用于化工生产过程故障检测的三层深度学习网络随机树

Ming Lu, Zhen Gao, Ying Zou, Zuguo Chen, Pei Li
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引用次数: 0

摘要

随着技术的发展,化工生产过程越来越复杂,规模也越来越大,因此故障检测显得尤为重要。然而,目前的检测方法难以应对大规模生产过程的复杂性。本文整合了深度学习和机器学习技术的优势,结合双向长短期记忆神经网络、全连接神经网络和额外树算法的优点,提出了一种名为三层深度学习网络随机树(TDLN-trees)的新型故障检测模型。首先,深度学习组件从工业数据中提取时间特征,将其组合并转换为更高层次的数据表示。其次,机器学习组件对第一步提取的特征进行处理和分类。基于田纳西伊士曼流程的实验分析验证了所提方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three‐layer deep learning network random trees for fault detection in chemical production process
With the development of technology, the chemical production process is becoming increasingly complex and large‐scale, making fault detection particularly important. However, current detection methods struggle to address the complexities of large‐scale production processes. In this paper, we integrate the strengths of deep learning and machine learning technologies, combining the advantages of bidirectional long‐ and short‐term memory neural networks, fully connected neural networks, and the extra trees algorithm to propose a novel fault detection model named three‐layer deep learning network random trees (TDLN‐trees). First, the deep learning component extracts temporal features from industrial data, combining and transforming them into a higher‐level data representation. Second, the machine learning component processes and classifies the features extracted in the first step. An experimental analysis based on the Tennessee Eastman process verifies the superiority of the proposed method.
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