Vibration-based identification of engine valve clearance using a convolutional neural network

Q2 Engineering Archives of Transport Pub Date : 2022-03-31 DOI:10.5604/01.3001.0015.8254
M. Tabaszewski, G. Szymański, T. Nowakowski
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引用次数: 2

Abstract

Contemporary operation-related requirements for combustion engines force the necessity of ongoing assessment of their in operation technical condition (e.g. marine engines). The engine efficiency and durability depend on a variety of parameters. One of them is valve clearance. As has been proven in the paper, the assessment of the valve clearance can be based on vibration signals, which is not a problem in terms of signal measurement and processing and is not invasive into the engine structure. The authors described the experimental research aiming at providing information necessary to develop and validate the proposed method. Active experiments were used with the task of valve clearance and registration of vibrations using a three-axis transducer placed on the engine cylinder head. The tests were carried out during various operating conditions of the engine set by 5 rotational speeds and 5 load conditions. In order to extract the training examples, fragments of the signal related to the closing of individual valves were divided into 11 shorter portions. From each of them, an effective value of the signal was determined. Obtained total 32054 training vectors for each valve related to 4 classes of valve clearance including very sensitive clearance above 0.8 mm associat-ed with high dynamic interactions in cylinder head. In the paper, the authors propose to use a convolutional network CNN to assess the correct engine valve clearance. The obtained results were compared with other methods of machine learning (pattern recognition network, random forest). Finally, using CNN the valve clearance class identification error was less than 1% for the intake valve and less than 3.5% for the exhaust valve. Developed method replaces the existing standard methods based on FFT and STFT combined with regression calculation where approximation error is up to 10%. Such results are more useful for further studies related not only to classification, but also to the prediction of the valve clearance condition in real engine operations.
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基于振动的发动机气门间隙卷积神经网络辨识
内燃机的现代运行相关要求迫使对其运行中的技术条件进行持续评估的必要性(例如船用发动机)。发动机的效率和耐久性取决于多种参数。其中之一就是阀门间隙。本文已经证明,气门间隙的评估可以基于振动信号,这在信号测量和处理方面不存在问题,也不会对发动机结构造成伤害。作者描述了实验研究,旨在为开发和验证所提出的方法提供必要的信息。主动实验与气门间隙的任务和振动登记使用三轴传感器放置在发动机气缸盖。试验在发动机5种转速和5种载荷条件下的各种工况下进行。为了提取训练样例,将与单个阀门关闭相关的信号片段分成11个较短的部分。从每个信号中确定信号的有效值。获得了与4类气门间隙相关的每个气门的32054个训练向量,其中包括与气缸盖高动态相互作用相关的0.8 mm以上的非常敏感的间隙。在本文中,作者提出使用卷积网络CNN来评估正确的发动机气门间隙。将得到的结果与其他机器学习方法(模式识别网络、随机森林)进行比较。最后,利用CNN,进气气门间隙类识别误差小于1%,排气门间隙类识别误差小于3.5%。该方法取代了现有的基于FFT和STFT结合回归计算的近似误差高达10%的标准方法。这些结果不仅对分类研究更有帮助,而且对发动机实际工作中气门间隙状况的预测也更有帮助。
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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来源期刊
Archives of Transport
Archives of Transport Engineering-Automotive Engineering
CiteScore
2.50
自引率
0.00%
发文量
26
审稿时长
24 weeks
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