Scale Problems With Metaheuristics in a Reduced Space Mapped by Autoencoders—Application to the Wind-Hydro Coordination

机译:在自动编码器映射的缩小空间中利用元启发法优化大规模问题—在风水力协调中的应用

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摘要

This paper explores a technique denoted LASCA to solve large scale optimization problems with metaheuristics by reducing the search space dimension with autoassociative neural networks. The technique applies autoencoders as a reversible mapping between the original problem space and a reduced space. A metaheuristic then evolves in the latter, having its objective function assessed in the original space. The technique is illustrated with an application of an Evolutionary Particle Swarm Optimization (EPSO) algorithm to four benchmarking unconstrained optimization functions and to a wind-hydro constrained coordination problem. The new technique allows an improvement in the quality of the solutions attained.
机译:本文探索了一种称为LASCA的技术,通过使用自缔合神经网络减少搜索空间维,从而解决了具有元启发法的大规模优化问题。该技术将自动编码器用作原始问题空间和缩减空间之间的可逆映射。然后在后者中发展一种元启发法,并在原始空间中评估其目标功能。通过将进化粒子群优化(EPSO)算法应用于四个基准无约束优化函数以及风水约束协调问题,来说明该技术。新技术可以提高所获得解决方案的质量。

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