HRSG early tube leak detection with a transfer learning neural network and Gramian Angular Difference Field

H. F. Chow
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Abstract

This paper proposes a novel heat recovery steam generator (HRSG) early tube leak detection model which leverages a convolution neural network classifier by utilising transfer learning with ResNet50 architecture. The design goal of this model was to achieve high classification accuracy with a minimal amount of leakage data. The model is also intended to be user-friendly and require minimal hyperparameter tuning. The proposed neural network was trained on the drum-specific conductivity time series data of HRSGs encoded in the Gramian Angular Difference Field (GADF). The model yielded a validation accuracy of 96.64%, true-positive rate of 93.28% and precision of 100% in regard to the validation set. The study included experiments on the influence of different encoding algorithms, Markov Transition Field (MTF) and Recurrence Plot (RP), and architectures on the performance of the model. This paper further discusses the viability of adapting the design to other time series classification problems.
基于迁移学习神经网络和Gramian角差场的HRSG早期管道泄漏检测
本文提出了一种新的热回收蒸汽发生器(HRSG)早期管道泄漏检测模型,该模型利用卷积神经网络分类器,利用ResNet50架构进行迁移学习。该模型的设计目标是以最少的泄漏数据实现较高的分类精度。该模型还旨在对用户友好,并且需要最小的超参数调优。该神经网络采用编码在格拉曼角差场(GADF)中的HRSGs的鼓特异电导率时间序列数据进行训练。该模型对验证集的验证准确率为96.64%,真阳性率为93.28%,精密度为100%。研究包括不同编码算法、马尔可夫过渡场(MTF)和递归图(RP)以及体系结构对模型性能的影响实验。本文进一步讨论了将该设计应用于其他时间序列分类问题的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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