通过包含深度学习数字分析模块来防止内燃机故障

IF 0.4 Q4 ENGINEERING, MECHANICAL
N. S. Sevryugina, A. G. Arzhenovsky, A. S. Apatenko
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引用次数: 0

摘要

对内燃机的技术状况和效率进行实时监测和诊断,不仅在数据收集方面,而且在数据处理模型和数据解释的充分性方面都是相当昂贵的。本文提出了一种基于现有ICE在各种负载条件下运行数据库的深度学习程序库创建算法。根据ICE监测结果,对气缸-活塞组元件进行视频内窥镜检查,以确定与标准状态的偏差,并使用ELM327和Forscan程序对数据进行处理。建议的数据处理在第一阶段使用组合方法进行;偏差识别是在专家分析的基础上进行的,并与数字模块的决策结果进行比较,这将允许基于深度学习的人工智能软件模块评估决策的有效性,并将消除错误决策的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Preventing Internal Combustion Engine Failures by Including a Deep Learning Digital Analytical Module

Preventing Internal Combustion Engine Failures by Including a Deep Learning Digital Analytical Module

It has been established that monitoring and diagnostics of the technical condition and efficiency of an internal combustion engine (ICE) in real time are quite expensive not so much in data collection, but in the adequacy of the data processing model and their interpretation. An algorithm for creating the library of a deep learning program based on the existing database of ICE operation under various load conditions has been developed. As a result of ICE monitoring, a video endoscopy of the cylinder-piston group elements was performed to establish deviations from the standard state, and the data was processed using ELM327 and the Forscan program. The suggested data processing is carried out at the first stage using a combined method; identification of deviations is carried out on the basis of expert analysis, comparing them with the result of the decision-making by the digital module, which will allow an assessment of the validity of the decision-making by the artificial intelligence software module based on deep learning and will eliminate the occurrence of an erroneous decision.

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来源期刊
CiteScore
0.80
自引率
33.30%
发文量
61
期刊介绍: Journal of Machinery Manufacture and Reliability  is devoted to advances in machine design; CAD/CAM; experimental mechanics of machines, machine life expectancy, and reliability studies; machine dynamics and kinematics; vibration, acoustics, and stress/strain; wear resistance engineering; real-time machine operation diagnostics; robotic systems; new materials and manufacturing processes, and other topics.
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