智能建筑空调负荷能效优化管理策略

Rui Fan, Yong Li, Yijia Cao, Wei Xie, Yi Tan, Ye Cai
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引用次数: 6

摘要

随着智能电网技术的发展,需求响应技术的发展将在很大程度上提高电力系统的安全性、稳定性和经济性。空调负荷作为一种温控负荷,是一种典型的可用于需求响应的负荷。本文提出了一种适应季节温度变化,提高智能建筑能效的空调负荷优化管理策略。首先,我们将控制方式分为夏季和冬季两部分,以实现负荷的移峰和平滑负荷曲线。其次,将控制过程块嵌入到终端控制平台中;最后,开发了一个能效优化管理实验系统,验证了所提出的负荷调度策略的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimization management strategy for energy efficiency of air conditioning loads in smart building
With the technological development of the smart grid, the demand response technology will be developed to enhance the security, stability and economy of power system to a great extent. The air conditioning load, as a kind of temperature controlled load, is a typical load that can be used for demand response. In this paper, an optimization management strategy of the air conditioning load is proposed, which can adapt to the seasonal temperature changes and increase the energy efficiency of smart buildings. First, we divided the control mode into two parts for summer and winter respectively, aiming at the peak load shifting and smooth the load curve. Secondly, the controlling process block is embed into the terminal control platform; Finally, an experimental system of energy efficiency optimization management has been developed as shown in the demonstration project, which indicates the feasibility of proposed strategy for load scheduling.
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