论文标题
建筑物中基于深度学习的,多时间的负载预测:从研究到部署的机会和挑战
Deep-Learning-Based, Multi-Timescale Load Forecasting in Buildings: Opportunities and Challenges from Research to Deployment
论文作者
论文摘要
随着分布式能源(DERS)的渗透率的增长,建筑物和校园的电力量预测变得越来越重要。有效的操作和调度DER需要对未来能源消耗进行合理准确的预测,以便进行近实时优化的现场生成和存储资产的调度。传统上,电力公司对跨越大地理区域的负载袋进行了负载预测,因此,建筑物和校园运营商的预测并不是常见的做法。考虑到网格相互作用有效建筑物域中的研究和原型趋势的增长,简单算法预测准确性以外的特征对于确定智能建筑算法的真正实用性很重要。其他特征包括部署体系结构的整体设计以及预测系统的运营效率。在这项工作中,我们提出了一个基于深度学习的负载预测系统,该系统将在未来以1小时的间隔预测建筑物的负载。我们还讨论了与此类系统的实时部署以及在国家可再生能源实验室智能校园计划中开发的功能齐全的预测系统相关的挑战。
Electricity load forecasting for buildings and campuses is becoming increasingly important as the penetration of distributed energy resources (DERs) grows. Efficient operation and dispatch of DERs require reasonably accurate predictions of future energy consumption in order to conduct near-real-time optimized dispatch of on-site generation and storage assets. Electric utilities have traditionally performed load forecasting for load pockets spanning large geographic areas, and therefore forecasting has not been a common practice by buildings and campus operators. Given the growing trends of research and prototyping in the grid-interactive efficient buildings domain, characteristics beyond simple algorithm forecast accuracy are important in determining true utility of the algorithm for smart buildings. Other characteristics include the overall design of the deployed architecture and the operational efficiency of the forecasting system. In this work, we present a deep-learning-based load forecasting system that predicts the building load at 1-hour intervals for 18 hours in the future. We also discuss challenges associated with the real-time deployment of such systems as well as the research opportunities presented by a fully functional forecasting system that has been developed within the National Renewable Energy Laboratory Intelligent Campus program.