基于供热管网拓扑重构的短期蓄热优化

高晓宇, 郭茂, 刘洋, 杨涛, 苑赛超, 王晋达

太阳能学报 ›› 2026, Vol. 47 ›› Issue (5) : 506-514.

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太阳能学报 ›› 2026, Vol. 47 ›› Issue (5) : 506-514. DOI: 10.19912/j.0254-0096.tynxb.2025-0037

基于供热管网拓扑重构的短期蓄热优化

  • 高晓宇1, 郭茂1, 刘洋1, 杨涛1, 苑赛超1, 王晋达2
作者信息 +

SHORT-TERM HEAT STORAGE OPTIMIZATION BASED ON TOPOLOGY RECONSTRUCTION OF HEATING NETWORK

  • Gao Xiaoyu1, Guo Mao1, Liu Yang1, Yang Tao1, Yuan Saichao1, Wang Jinda2
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摘要

该研究以最大化集中供热系统管网蓄热的综合经济收益为目标,建立针对管网拓扑重构方案的双层优化模型。案例优化结果表明,经管网拓扑重构后,回水管网中高温热媒总体积可达2217~4185m3,为总容积的34%~65%,大幅提高供热管网的蓄热能力。综合考虑蓄热收益和建设成本,案例最优旁通分支配置数量为9个,项目综合经济收益达268.66万元。

Abstract

This study aims to maximize the comprehensive economic benefits of heat storage in the pipe network of a central heating system, and establishes a bi-level optimization model for the pipe network topology reconstruction scheme. The case optimization results show that after the pipe network topology reconstruction, the total volume of high-temperature heat medium in the return water pipe network can reach 2217-4185 m³, accounting for 34%-65% of the total volume, which significantly improves the heat storage capacity of the heating pipe network. Considering both the heat storage benefits and construction costs comprehensively, the optimal number of bypass branch configurations for the case is 9, and the comprehensive economic benefits of the project reach 2.6866 million yuan.

关键词

区域供热 / 蓄热 / 成本效益分析 / 管网拓扑重构 / 优化模型 / 可再生能源

Key words

district heating / heat storage / cost benefit analysis / heating network topology reconstruction / optimization model / renewable energy

引用本文

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高晓宇, 郭茂, 刘洋, 杨涛, 苑赛超, 王晋达. 基于供热管网拓扑重构的短期蓄热优化[J]. 太阳能学报. 2026, 47(5): 506-514 https://doi.org/10.19912/j.0254-0096.tynxb.2025-0037
Gao Xiaoyu, Guo Mao, Liu Yang, Yang Tao, Yuan Saichao, Wang Jinda. SHORT-TERM HEAT STORAGE OPTIMIZATION BASED ON TOPOLOGY RECONSTRUCTION OF HEATING NETWORK[J]. Acta Energiae Solaris Sinica. 2026, 47(5): 506-514 https://doi.org/10.19912/j.0254-0096.tynxb.2025-0037
中图分类号: TU995.3   

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基金

国家自然科学基金(52208104); 河北省自然科学基金(E2024202065)

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