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基于迁移学习的火花点火发动机点火失败检测。

Misfire Detection in Spark Ignition Engine Using Transfer Learning.

机构信息

School of Mechanical Engineering, VIT University Chennai Campus, Vandalur-Kelambakkam Road, Keelakottatiyur, Chennai-600127, India.

Director CFC and CLT, SNS Group of Institutions, Coimbatore, India.

出版信息

Comput Intell Neurosci. 2022 Jul 8;2022:7606896. doi: 10.1155/2022/7606896. eCollection 2022.

Abstract

Misfire detection in an internal combustion engine is an important activity. Any undetected misfire can lead to loss of fuel and power in the automobile. As the fuel cost is more, one cannot afford to waste money because of the misfire. Even if one is ready to spend more money on fuel, the power of the engine comes down; thereby, the vehicle performance falls drastically because of the misfire in IC engines. Hence, researchers paid a lot of attention to detect the misfire in IC engines and rectify it. Drawbacks of conventional diagnostic techniques include the requirement of high level of human intelligence and professional expertise in the field, which made the researchers look for intelligent and automatic diagnostic tools. There are many techniques suggested by researchers to detect the misfire in IC engines. This paper proposes the use of transfer learning technology to detect the misfire in the IC engine. First, the vibration signals were collected from the engine head and plots are made which will work as input to the deep learning algorithms. The deep learning algorithms have the capability to learn from the plots of vibration signals and classify the state of the misfire in the IC engines. In the present work, the pretrained networks such as AlexNet, VGG-16, GoogLeNet, and ResNet-50 are employed to identify the misfire state of the engine. In the pretrained networks, the effect of hyperparameters such as back size, solver, learning rate, and train-test split ratio was studied and the best performing network was suggested for misfire detection.

摘要

在内燃机中检测点火失败是一项重要的活动。任何未被检测到的点火失败都可能导致汽车燃油和动力的损失。由于燃料成本更高,人们不能因为点火失败而浪费金钱。即使人们准备在燃料上花费更多,发动机的功率也会下降;因此,由于内燃机中的点火失败,车辆性能会大幅下降。因此,研究人员非常关注检测内燃机中的点火失败并加以纠正。传统诊断技术的缺点包括需要高水平的人类智力和专业领域的专业知识,这使得研究人员寻找智能和自动诊断工具。研究人员提出了许多检测内燃机点火失败的技术。本文提出使用迁移学习技术来检测内燃机中的点火失败。首先,从发动机头部采集振动信号,并绘制图表,作为深度学习算法的输入。深度学习算法有能力从振动信号的图表中学习,并对内燃机的点火失败状态进行分类。在目前的工作中,使用了预训练网络,如 AlexNet、VGG-16、GoogLeNet 和 ResNet-50,来识别发动机的点火失败状态。在预训练网络中,研究了超参数(如反向大小、求解器、学习率和训练-测试分割比)的影响,并提出了性能最佳的网络用于点火失败检测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f7e/9287110/e88537de8f79/CIN2022-7606896.001.jpg

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