A hybrid deep learning framework for predicting daily natural gas consumption

被引:28
作者
Du, Jian [1 ]
Zheng, Jianqin [1 ]
Liang, Yongtu [1 ]
Lu, Xinyi [1 ]
Klemes, Jiri Jaromir [2 ]
Varbanov, Petar Sabev [2 ]
Shahzad, Khurram [3 ]
Rashid, Muhammad Imtiaz [3 ]
Ali, Arshid Mahmood [4 ]
Liao, Qi [1 ]
Wang, Bohong [5 ]
机构
[1] China Univ Petr, Natl Engn Lab Pipeline Safety, MOE Key Lab Petr Engn, Beijing Key Lab Urban Oil & Gas Distribut Technol, Fuxue Rd 18, Beijing 102249, Peoples R China
[2] Brno Univ Technol VUT BRNO, Fac Mech Engn, NETME Ctr, Sustainable Proc Integrat Lab SPIL, Tech 2896-2, Brno 61669, Czech Republic
[3] King Abdulaziz Univ, Ctr Excellence Environm Studies, Jeddah 21589, Saudi Arabia
[4] King Abdulaziz Univ, Fac Engn, Dept Chem & Mat Engn, Jeddah, Saudi Arabia
[5] Zhejiang Ocean Univ, Sch Petrochem Engn & Environm, Natl Local Joint Engn Lab Harbour Oil & Gas Stora, Zhejiang Key Lab Petrochem Environm Pollut Contro, 1 Haida South Rd, Zhoushan 316022, Saudi Arabia
关键词
Natural gas; Daily consumption prediction; Encoding time series; Deep learning; Hybrid framework; SUPPORT VECTOR REGRESSION; MODEL; DEMAND; OPTIMIZATION; ALGORITHM; LOAD;
D O I
10.1016/j.energy.2022.124689
中图分类号
O414.1 [热力学];
学科分类号
摘要
Conventional time-series prediction methods for natural gas consumption mainly focus on capturing the temporal feature, neglecting static and dynamic information extraction. The accurate prediction of natural gas consumption possesses of paramount significance in the normal operation of the national economy. This paper proposes a novel method that resolves the deficiency of conventional time series prediction to address this demand via designing a hybrid deep learning framework to extract comprehensive information from gas consumption. The proposed model captures static and dynamic information via encoding gas consumption as matrices and extracts long-term dependency patterns from time series consumption. Subsequently, a customised network is proposed for information fusion. Cases from several different regions in China are studied as examples, and the proposed model is compared with other advanced approaches (such as long short-term memory (LSTM), convolution neural network long short-term memory (CNN-LSTM)). The mean absolute percentage error is reduced by a range of 0.235%-10.303% compared with other models. According to the comparison results, the proposed model provides an efficient time series prediction functionality. It is also proved that, after effectively extracting comprehensive information and integrating long-term information with static and dynamic information, the accuracy and efficiency of natural gas consumption prediction are greatly promoted. A sensitivity analysis of different modules combination is conducted to emphasise the significance of each module in the hybrid framework. The results indicate that the method coupling all these modules leads to signif-icant improvement in prediction accuracy and robustness. (c) 2022 Elsevier Ltd. All rights reserved.
引用
收藏
页数:24
相关论文
共 50 条
[41]   Predicting shear wave velocity from conventional well logs with deep and hybrid machine learning algorithms [J].
Rajabi, Meysam ;
Hazbeh, Omid ;
Davoodi, Shadfar ;
Wood, David A. ;
Tehrani, Pezhman Soltani ;
Ghorbani, Hamzeh ;
Mehrad, Mohammad ;
Mohamadian, Nima ;
Rukavishnikov, Valeriy S. ;
Radwan, Ahmed E. .
JOURNAL OF PETROLEUM EXPLORATION AND PRODUCTION TECHNOLOGY, 2023, 13 (01) :19-42
[42]   Nature-inspired hybrid techniques of IWO, DA, ES, GA, and ICA, validated through a k-fold validation process predicting monthly natural gas consumption [J].
Qiao, Weibiao ;
Moayedi, Hossein ;
Foong, Loke Kok .
ENERGY AND BUILDINGS, 2020, 217
[43]   A hybrid deep learning model in predicting weather temperature [J].
Yasavoli, Behshid ;
Habibirad, Arezou ;
Javanshiri, Zohreh .
EARTH SCIENCE INFORMATICS, 2025, 18 (03)
[44]   Predicting Lumbar Spondylolisthesis: A Hybrid Deep Learning Approach [J].
Saravagi, Deepika ;
Agrawal, Shweta ;
Saravagi, Manisha ;
Jain, Sanjiv K. ;
Sharma, Bhisham ;
Mehbodniya, Abolfazl ;
Chowdhury, Subrata ;
Webber, Julian L. .
INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2023, 37 (02) :2133-2151
[45]   A novel optimization framework for natural gas transportation pipeline networks based on deep reinforcement learning [J].
Liu, Zemin Eitan ;
Long, Wennan ;
Chen, Zhenlin ;
Littlefield, James ;
Jing, Liang ;
Ren, Bo ;
El-Houjeiri, Hassan M. ;
Qahtani, Amjaad S. ;
Jabbar, Muhammad Y. ;
Masnadi, Mohammad S. .
ENERGY AND AI, 2024, 18
[46]   Predicting the stress-strain behavior of gravels with a hybrid deep learning approach [J].
Li, Duo ;
Liu, Jingmao ;
Zou, Degao ;
Xu, Kaiyuan ;
Ning, Fanwei ;
Cui, Gengyao .
TRANSPORTATION GEOTECHNICS, 2025, 50
[47]   Predicting volatility in natural gas under a cloud of uncertainties [J].
Chen, Juan ;
Xiao, Zuoping ;
Bai, Jiancheng ;
Guo, Hongling .
RESOURCES POLICY, 2023, 82
[48]   A hybrid deep learning framework for daily living human activity recognition with cluster-based video summarization [J].
Hossain S. ;
Deb K. ;
Sakib S. ;
Sarker I.H. .
Multimedia Tools and Applications, 2025, 84 (9) :6219-6272
[49]   A Hybrid Deep Learning-Based (HYDRA) Framework for Multifault Diagnosis Using Sparse MDT Reports [J].
Riaz, Muhammad Sajid ;
Qureshi, Haneya Naeem ;
Masood, Usama ;
Rizwan, Ali ;
Abu-Dayya, Adnan ;
Imran, Ali .
IEEE ACCESS, 2022, 10 :67140-67151
[50]   Decoupling and predicting natural gas deviation factor using machine learning methods [J].
Geng, Shaoyang ;
Zhai, Shuo ;
Ye, Jianwen ;
Gao, Yajie ;
Luo, Hao ;
Li, Chengyong ;
Liu, Xianshan ;
Liu, Shudong .
SCIENTIFIC REPORTS, 2024, 14 (01)