微电网能量管理控制的在线学习方法*

Vittorio Casagrande, Martin Ferianc, Miguel L. Rodrigues, F. Boem
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引用次数: 0

摘要

我们提出了一种基于在线学习(OL)的新型模型预测控制(MPC)方案,用于微电网能源管理,其中控制优化嵌入为神经网络的最后一层。提出的MPC方案通过在优化问题中使用在线训练神经网络提供的预测来处理负载和可再生能源发电曲线以及电价的不确定性。为了适应可能发生的环境变化,基于连续接收的数据对神经网络进行在线训练。网络超参数是通过使用预训练数据集在控制器部署之前执行超参数优化来选择的。我们通过在真实微电网数据集上的大量实验证明了所提出的微电网能量管理方法的有效性。此外,我们还证明了该算法在不同微电网之间具有良好的迁移学习能力。
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An Online Learning Method for Microgrid Energy Management Control*
We propose a novel Model Predictive Control (MPC) scheme based on online-learning (OL) for microgrid energy management, where the control optimisation is embedded as the last layer of the neural network. The proposed MPC scheme deals with uncertainty on the load and renewable generation power profiles and on electricity prices, by employing the predictions provided by an online trained neural network in the optimisation problem. In order to adapt to possible changes in the environment, the neural network is online trained based on continuously received data. The network hyperparameters are selected by performing a hyperparameter optimisation before the deployment of the controller, using a pretraining dataset. We show the effectiveness of the proposed method for microgrid energy management through extensive experiments on real microgrid datasets. Moreover, we show that the proposed algorithm has good transfer learning (TL) capabilities among different microgrids.
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