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    Machine Learning Modeling for Predicting Tensile Strain Capacity of Pipelines and Identifying Key Factors

    Source: Journal of Pressure Vessel Technology:;2024:;volume( 146 ):;issue: 006::page 61504-1
    Author:
    Park, Dong-Yeob
    DOI: 10.1115/1.4066675
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Machine learning (ML) techniques have recently gained great attention across a multitude of engineering domains, including pipeline materials. However, their application to tensile strain capacity (TSC) modeling remains unexplored. To bridge this gap, this study developed and evaluated an ML model to predict the tensile strain capacity of girth-welded pipelines. The model was trained on over 20,000 data points derived from a TSC equation available in the literature. The ML model demonstrated robust performance in predicting tensile strain capacities. Evidence of this lies in the near-zero means, minimal standard deviations, and normal distribution of residuals for both the training and test datasets. These collectively suggest that the model provides a good fit for the data. Furthermore, the model's loss behavior indicates successful convergence and generalization, without signs of overfitting or underfitting. An analysis using the random forest method revealed that the geometry of the flaw, specifically the flaw depth, is the most influential variable in predicting the TSC. This could be attributed to its significant impact on the fracture toughness of materials. In contrast, material properties and fracture toughness exert less influence relatively, despite their contributions to the model. This finding underscores the importance of flaw geometry in TSC prediction models. Overall, the development of a data-driven TSC model has shown efficient TSC modeling. This model leverages ML techniques, allowing for continuous updates with new data via deep learning.
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      Machine Learning Modeling for Predicting Tensile Strain Capacity of Pipelines and Identifying Key Factors

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4305988
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    contributor authorPark, Dong-Yeob
    date accessioned2025-04-21T10:20:50Z
    date available2025-04-21T10:20:50Z
    date copyright10/23/2024 12:00:00 AM
    date issued2024
    identifier issn0094-9930
    identifier otherpvt_146_06_061504.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4305988
    description abstractMachine learning (ML) techniques have recently gained great attention across a multitude of engineering domains, including pipeline materials. However, their application to tensile strain capacity (TSC) modeling remains unexplored. To bridge this gap, this study developed and evaluated an ML model to predict the tensile strain capacity of girth-welded pipelines. The model was trained on over 20,000 data points derived from a TSC equation available in the literature. The ML model demonstrated robust performance in predicting tensile strain capacities. Evidence of this lies in the near-zero means, minimal standard deviations, and normal distribution of residuals for both the training and test datasets. These collectively suggest that the model provides a good fit for the data. Furthermore, the model's loss behavior indicates successful convergence and generalization, without signs of overfitting or underfitting. An analysis using the random forest method revealed that the geometry of the flaw, specifically the flaw depth, is the most influential variable in predicting the TSC. This could be attributed to its significant impact on the fracture toughness of materials. In contrast, material properties and fracture toughness exert less influence relatively, despite their contributions to the model. This finding underscores the importance of flaw geometry in TSC prediction models. Overall, the development of a data-driven TSC model has shown efficient TSC modeling. This model leverages ML techniques, allowing for continuous updates with new data via deep learning.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleMachine Learning Modeling for Predicting Tensile Strain Capacity of Pipelines and Identifying Key Factors
    typeJournal Paper
    journal volume146
    journal issue6
    journal titleJournal of Pressure Vessel Technology
    identifier doi10.1115/1.4066675
    journal fristpage61504-1
    journal lastpage61504-9
    page9
    treeJournal of Pressure Vessel Technology:;2024:;volume( 146 ):;issue: 006
    contenttypeFulltext
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