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JACIII Vol.29 No.3 pp. 614-622
doi: 10.20965/jaciii.2025.p0614
(2025)

Research Paper:

Feasibility Analysis of Optimization Models for Natural Gas Distribution Networks Using Machine Learning

Junhao Liu, Xiaoyong Gao, and Xiaozheng Chen

China University of Petroleum (Beijing)
No.18 Fuxue Road, Changping District, Beijing 102249, China

Corresponding author

Received:
December 4, 2024
Accepted:
February 28, 2025
Published:
May 20, 2025
Keywords:
natural gas distribution, feasibility analysis, machine learning
Abstract

As natural gas pipeline networks expand, the complexity of pipeline scheduling models increases, making feasibility analysis increasingly difficult. This study focuses on the feasibility analysis of optimization models for natural gas distribution network scheduling, considering it as a classification problem. Models grounded in traditional neural networks, parallel branch neural networks, and graph neural networks are developed and assessed. Two distinct scales of natural gas distribution networks are explored by collecting a limited dataset of sample cases to train and validate the proposed feasibility analysis models through empirical case studies. The results demonstrate that the parallel branch neural network exhibits superior predictive performance. In addition, this study introduces an innovative methodology for traceability diagnosis of infeasible cases, offering a practical framework for engineering applications.

Feasibility analysis of gas networks

Feasibility analysis of gas networks

Cite this article as:
J. Liu, X. Gao, and X. Chen, “Feasibility Analysis of Optimization Models for Natural Gas Distribution Networks Using Machine Learning,” J. Adv. Comput. Intell. Intell. Inform., Vol.29 No.3, pp. 614-622, 2025.
Data files:
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Last updated on May. 19, 2025