网络物理能源系统的数据驱动建模、控制和工具

Madhur Behl, Achin Jain, R. Mangharam
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引用次数: 27

摘要

随着电网波动性的不断增加,需求响应(DR)变得越来越重要。目前的DR方法要么是完全手动的,要么是基于第一原理的模型,这些模型的构建成本和时间都非常高。研究了大型建筑数据驱动的容灾问题,包括预测需求响应基线、评估固定容灾策略和综合容灾控制行动。我们提出了一种基于模型的回归树控制算法(mbCRT),使我们能够对大型建筑的DR策略综合进行闭环控制。在大型DoE商业参考建筑中,我们的数据驱动控制综合算法比基于规则的DR高出17%,减少了380千瓦的电力消耗,节省了超过45,000美元。我们的方法已经集成到一个名为DR-Advisor的开源工具中,DR-Advisor作为建筑物设施管理人员的推荐系统,提供适当的控制行动,以满足所需的负荷削减,同时保持运营并最大化经济回报。DR-Advisor对宾夕法尼亚大学校园内的8座建筑的预测准确率达到了92.8%至98.9%。我们将DR-Advisor与其他数据驱动的方法进行比较,在ASHRAE的能源预测基准数据集上排名第二。
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Data-Driven Modeling, Control and Tools for Cyber-Physical Energy Systems
Demand response (DR) is becoming important as the volatility on the grid continues to increase. Current DR approaches are either completely manual or involve deriving first principles based models which are extremely cost and time prohibitive to build. We consider the problem of data-driven DR for large buildings which involves predicting the demand response baseline, evaluating fixed DR strategies and synthesizing DR control actions. We provide a model based control with regression trees algorithm (mbCRT), which allows us to perform closed-loop control for DR strategy synthesis for large buildings. Our data-driven control synthesis algorithm outperforms rule- based DR by 17% for a large DoE commercial reference building and leads to a curtailment of 380 kW and over $45,000 in savings. Our methods have been integrated into an open source tool called DR-Advisor, which acts as a recommender system for the building's facilities manager and provides suitable control actions to meet the desired load curtailment while maintaining operations and maximizing the economic reward. DR-Advisor achieves 92.8% to 98.9% prediction accuracy for 8 buildings on Penn's campus. We compare DR-Advisor with other data driven methods and rank 2nd on ASHRAE's benchmarking data-set for energy prediction.
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ICCPS '21: ACM/IEEE 12th International Conference on Cyber-Physical Systems, Nashville, Tennessee, USA, May 19-21, 2021 Demo Abstract: SURE: An Experimentation and Evaluation Testbed for CPS Security and Resilience Poster Abstract: Thermal Side-Channel Forensics in Additive Manufacturing Systems Exploiting Wireless Channel Randomness to Generate Keys for Automotive Cyber-Physical System Security WiP Abstract: Platform for Designing and Managing Resilient and Extensible CPS
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