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Hardware-in-the-loop test of learning-based controllers for grid-supportive building heating operation

机译:基于学习的控制器的硬件循环试验,用于网格支持性建筑加热操作

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摘要

While MPC is the state-of-the-art approach for building heating control with proven cost savings and improvement in energy flexibility, in practice, buildings are operated by simple rules-based controllers which are not able to accomplish an energy efficient and flexible operation. This paper explores the suitability of deep neural networks for approximating optimal economic MPC strategies for this task. In particular, we develop a convolutional neural network controller and test it in a closed-loop simulation against MPC and an improved predictive rule-based controller. The learned controller is easy to implement and fast to process on standard building control hardware. The feasibility, performance and robustness of the learned controller is validated in a realistic hardware-in-the-loop test setup for the demand-responsive operation of a heat pump combined with a storage tank.
机译:虽然MPC是建筑加热控制的最先进的方法,但在实践中,在实践中,通过简单的规则的控制器运营建筑物的能量灵活性的提高,而无法完成节能灵活的操作。本文探讨了深度神经网络的适用性,以实现这项任务的最佳经济MPC策略。特别是,我们开发卷积神经网络控制器并在针对MPC的闭环模拟中测试它和基于改进的基于预测规则的控制器。学习的控制器易于实现和快速处理标准构建控制硬件。学习控制器的可行性,性能和鲁棒性在逼真的硬件内测试设置中验证了热泵的需求响应操作与储罐相结合。

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