A Neural Network Weights Initialization Approach for Diagnosing Real Aircraft Engine Inter-Shaft Bearing Faults

IF 2.1 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Machines Pub Date : 2023-12-14 DOI:10.3390/machines11121089
Tarek Berghout, Toufik Bentrcia, Wei Hong Lim, Mohamed Benbouzid
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Abstract

The deep learning diagnosis of aircraft engine-bearing faults enables cost-effective predictive maintenance while playing an important role in increasing the safety, reliability, and efficiency of aircraft operations. Because of highly dynamic and harsh operating conditions of this system, such modeling is challenging due to data complexity and drift, making it difficult to reveal failure patterns. As a result, the objective of this study is dual. To begin, a highly structured data preprocessing strategy ranging from extraction, denoising, outlier removal, scaling, and balancing is provided to solve data complexity that resides specifically in outliers, noise, and data imbalance problems. Gap statistics under k-means clustering are used to evaluate preprocessing results, providing a quantitative estimate of the ideal number of clusters and thereby enhancing data representations. This is the first time, to the best of authors’ knowledge, that such a criterion has been employed for an important step in a preliminary ground truth validation in supervised learning. Furthermore, to tackle data drift issues, long-short term memory (LSTM) adaptive learning features are used and subjected to a learning parameter improvement method utilizing recursive weights initialization (RWI) across several rounds. The strength of such methodology can be seen by application to realistic, extremely new, complex, and dynamic data collected from a real test-bench. Cross validation of a single LSTM layer model with only 10 neurons shows its ability to enhance classification performance by 7.7508% over state-of-the-art results, obtaining a classification accuracy of 92.03 ± 0.0849%, which is an exceptional performance in such a benchmark.
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诊断真实飞机发动机轴间轴承故障的神经网络权值初始化方法
飞机发动机轴承故障的深度学习诊断可实现经济高效的预测性维护,同时在提高飞机运行的安全性、可靠性和效率方面发挥重要作用。由于该系统的运行条件高度动态且苛刻,数据的复杂性和漂移使得此类建模具有挑战性,从而难以揭示故障模式。因此,本研究的目标具有双重性。首先,我们提供了一种高度结构化的数据预处理策略,包括提取、去噪、异常值去除、缩放和平衡,以解决数据复杂性问题,特别是异常值、噪声和数据不平衡问题。K 均值聚类下的差距统计用于评估预处理结果,提供了理想聚类数量的定量估计,从而增强了数据表示。据作者所知,这是首次在监督学习的初步地面实况验证的重要步骤中使用这种标准。此外,为了解决数据漂移问题,我们还使用了长短期记忆(LSTM)自适应学习特征,并利用多轮递归权重初始化(RWI)对学习参数进行了改进。将这种方法应用于从真实测试台收集到的极其新颖、复杂和动态的数据,可以看出这种方法的优势。对仅有 10 个神经元的单 LSTM 层模型的交叉验证表明,它能够将分类性能比最先进的结果提高 7.7508%,获得 92.03 ± 0.0849% 的分类准确率,这在此类基准中是非常出色的。
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来源期刊
Machines
Machines Multiple-
CiteScore
3.00
自引率
26.90%
发文量
1012
审稿时长
11 weeks
期刊介绍: Machines (ISSN 2075-1702) is an international, peer-reviewed journal on machinery and engineering. It publishes research articles, reviews, short communications and letters. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. Full experimental and/or methodical details must be provided. There are, in addition, unique features of this journal: *manuscripts regarding research proposals and research ideas will be particularly welcomed *electronic files or software regarding the full details of the calculation and experimental procedure - if unable to be published in a normal way - can be deposited as supplementary material Subject Areas: applications of automation, systems and control engineering, electronic engineering, mechanical engineering, computer engineering, mechatronics, robotics, industrial design, human-machine-interfaces, mechanical systems, machines and related components, machine vision, history of technology and industrial revolution, turbo machinery, machine diagnostics and prognostics (condition monitoring), machine design.
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