A Data-Driven Machine Learning Approach for Corrosion Risk Assessment-A Comparative Study

被引:48
|
作者
Ossai, Chinedu, I [1 ]
机构
[1] Univ South Australia, Sch Informat Technol & Math Sci, Mawson Lakes Campus,GPO Box 2471, Adelaide, SA 5001, Australia
关键词
aged pipeline; corrosion defect-depth growth; data-driven machine learning; particle swarm optimization; principal component analysis; time-dependent reliability; INTERNAL PITTING CORROSION; MILD-STEEL; CARBON-DIOXIDE; GAS-PIPELINES; OIL; MODEL; FLOW;
D O I
10.3390/bdcc3020028
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Understanding the corrosion risk of a pipeline is vital for maintaining health, safety and the environment. This study implemented a data-driven machine learning approach that relied on Principal Component Analysis (PCA), Particle Swarm Optimization (PSO), Feed-Forward Artificial Neural Network (FFANN), Gradient Boosting Machine (GBM), Random Forest (RF) and Deep Neural Network (DNN) to estimate the corrosion defect depth growth of aged pipelines. By modifying the hyperparameters of the FFANN algorithm with PSO and using PCA to transform the operating variables of the pipelines, different Machine Learning (ML) models were developed and tested for the X52 grade of pipeline. A comparative analysis of the computational accuracy of the corrosion defect growth was estimated for the PCA transformed and non-transformed parametric values of the training data to know the influence of the PCA transformation on the accuracy of the models. The result of the analysis showed that the ML modelling with PCA transformed data has an accuracy that is 3.52 to 5.32 times better than those carried out without PCA transformation. Again, the PCA transformed GBM model was found to have the best modeling accuracy amongst the tested algorithms; hence, it was used for computing the future corrosion defect depth growth of the pipelines. This helped to compute the corrosion risks using the failure probabilities at different lifecycle phases of the asset. The excerpts from the results of this study indicate that my technique is vital for the prognostic health monitoring of pipelines because it will provide information for maintenance and inspection planning.
引用
收藏
页码:1 / 22
页数:22
相关论文
共 50 条
  • [21] The Prediction of Flight Delay: Big Data-driven Machine Learning Approach
    Huo, Jiage
    Keung, K. L.
    Lee, C. K. M.
    Ng, Kam K. H.
    Li, K. C.
    [J]. 2020 IEEE INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT (IEEE IEEM), 2020, : 190 - 194
  • [22] Data-driven atmospheric corrosion prediction model for alloys based on a two-stage machine learning approach
    Chen, Qian
    Wang, Han
    Ji, Haodi
    Ma, Xiaobing
    Cai, Yikun
    [J]. PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2024, 188 : 1093 - 1105
  • [23] Health Data-Driven Machine Learning Algorithms Applied to Risk Indicators Assessment for Chronic Kidney Disease
    Chiu, Yen-Ling
    Jhou, Mao-Jhen
    Lee, Tian-Shyug
    Lu, Chi-Jie
    Chen, Ming-Shu
    [J]. RISK MANAGEMENT AND HEALTHCARE POLICY, 2021, 14 : 4401 - 4412
  • [24] Seismic performance assessment of corroded RC columns based on data-driven machine-learning approach
    Xu, Ji-Gang
    Hong, Wan
    Zhang, Jian
    Hou, Shi-Tong
    Wu, Gang
    [J]. ENGINEERING STRUCTURES, 2022, 255
  • [25] Characterizing fall risk factors in Belgian older adults through machine learning: a data-driven approach
    Elke Lathouwers
    Arnau Dillen
    María Alejandra Díaz
    Bruno Tassignon
    Jo Verschueren
    Dominique Verté
    Nico De Witte
    Kevin De Pauw
    [J]. BMC Public Health, 22
  • [26] Characterizing fall risk factors in Belgian older adults through machine learning: a data-driven approach
    Lathouwers, Elke
    Dillen, Arnau
    Diaz, Maria Alejandra
    Tassignon, Bruno
    Verschueren, Jo
    Verte, Dominique
    De Witte, Nico
    De Pauw, Kevin
    [J]. BMC PUBLIC HEALTH, 2022, 22 (01)
  • [27] Data-driven approach for ontology learning
    Ocampo-Guzman, Isidra
    Lopez-Arevalo, Ivan
    Sosa-Sosa, Victor
    [J]. 2009 6TH INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING, COMPUTING SCIENCE AND AUTOMATION CONTROL (CCE 2009), 2009, : 463 - 468
  • [28] Assessment of Cardiovascular Risk based on a Data-driven Knowledge Discovery Approach
    Mendes, D.
    Paredes, S.
    Rocha, T.
    Carvalho, P.
    Henriques, J.
    Cabiddu, R.
    Morais, J.
    [J]. 2015 37TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2015, : 6800 - 6803
  • [29] The drivers of systemic risk in financial networks: a data-driven machine learning analysis
    Alexandre, Michel
    Silva, Thiago Christiano
    Connaughton, Colm
    Rodrigues, Francisco A.
    [J]. CHAOS SOLITONS & FRACTALS, 2021, 153 (153)
  • [30] Failure risk analysis of pipelines using data-driven machine learning algorithms
    Mazumder, Ram K.
    Salman, Abdullahi M.
    Li, Yue
    [J]. STRUCTURAL SAFETY, 2021, 89