Dynamic Characteristics Prediction Model for Diesel Engine Valve Train Design Parameters Based on Deep Learning

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초록

This paper presents a comprehensive study on the utilization of machine learning and deep learning techniques to predict the dynamic characteristics of design parameters, exemplified by a diesel engine valve train. The research aims to address the challenging and time-consuming analysis required to optimize the performance and durability of valve train components, which are influenced by numerous factors. To this end, dynamic analyses data have been collected for diesel engine specifications and used to construct a regression prediction model using a gradient boosting regressor tree (GBRT), a deep neural network (DNN), a one-dimensional convolution neural network (1D-CNN), and long short-term memory (LSTM). The prediction model was utilized to estimate the force and valve seating velocity values of the valve train system. The dynamic characteristics of the case were evaluated by comparing the actual and predicted values. The results showed that the GBRT model had an R-2 value of 0.90 for the valve train force and 0.97 for the valve seating velocity, while the 1D-CNN model had an R-2 value of 0.89 for the valve train force and 0.98 for the valve seating velocity. The results of this study have important implications for advancing the design and development of efficient and reliable diesel engines.

키워드

diesel enginevalve train dynamicsdeep learningGBRTDNNLSTM1D-CNN
제목
Dynamic Characteristics Prediction Model for Diesel Engine Valve Train Design Parameters Based on Deep Learning
저자
Lee, WookeyJung, Tae-YunLee, Suan
DOI
10.3390/electronics12081806
발행일
2023-04
유형
Article
저널명
Electronics (Basel)
12
8