Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm

Abstract Compressor stations, which usually consist of multiple compressors in parallel, are installed to power natural gas travel in pipelines. Compressor station optimization, which should be expressed as a mixed integer nonlinear programming (MINLP) problem, makes economic sense for the entire ga...

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Main Authors: Xia Li, Tao Cui, Kun Huang, Xin Ma
Format: Article
Language:English
Published: Wiley 2021-03-01
Series:Energy Science & Engineering
Subjects:
DE
WOA
Online Access:https://doi.org/10.1002/ese3.821
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spelling doaj-405fe82678ce488b872af49cbbdad1252021-03-02T05:05:01ZengWileyEnergy Science & Engineering2050-05052021-03-019333034210.1002/ese3.821Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithmXia Li0Tao Cui1Kun Huang2Xin Ma3State Key Laboratory of Oil and Gas Reservoir Geology and Exploitation Southwest Petroleum University Chengdu ChinaChina Petroleum Pipeline Engineering Co., LTD Langfang ChinaState Key Laboratory of Oil and Gas Reservoir Geology and Exploitation Southwest Petroleum University Chengdu ChinaSchool of Science Southwest University of Science and Technology Mianyang ChinaAbstract Compressor stations, which usually consist of multiple compressors in parallel, are installed to power natural gas travel in pipelines. Compressor station optimization, which should be expressed as a mixed integer nonlinear programming (MINLP) problem, makes economic sense for the entire gas transmission system. However, it has often been simplified as a nonlinear programming (NLP) or mixed integer linear programming (MILP) problem in previous research. Most of existing solutions are based on discretization and a genetic algorithm (GA). This paper addresses the general MINLP problem for compressor station optimization without simplification; a novel hybrid intelligent algorithm is proposed to solve this problem. The proposed algorithm, DWOA, leverages advantages of the whale optimization algorithm (WOA) and differential evolution (DE). The proposed algorithm can balance exploration and exploitation to find the global optimal solution. An approach to handling constraints is also presented, where the original problem model is reformulated to be continuous by expanding the flow rate range of the compressor. A case study is performed to illustrate the performance of this approach. Results show that the continuous reformulated model is easier to solve, and DWOA produces a satisfactory solution that differs from theoretical results by only 1.61%. In addition, DWOA demonstrates better accuracy and stability than WOA, DE, and DE‐WOA, another hybrid algorithm. Therefore, this solution has the potential to promote comprehensive compressor station optimization.https://doi.org/10.1002/ese3.821compressor station optimizationDEhybrid intelligent algorithmload sharingMINLPWOA
collection DOAJ
language English
format Article
sources DOAJ
author Xia Li
Tao Cui
Kun Huang
Xin Ma
spellingShingle Xia Li
Tao Cui
Kun Huang
Xin Ma
Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
Energy Science & Engineering
compressor station optimization
DE
hybrid intelligent algorithm
load sharing
MINLP
WOA
author_facet Xia Li
Tao Cui
Kun Huang
Xin Ma
author_sort Xia Li
title Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
title_short Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
title_full Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
title_fullStr Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
title_full_unstemmed Optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
title_sort optimization of load sharing for parallel compressors using a novel hybrid intelligent algorithm
publisher Wiley
series Energy Science & Engineering
issn 2050-0505
publishDate 2021-03-01
description Abstract Compressor stations, which usually consist of multiple compressors in parallel, are installed to power natural gas travel in pipelines. Compressor station optimization, which should be expressed as a mixed integer nonlinear programming (MINLP) problem, makes economic sense for the entire gas transmission system. However, it has often been simplified as a nonlinear programming (NLP) or mixed integer linear programming (MILP) problem in previous research. Most of existing solutions are based on discretization and a genetic algorithm (GA). This paper addresses the general MINLP problem for compressor station optimization without simplification; a novel hybrid intelligent algorithm is proposed to solve this problem. The proposed algorithm, DWOA, leverages advantages of the whale optimization algorithm (WOA) and differential evolution (DE). The proposed algorithm can balance exploration and exploitation to find the global optimal solution. An approach to handling constraints is also presented, where the original problem model is reformulated to be continuous by expanding the flow rate range of the compressor. A case study is performed to illustrate the performance of this approach. Results show that the continuous reformulated model is easier to solve, and DWOA produces a satisfactory solution that differs from theoretical results by only 1.61%. In addition, DWOA demonstrates better accuracy and stability than WOA, DE, and DE‐WOA, another hybrid algorithm. Therefore, this solution has the potential to promote comprehensive compressor station optimization.
topic compressor station optimization
DE
hybrid intelligent algorithm
load sharing
MINLP
WOA
url https://doi.org/10.1002/ese3.821
work_keys_str_mv AT xiali optimizationofloadsharingforparallelcompressorsusinganovelhybridintelligentalgorithm
AT taocui optimizationofloadsharingforparallelcompressorsusinganovelhybridintelligentalgorithm
AT kunhuang optimizationofloadsharingforparallelcompressorsusinganovelhybridintelligentalgorithm
AT xinma optimizationofloadsharingforparallelcompressorsusinganovelhybridintelligentalgorithm
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