综合智慧能源 ›› 2026, Vol. 48 ›› Issue (4): 19-26.doi: 10.3969/j.issn.2097-0706.2026.04.003

• 综合能源系统分析与评估 • 上一篇    下一篇

基于机器学习的一体式电制热储热装置能效测试方法

李克成, 金璐*(), 成岭, 钟鸣, 贾欣怡   

  1. 中国电力科学研究院有限公司北京 100192
  • 收稿日期:2024-05-23 修回日期:2024-08-01 出版日期:2024-09-29
  • 通讯作者: * 金璐(1991),女,工程师,硕士,从事综合能源利用与控制方面的研究,1163658813@qq.com
  • 作者简介:李克成(1988),男,工程师,硕士,从事综合能源利用方面的研究。
  • 基金资助:
    中国电科院创新基金项目(YD83-18-003)

Evaluation method for electric heating-heat storage integrated systems based on machine learning

LI Kecheng, JIN Lu*(), CHENG Ling, ZHONG Ming, JIA Xinyi   

  1. China Electric Power Research InstituteBeijing 100192, China
  • Received:2024-05-23 Revised:2024-08-01 Published:2024-09-29
  • Supported by:
    Innovation Fund Project of EPRI(YD83-18-003)

摘要:

“双碳”目标下,电供暖技术凭借其清洁性与灵活性实现了规模化发展,一体式电制热储热装置的准确检测与评价是高效利用该技术的关键,但瞬时状态不稳定以及供水温度和电功率周期性波动导致现有测试方法不适用于此类设备检测。提出了一种适用于一体式电制热储热装置的能效测评方法,制定了试验准备、预试验及试验检测3个阶段的检测方法及流程。基于试验检测阶段的监测数据,结合机器学习模型,实现对电制热装置全运行过程及全场景稳定状态的能效评价。研究结果表明,相比于国标规定的检测方法,该方法能够准确反映一体式电锅炉的能效水平,检测得到的多个稳定阶段效率测试结果准确性提高了5.74百分点,降低了电制热储热装置运行时瞬态不稳定及供水温度、电功率周期性波动对测试结果的不利影响,可用于其他电制热装置的检测与能效评价。

关键词: “双碳”目标, 电供暖, 一体式电制热储热装置, 机器学习, 能效评价

Abstract:

Under the dual carbon target, electric heating technology has achieved large-scale applications by virtue of its cleanliness and flexibility. Accurate detection and evaluation for the electric heating systems integrated heat storage device is the key to the efficient use of this technology. However, existing test methods are unsuitable for the detecting the systems due to instantaneous state instability and periodic fluctuations of water-supply temperature and electric power. An energy efficiency evaluation method suitable for electric heating-heat storage integrated systems is proposed, which is comprised of three processes: experimental preparation stage, pre-experimentation stage and experimental testing stage. Based on the monitoring data from the experimental testing stage, the energy efficiency evaluation executed on the electric heating device under whole-process and all-scenario steady states is realized by the machine learning model. The simulation results show that the proposed method can reflect the energy efficiency of the integrated system accurately, with an evaluation accuracy rate 5.74 percentage points higher than that obtained by the detection method specified in the national standard. And the proposed method can reduce the negative influence of transient instability and periodic fluctuations of water-supply temperature and electric power on the evaluation test for the integrated system, and can be applied to other electric heating devices for energy efficiency evaluation.

Key words: dual carbon target, electric heating, electric heating-heat storage integrated system, machine learning, energy efficiency evaluation

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