华电技术 ›› 2020, Vol. 42 ›› Issue (11): 21-33.

• 智慧供热 • 上一篇    下一篇

基于人工智能与热力系统融合的综合节能

  

  1. 1. 天津大学 机械工程学院,天津 300350;2. 格物智控(天津)能源科技有限公司,天津 300384
  • 出版日期:2020-11-25 发布日期:2020-12-07

Research on comprehensive energy-saving technology based on integration of artificial intelligence into thermal systems

  1. 1.College of Mechanical Engineering,Tianjin University,Tianjin 300350,China;2.Gewu(Tianjin)Intelligent Control Technology Company Limited,Tianjin 300384,China
  • Online:2020-11-25 Published:2020-12-07

摘要: 针对集中供热系统普遍存在的水力不平衡和过度供热造成能源浪费的现象,提出了一种集成管网分级与 智能控制的源网协同综合节能技术并介绍其示范应用。其主要特征为:基于人工智能与热力系统的融合,技术层 面考虑水电气(热源)热协同及软硬件协同,实践层面考虑分层、分级、分阶段实施及各种可控要素解耦,在系统中 基于长短时记忆(LSTM)深度神经网络预测热负荷,联合系统仿真模型建立和实际系统等价的孪生模型,以最佳室 内温度为供暖目标函数,训练得到系统的最优供热方案。该技术于 2019—2020 供暖季在天津某高校一能源站实现 了应用,对该能源站所属 28 个热力入口实现了一体化的智能管控,节能效果显著。相比上个供暖季,燃气用量减少 25.66%,电用量减少 22.87%;考虑供暖时长、气象及未管控入口等因素的影响,燃气节约率可达 31.07%。该示范应 用效果精确验证了初期综合节能 20%~30% 的理论分析结果,为实现基于仿真模型和理论计算的、尽可能时间尺度 和空间尺度小地实施分时分区分温精细管控节能 60%~70% 的目标奠定了基础。

关键词: 集中供热, 管网分级, 智能控制, 分时分区分温, 智慧供热, 人工智能, 源网协同

Abstract: To eliminate the energy waste caused by hydraulic imbalance and excessive heating in district heating systems,a source-network systematic energy saving technology integrating pipeline classification and intelligent control was proposed and applied in its demonstration project. The technology is based on the integration of artificial intelligence into thermal systems. Technically,the technology coordinates various heat sources(water,electricity and natural gas)as well as the software and hardware.Practically,application of this technology should be made by hierarchy,grades and stages and take various operable decoupling factors into consideration. Applying LSTM deep neural network in the heat load prediction, combining the twin model equivalent to the actual system with the simulation model,the optimal heating scheme for the system is obtained by taking the optimal indoor temperature as the objective function. In the heating season of 2019—2020, the technology being applied in a power station of a university in Tianjin,has realized intelligent and integrated regulation on its 28 thermal inlets ,and achieved remarkable energy-saving effect.Compared to the last heating season,the gas and electricity consumptions in the heating season of 2019—2020 reduced by 25.66% and 22.87%,respectively.Considering the influence of heating time,weather and uncontrolled thermal inlets,the gas could be saved by 31.07%.Proven by the performance of the demonstration project,the comprehensive energy-saving rate is 20%—30% at the initial stage theocratically.The project laid a foundation for the targeted 60%—70% energy saving based on the simulation model and theoretical calculation,by taking precise control upon different time,zone and temperature with a minimal time and space scale.

Key words: district heating;network grading;intelligent control;division by different time, zone and temperature; intelligent heating;artificial intelligence;collaboration of source and network