Overall
- Language
- English
- Conflict of Interest
- In relation to this article, we declare that there is no conflict of interest.
- Publication history
-
Received July 19, 2023
Accepted February 15, 2024
- This is an Open-Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/bync/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
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A Multi-objective Optimization Method for Simulating the Operation of Natural Gas Transport System
Abstract
The optimization of gas pipeline networks plays a pivotal role in ensuring the effi cient and economically viable transportation
of natural gas. In this research, we have developed a comprehensive mathematical model capable of analyzing diverse
network confi gurations, encompassing both linear and branched topologies. Our scientifi c investigation aims to explore the
optimization potential of gas pipeline networks, employing a sophisticated and systematic approach to enhance network
design and operation. The overarching objective is to achieve maximum effi ciency and reliability in gas delivery to customers.
The optimization process focuses on minimizing power requirements, maximizing gas fl ow rate, minimizing the
fuel consumption, and maximizing line pack to ensure the optimal utilization of the pipeline infrastructure. To accomplish
these objectives, our study employs advanced mathematical models that accurately depict network behavior, cutting-edge
simulation tools to explore various operational scenarios, and state-of-the-art optimization algorithms to identify the most
favorable network confi guration and operating conditions. To facilitate this optimization process, we have incorporated the
VI ekriterijumsko KO mpromisno R angiranje (VIKOR) method, a potent multi-criteria decision-making technique. Through
the application of this approach to two case studies, we have demonstrated its eff ectiveness in identifying optimal network
confi gurations. Furthermore, we have conducted an analysis to determine the total cost and fuel consumption associated
with diff erent network confi gurations, off ering valuable insights for decision-making purposes. The results of our study
underscore the superiority of our approach in identifying more economical networks compared to existing methods. By
embracing the proposed approach, gas transportation networks can be optimized to achieve superior cost-effi ciency and
reduced fuel consumption.