西南石油大学学报(自然科学版) ›› 2026, Vol. 48 ›› Issue (2): 107-124.DOI: 10.11885/j.issn.1674-5086.2024.04.01.04

• 石油与天然气工程 • 上一篇    下一篇

不同时间尺度的燃气负荷预测模型研究综述

赵春兰1,2, 郑雯娟1, 岑康3, 贺可函1, 王汉遥1   

  1. 1. 西南石油大学理学院, 四川 成都 610500;
    2. 能源安全与低碳发展重点实验室, 四川 成都 610500;
    3. 西南石油大学土木工程与测绘学院, 四川 成都 610500
  • 收稿日期:2024-04-01 发布日期:2026-04-30
  • 通讯作者: 赵春兰,E-mail:308303451@qq.com
  • 作者简介:赵春兰,1975年生,女,汉族,四川遂宁人,教授,主要从事统计分析、风险评价等研究工作。E-mail:308303451@qq.com
    郑雯娟,1999年生,女,汉族,四川成都人,硕士,主要从事数据分析与预测方面的研究。E-mail:1481517792@qq.com
    岑康,1975年生,男,汉族,四川犍为人,教授,主要从事油气管道完整性评价技术、燃气负荷预测等方面的教学和科研工作。E-mail:cenkangxt@126.com
    贺可函,1999年生,男,汉族,湖南邵阳人,硕士,主要从事时间序列无监督异常检测方面的研究。E-mail:896801269@qq.com
    王汉遥,1998年生,男,汉族,安徽宿州人,硕士,主要从事数据分析与预测方面的研究。E-mail:1450048434@qq.com

A Review of Researches on Gas Load Forecasting Models Across Different Time Scales

ZHAO Chunlan1,2, ZHENG Wenjuan1, CEN Kang3, HE Kehan1, WANG Hanyao1   

  1. 1. School of Science, Southwest Petroleum University, Chengdu, Sichuan 610500, China;
    2. Key Laboratory of Energy Security and Low-carbon Development, Chengdu, Sichuan 610500, China;
    3. School of Civil Engineering and Architecture, Southwest Petroleum University, Chengdu, Sichuan 610500, China
  • Received:2024-04-01 Published:2026-04-30

摘要: 燃气负荷的合理、准确预测对于促进天然气供需动态平衡有着重要的现实意义。随着人工智能技术的进步,燃气负荷预测算法也在不断发展。首先,根据预测时间长短将预测分为短期预测、中短期预测和中长期预测,从算法理论角度详细阐述了应用于短期预测的极端梯度提升树(XGBoost)等6种方法、中短期预测的长短期记忆神经网络(LSTM)等两种方法以及中长期预测的Prophet等两种方法,并总结现有的燃气负荷预测算法的优缺点与适用性;其次,利用实测数据进行仿真测试,共选用12种模型,从实验数据集、数据预处理、外推预测、参数优化和模型评估等多个维度,进行不同时期的预测,并对各算法进行对比分析和全面总结;最后,针对实际问题,对未来燃气负荷预测研究方向进行了展望,为未来燃气负荷预测算法在天然气调度管理领域的深入研究提供参考。

关键词: 燃气负荷预测, 短期预测, 中短期预测, 中长期预测, 机器学习, 深度学习, 综述

Abstract: Accurate prediction of gas load holds significant practical value for maintaining the dynamic balance between gas supply and demand. With advancements in artificial intelligence technology, gas load forecasting algorithms have undergone substantial development. This study first categorizes forecasting periods into three distinct phases: short-term (ST), medium-toshort-term (MST), and medium-to-long-term (MLT). From an algorithmic perspective, we systematically analyze six representative methods including eXtreme Gradient Boosting (XGBoost) for ST forecasting, two approaches such as Long Short-Term Memory (LSTM) networks for MST forecasting, and two techniques including Prophet for MLT forecasting, and evaluate their advantages, limitations, and application scenarios. Through empirical validation using operational data, we conduct multidimensional comparative analysis of 12 selected models. Our experimental framework encompasses critical aspects including dataset construction, data preprocessing, extrapolative prediction, parameter optimization, and model evaluation across different temporal scales. Finally, we propose forward-looking perspectives on future research directions in gas load forecasting, particularly focusing on practical applications in natural gas dispatch management. This comprehensive investigation provides valuable references for advancing algorithmic research in gas load prediction and its implementation in smart energy management systems.

Key words: gas load forecasting, short-term forecasting, medium-to-short-term forecasting, medium-to-long-term forecasting, machine learning, deep learning, review

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