Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks

P. Lisiak, I. Rojek, P. Twardowski
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引用次数: 3

Abstract

Abstract The article describes a method of evaluating the reliability of groove turning for piston rings in combustion engines. Parameters representing the roughness of a machined surface, Ra and Rz, were selected for use in evaluation. At present, evaluation of surface roughness is performed manually by operators and recorded on measurement sheets. The authors studied a method for evaluation of the surface roughness parameters Ra and Rz using multi-layered perceptron with error back-propagation (MLP) and Kohonen neural networks. Many neural network models were developed, and the best of them were chosen on the basis of the effectiveness of measurement evaluation. Experiments were carried out on real data from a production company, obtained from several machine tools. In this way it becomes possible to assess machines in terms of the reliability evaluation of turning.
用神经网络评价内燃机活塞环沟槽转动可靠性
本文介绍了一种评价内燃机活塞环沟槽转动可靠性的方法。代表加工表面粗糙度的参数Ra和Rz被选择用于评估。目前,表面粗糙度的评估是由操作员手动进行的,并记录在测量表上。研究了一种基于误差反向传播(MLP)和Kohonen神经网络的多层感知器表面粗糙度参数Ra和Rz的评估方法。开发了多种神经网络模型,并根据测量的有效性进行评价,从中选出最优的模型。实验是在某生产公司的几台机床上获得的真实数据上进行的。这样,就有可能根据车削的可靠性评估来评估机器。
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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