Optimization of natural gas transmission network using genetic algorithm

A. Jamshidifar
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引用次数: 3

Abstract

In this paper, an Evolutionary approach for optimization of cyclic Gas Transmission Network (GTN) is presented. The GTNs comprise of nodes, links, compressor stations and valves where the last one is a main component of GTNs which generally not considered in similar works. In this approach, at first a reduced network will be generated from the original GTN and the cycles of the reduced network will be identified. Then an iterative approach will be used to find the cycles flows which optimize the objective function. This approach calculates the pressure variables at fixed flow rates using dynamic programming (DP) and updates the gas flow rates to improve the objective function in every iteration. The objective function is a weighted summation of total number of running compressor stations and their total fuel consumption. The flow rates will be updated using Genetic Algorithm (GA) which is modified to speed up its convergence. The main modifications are related to decomposing of chromosomes to subchromosomes and finding the upper and lower limits for crossover and mutation. A number of real examples of Iranian GTN are exploited to support the proposed approach.
基于遗传算法的天然气输气网络优化
本文提出了一种循环输气网络优化的进化方法。gtn由节点、链路、压缩站和阀门组成,其中最后一个是gtn的主要组成部分,在类似工程中通常不考虑。在这种方法中,首先将原始GTN生成一个约简网络,并识别约简网络的周期。然后用迭代法求出优化目标函数的循环流。该方法利用动态规划(DP)计算固定流量下的压力变量,并在每次迭代中更新气体流量以改进目标函数。目标函数是运行的压缩站总数及其总油耗的加权总和。利用改进的遗传算法(GA)来更新流量,以加快其收敛速度。主要的修饰是将染色体分解为亚染色体,找到交叉和突变的上下限。伊朗GTN的一些真实例子被用来支持提议的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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