A Hierarchical HVAC Control Scheme for Energy-aware Smart Building Automation

R. L. Jana, Soumyajit Dey, P. Dasgupta
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引用次数: 10

Abstract

Heating ventilation and air conditioning (HVAC) systems usually account for the highest percentage of overall energy usage in large-sized smart building infrastructures. The performance of HVAC control systems for large buildings strongly depend on the outside environment, building architecture, and (thermal) zone usage pattern of the building. In large buildings, HVAC system with multiple air handling units (AHUs) is required to fulfill the cooling/heating requirements. In the present work, we propose an energy-aware building resource allocation and economic model predictive control (eMPC) framework for multi-AHU-based HVAC system. The energy consumption of a multi-AHU-based HVAC system significantly depends on how long the AHUs are running, which again is governed by the zone usage demands. Our approach comprises a two-step hierarchical technique where we first minimize the running time of AHUs by suitably allocating building resources (thermal zones) to usage demands for zones. Next, we formulate a finite receding horizon control problem for trading off energy consumption against thermal comfort during HVAC operations. Given a high-level building specification and usage demand, our computer-aided design framework generates building thermal models, allocates usage demands, formulates the control scheme, and simulates it to generate power consumption statistics for the given building with usage demands. We believe that the proposed framework will help in early analysis during the design phase of energy-aware building architecture and HVAC control. The framework can also be useful from a building operator point of view for energy-aware HVAC control as well as for satisfying smart grid demand-response events by HVAC system peak power reduction through automated control actions.
节能智能楼宇自动化的层次化HVAC控制方案
在大型智能建筑基础设施中,采暖通风和空调(HVAC)系统通常占总能源使用量的比例最高。大型建筑的暖通空调控制系统的性能在很大程度上取决于建筑的外部环境、建筑结构和(热)区使用模式。在大型建筑中,需要配备多台空气处理机组(ahu)的暖通空调系统来满足供冷/供暖需求。在本工作中,我们提出了一个能源意识的建筑资源分配和经济模型预测控制(eMPC)框架,用于基于多ahu的HVAC系统。基于多个ahu的HVAC系统的能耗很大程度上取决于ahu运行的时间长短,这也取决于区域使用需求。我们的方法包括两步分层技术,其中我们首先通过适当地分配建筑资源(热区)以满足区域的使用需求来最小化ahu的运行时间。其次,我们制定了一个有限后退水平控制问题,以权衡暖通空调运行期间的能源消耗和热舒适。我们的计算机辅助设计框架根据高层次的建筑规格和使用需求,生成建筑热模型,分配使用需求,制定控制方案,并对其进行模拟,以生成具有使用需求的给定建筑的功耗统计数据。我们相信所提出的框架将有助于节能建筑和暖通空调控制设计阶段的早期分析。从建筑操作员的角度来看,该框架也可以用于能源感知HVAC控制,以及通过自动控制动作通过HVAC系统峰值功率降低来满足智能电网需求响应事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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