柴油机故障聚类中“赢家通吃”神经网络训练的改进

A. Iliukhin, R. A. Gibadullin
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引用次数: 2

摘要

为了建立柴油机诊断系统,需要分析从柴油机自动测试系统中获得的大量数据。因此,利用人工神经网络来实现这一分析是值得的。将人工神经网络应用于柴油机故障聚类,通过建立加权因子知识库,减少了存储的数据量。通过自我训练,可以对数据库进行修改,提高聚类的准确率,修改网络结构,以防出现新的故障类型。改进后的神经网络训练算法使用在每个聚类组中原始发现的输入向量数据作为初始加权因子。与其他现有算法相比,该算法通过减少训练周期的数量来减少计算设备的负载。当样本数量和输入输出参数的维度增加时,可以提高方法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of “winner takes all” neural network training for the purpose of diesel engine fault clustering
To create a diagnostic system for diesel engines, it is necessary to analyze a huge amount of data obtained from the automated test systems for diesel engines. Therefore, it is worth to implement the analysis with the help of an artificial neural network. The application of the artificial neural network for diesel engine fault clustering allows reducing the amount of stored data by creation of a knowledge database for the weighting factors. Self-training makes it possible to revise this database, improving the accuracy of clustering, and to modify network structure, in case the new types of faults will appear. The modified neural network training algorithm involves the usage of input vector data originally found within each cluster group as the initial weighting factors. This algorithm allows decreasing the load on the computing devices by reducing the number of training cycles in comparison with other existing algorithms. The efficiency of the method can be improved with a larger number of samples and dimensions of input and output parameters.
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