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Surrogate-Assisted Optimization for Multi-stage Optimal Scheduling of Virtual Power Plants

机译:虚拟电厂多阶段最优调度的代理辅助优化

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This paper presents a comparison between two surrogate-assisted optimization methods dealing with two-stage stochastic programming. The Efficient Global Optimization (EGO) framework is challenging a method coupling Genetic Algorithm (GA) and offline-learnt kriging model for the lower stage optimization. The objective is to prove the good behavior of bayesian optimization (and in particular EGO) applied to a real-world two-stage problem with strong dependencies between the stages. The problem consists in determining the optimal strategy of an electricity market player participating in reserve (first stage) as well as day-ahead energy and real-time markets (second stage). The decisions optimized at the first stage induce constraints on the second stage so that both stages can not be dissociated. One additional difficulty is the stochastic aspect due to uncertainties of several parameters (e.g. renewable energy-based generation) that requires more computational power to be handled. Surrogate models are introduced to deal with that additional computational burden. Experiments show that the EGO-based approach gives better results than GA with offline kriging model using smaller budget.
机译:本文对两种处理两阶段随机规划的代理辅助优化方法进行了比较。高效全局优化(EGO)框架正在挑战一种将遗传算法(GA)和离线学习克里金模型相结合的方法,以进行较低阶段的优化。目的是证明贝叶斯优化(尤其是EGO)的良好行为适用于两个阶段之间具有高度依赖性的现实世界两阶段问题。问题在于确定电力市场参与者参与储备(第一阶段)以及日前的能源和实时市场(第二阶段)的最佳策略。在第一阶段优化的决策在第二阶段引入了约束,因此两个阶段都无法分离。另一个困难是由于某些参数(例如,基于可再生能源的发电)的不确定性而导致的随机方面,这需要处理更多的计算能力。引入了代理模型来处理该额外的计算负担。实验表明,基于EGO的方法比采用离线克里金模型且预算更小的GA效果更好。

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