论文标题
从基于模型到无模型:学习需求响应的学习构建控制
From Model-Based to Model-Free: Learning Building Control for Demand Response
论文作者
论文摘要
网格相互作用的建筑物控制是减少碳排放,提高能源效率和支持电力电网的具有挑战性且重要的问题。目前,研究人员和从业人员面临着从无模型(纯粹数据驱动)到基于模型(直接合并物理知识)到结合数据和模型的混合方法的控制策略的选择。在这项工作中,我们确定了跨越该方法谱系的最先进方法,并在三个需求响应计划的背景下评估了它们在多区域构建HVAC控制方面的性能。在这种情况下,我们证明,只要满足某些要求,混合方法就纯粹的无模型和基于模型的方法提供了许多好处。特别是,只要测试案例属于培训数据的分布,混合控制器是相对样本的有效效率,快速在线和高精度。像所有数据驱动的方法一样,当应用于样本外场景时,混合控制器仍会遇到概括错误。总结了控制策略的关键要点,并开源开发的软件框架。
Grid-interactive building control is a challenging and important problem for reducing carbon emissions, increasing energy efficiency, and supporting the electric power grid. Currently researchers and practitioners are confronted with a choice of control strategies ranging from model-free (purely data-driven) to model-based (directly incorporating physical knowledge) to hybrid methods that combine data and models. In this work, we identify state-of-the-art methods that span this methodological spectrum and evaluate their performance for multi-zone building HVAC control in the context of three demand response programs. We demonstrate, in this context, that hybrid methods offer many benefits over both purely model-free and model-based methods as long as certain requirements are met. In particular, hybrid controllers are relatively sample efficient, fast online, and high accuracy so long as the test case falls within the distribution of training data. Like all data-driven methods, hybrid controllers are still subject to generalization errors when applied to out-of-sample scenarios. Key takeaways for control strategies are summarized and the developed software framework is open-sourced.