通过联合优化商业建筑的热响应和室内空气质量评估需求灵活性潜力

Andrew B. Klavekoske, Vincent J. Cushing, Gregor P. Henze
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引用次数: 0

摘要

大型商业建筑可以显示出需求的灵活性,从而减少建筑业主的电力能源支出和电网运行产生的碳排放,提供分布式能源资源,并提高可再生能源的普及率。按需控制通风(DCV)和建筑热质控制可以单独或联合提供这种灵活性。如果以每小时电价和碳排放率为基础,这些技术方案的性能和财务投资回报率都会得到显著提高。在本研究中,利用纽约市每小时电价、每小时 CO_2e 排放率和 2019 年夏季制冷季节的天气数据,基于这些动态驱动参数模拟了一栋建模但实际存在的大型办公楼。提出了建筑热质量和室内二氧化碳含量的联合优化方案。与基线运行和单独优化建筑热质量和室内二氧化碳含量相比,联合优化方案的节能和碳减排效果更佳。这些发现推动了实时联合控制系统的开发,该系统利用闭环模型预测控制(MPC)来优化利用两种需求来源的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of the Demand Flexibility Potential through Joint Optimization of Building Thermal Response and Indoor Air Quality in Commercial Buildings
Large commercial buildings may display demand flexibility, which reduces electric energy expenses for the building owner and carbon emissions from grid operations, provides distributed energy resources, and increases the penetration of renewable energy sources. Demand controlled ventilation (DCV) and building thermal mass control can individually and jointly provide such flexibility. The performance and financial payback of these technology options can be dramatically improved if based on hourly electric prices and carbon emissions rates. In this study, a modeled but actual large office building, simulated using New York City hourly electric prices, hourly CO_2e emissions rates, and weather data for the summer 2019 cooling season is based on these dynamic driving parameters. A joint optimization of a building's thermal mass and indoor CO2 content is presented. Superior energy savings and carbon emissions reductions are found for the joint optimization scenario when compared to both the baseline operation and individual optimization of building thermal mass and indoor CO2 content. These findings motivate the development of a real-time joint control system that utilizes closed-loop model predictive control (MPC) to optimally harness both sources of demand flexibility, a system which would require the future development of forecasting algorithms for external and control oriented system models.
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