论文标题
数据驱动的预测控制用于解锁建筑能源灵活性:评论
Data-driven Predictive Control for Unlocking Building Energy Flexibility: A Review
论文作者
论文摘要
由于可变可再生能源的渗透量不断增加,电网管理供需在电网中变得越来越具有挑战性。作为重要的最终用途消费者以及通过更好的网格整合,建筑物有望在未来的智能电网中发挥不断的作用。预测控制允许建筑物从建筑物被动热量中更好地利用可用的能源灵活性。但是,由于建筑物库存的异质性质,开发了具有计算障碍的以控制为导向的模型,该模型充分代表了单个建筑物的复杂和非线性热动力学,因此证明是一个主要障碍。数据驱动的预测控制,再加上“物联网”,具有可扩展和可转让方法的希望,并以数据驱动的模型取代了基于传统物理的模型。这篇评论研究了使用数据驱动的预测控制对需求侧管理应用程序的最新工作,特别关注模型开发和控制集成的联系,迄今为止,这是迄今为止尚未解决的。研究的进一步主题包括利用被动热质量和特征选择问题的实际要求。概述了当前的研究差距,并建议未来的研究途径来确定建筑物网格整合的最有希望的数据驱动的预测控制技术。
Managing supply and demand in the electricity grid is becoming more challenging due to the increasing penetration of variable renewable energy sources. As significant end-use consumers, and through better grid integration, buildings are expected to play an expanding role in the future smart grid. Predictive control allows buildings to better harness available energy flexibility from the building passive thermal mass. However, due to the heterogeneous nature of the building stock, developing computationally tractable control-oriented models, which adequately represent the complex and nonlinear thermal-dynamics of individual buildings, is proving to be a major hurdle. Data-driven predictive control, coupled with the "Internet of Things", holds the promise for a scalable and transferrable approach,with data-driven models replacing traditional physics-based models. This review examines recent work utilising data-driven predictive control for demand side management application with a special focus on the nexus of model development and control integration, which to date, previous reviews have not addressed. Further topics examined include the practical requirements for harnessing passive thermal mass and the issue of feature selection. Current research gaps are outlined and future research pathways are suggested to identify the most promising data-driven predictive control techniques for grid integration of buildings.