Pipeline damage identification based on an optimized back-propagation neural network improved by whale optimization algorithm

被引:0
作者
Lei Wu
Jiangtao Mei
Shuo Zhao
机构
[1] China University of Petroleum,School of Petroleum Engineering
[2] China University of Petroleum,National Engineering Research Center of Offshore Geophysical & Exploration Equipment
[3] Maritime Institute @NTU,School of Civil and Environmental Engineering
[4] Nanyang Technological University,College of Mechanical and Electrical Engineering
[5] China University of Petroleum,undefined
来源
Applied Intelligence | 2023年 / 53卷
关键词
Pipeline damage identification; Back-propagation neural network; Whale optimization algorithm; Damage location and degree;
D O I
暂无
中图分类号
学科分类号
摘要
With the advantages of high economy and large transportation capacity, pipeline transportation is commonly used in industrial production. Pipeline damage induced by various factors will result in changes of physical properties, further leading to changes of dynamic parameters such as natural frequency and vibration mode. Recently, as a new type of tool, artificial intelligence is widely used for pipeline damage identification. In this study, to promote the accuracy of pipeline damage identification, a novel method that employs the artificial neural network (ANN) and swarm intelligence algorithm is proposed. In detail, based on the original whale optimization algorithm (WOA), an improved WOA (IWOA) is presented in which an adaptive coefficient strategy and a stochastic optimal substitution strategy are introduced. Then, the IWOA and back-propagation neural network (BPNN) are hybridized into IWOA-BPNN. Subsequently, a damage location detector and a damage degree detector are established based on the proposed IWOA-BPNN. By taking a pipeline fixed at both ends and its curvature and displacement modes, the proposed damage identification method is verified to confirm its effectiveness and accuracy in different damage states. Experimental results demonstrate that the comprehensive performance of IWOA-BPNN is better than other compared models. The relative error of the predicted results obtained by IWOA-BPNN is less than 2.2% when evaluating the damage location and degree for 12 randomly selected test samples, indicating the superiority of the proposed method. The proposed method has broad application prospects in modern industries.
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页码:12937 / 12954
页数:17
相关论文
共 154 条
[1]  
Chen C(2021)Safety and security of oil and gas pipeline transportation: a systematic analysis of research trends and future needs using WoS J Clean Prod 279 123583-7143
[2]  
Li CJ(2010)Bio-oil transport by pipeline: a techno-economic assessment Bioresour Technol 101 7137-555
[3]  
Reniers G(2015)Optimization problems in natural gas transportation systems: a state-of-the-art review Appl Energy 147 536-201
[4]  
Pootakham T(2018)Residual ultimate strength of damaged seamless metallic pipelines with combined dent and metal loss Mar Struct 61 188-492
[5]  
Kumar A(2021)Analysis and research on pipeline vibration of a natural gas Compressor Station and vibration reduction measures Energy Fuel 35 479-580
[6]  
Rios-Mercado RZ(2021)A new hybrid algorithm model for prediction of internal corrosion rate of multiphase pipeline J Nat Gas Sci Eng 85 103716-115
[7]  
Borraz-Sanchez C(2020)Damage detection techniques for wind turbine blades: a review Mech Syst Signal Process 141 106445-556
[8]  
Cai J(2021)Damage detection of wind turbine system based on signal processing approach: a critical review Clean Techn Environ Policy 23 561-683
[9]  
Jiang XL(2020)Defects detection of digital radiographic images of aircraft structure materials via geometric locally adaptive sharpening Res Nondestruct Eval 31 107-111
[10]  
Lodewijks G(2020)A new technology for steel pipeline damage detecting without removing cladding Measurement 159 107700-694