A Data-driven Deep Learning Approach for Remaining Useful Life in the ion mill etching Process

Ahmed Darwish
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Abstract

Prognostics and Health Management (PHM) is regarded as an essential element in the scope of intelligent manufacturing. Precise forecasting of the remaining useful life (RUL) of an ion mill is crucial in order to enhance the overall efficiency of the ion mill etching (IME) procedure. This paper proposed a Data-driven Deep Learning (DL) framework that integrates a Temporal Convolution Network (TCN), Long Short-Term Memory (LSTM), and self-attention mechanism to improve the accuracy of RUL prediction in the ion mill etching Process. Initially, sensor input data is divided into two parallel paths - one with TCN blocks for capturing long-range dependencies, and the other with LSTM layers for extracting temporal patterns. The outputs from both paths are then merged and input into an LSTM layer for enhanced learning, followed by a self-attention mechanism to highlight important features then fully connected layer for predicting RUL. The efficacy of this suggested model was assessed through the utilization of the 2018 PHM Data Challenge Dataset and juxtaposed against various Deep Learning models to demonstrate its efficacy. The results from the experiments indicate that ATCN-LSTM serves as a robust option for estimating the RUL in the ion mill etching Process as it outperformed all other models that were compared. The source code is publicly accessible at https://github.com/ion-mill-etching-Process.
离子磨蚀刻工艺中剩余使用寿命的数据驱动深度学习方法
诊断与健康管理(PHM)被视为智能制造领域的一个基本要素。为了提高离子研磨蚀刻(IME)过程的整体效率,精确预测离子研磨机的剩余使用寿命(RUL)至关重要。本文提出了一种数据驱动的深度学习(DL)框架,该框架集成了时态卷积网络(TCN)、长短期记忆(LSTM)和自我注意机制,以提高离子磨蚀刻过程中剩余使用寿命预测的准确性。最初,传感器输入数据被分为两条并行路径,一条路径包含用于捕捉长程依赖关系的 TCN 块,另一条路径包含用于提取时间模式的 LSTM 层。然后,将两条路径的输出合并并输入 LSTM 层以增强学习能力,再通过自我注意机制突出重要特征,最后通过全连接层预测 RUL。我们利用 2018 PHM 数据挑战赛数据集评估了这一建议模型的功效,并将其与各种深度学习模型并列,以证明其功效。实验结果表明,ATCN-LSTM 是离子磨蚀刻过程中估算 RUL 的稳健选择,因为它的表现优于所有其他比较过的模型。源代码可通过 https://github.com/ion-mill-etching-Process 公开获取。
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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