Hybrid Deep Learning Model of AoT-DCGAN and P-CNN for Intelligent Diagnosis of PTC Quality on Small Sample
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    Abstract:

    The intelligent diagnosis of premium threaded connections (PTC) is crucial for ensuring the stability and sealing of oil pipes under high temperature, high pressure, and acidic gas conditions. Accurate diagnosis relies on analyzing PTC curves under different operating conditions to reflect the quality of the buckling, but obtaining a large amount of valid data in actual industrial inspections is challenging. This study introduces an end-to-end classification model that combines asynchronous optimized 2D deep convolutional generative adversarial network (AoT-DCGAN) and 2D convolutional neural network (P-CNN), aiming to improve classification performance with small sample sizes. The proposed method first utilizes AoT-DCGAN to identify the distribution pattern of original samples and generate corresponding synthetic samples. At the same time, a novel weight optimization strategy, asynchronous optimization (AO), is implemented to alleviate the gradient vanishing problem during the generator optimization phase. Subsequently, a novel P-CNN model is designed and trained on an expanded dataset to achieve automatic classification of PTC curves. The method is evaluated based on recall, specificity, F1 score, precision, and confusion matrix under different data augmentation ratios. The results indicate that as the dataset size increases, the model’s classification ability improves, peaking at a dataset size of 1200. In addition, within the same training set, the performance of the P-CNN model outperforms traditional machine learning and deep learning models, achieving optimal classification accuracies of 95.9%, 95.5%, and 96.7% on the AC, ATI, and NDT curves, respectively. Finally, research confirms that applying asynchronous optimization during the training process of DCGAN results in a more stable decrease in the loss function.

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李文哲,李浩然,王涛,马梓瀚,汪传磊,郭丽雪.用于小样本PTC质量智能诊断的AoT-DCGAN和P-CNN混合深度学习模型.计算机系统应用,,():1-14

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History
  • Received:September 03,2024
  • Revised:September 24,2024
  • Online: April 01,2025
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