INFORMATION-EXTREME MACHINE TRAINING SYSTEM OF FUNCTIONAL DIAGNOSIS SYSTEM WITH HIERARCHICAL DATA STRUCTURE

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
I. V. Shelehov, N. Barchenko, D. Prylepa, M. Bibyk
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引用次数: 3

Abstract

Context. The problem of information-extreme machine learning of the functional diagnosis system is considered by the example of recognizing the technical state of a laser printer by typical defects of the printed material. The object of the research is the process of hierarchical machine learning of the functional diagnosis system of an electromechanical device. Objective. The main objective is to improve the functional efficiency of machine learning during functional diagnostics system retraining using automatically forming a new hierarchical data structure for an expanded alphabet of recognition classes. Method. A method of information-extreme hierarchical machine learning of the system of functional diagnosis of a laser printer based on typical defects of the printed material is proposed. The method was developed with functional approach of modeling the cognitive processes of natural intelligence, which makes it possible to give the diagnostic system the properties of adaptability under arbitrary initial conditions for the formation of images of printing defects and flexibility during retraining of the system due to an increase in the power of the alphabet of recognition classes. The method is based on the principle of maximizing the amount of information in the process of machine learning. The process of information-extreme machine learning is considered as an iterative procedure for optimizing the parameters of the functioning of the functional diagnostics system according to the information criterion. As a criterion for optimizing machine learning parameters, a modified Kullback’s information measure is considered, which is a functional of the exact characteristics of classification solutions. According to the proposed categorical functional model, an information-extreme machine learning algorithm has been developed based on a hierarchical data structure in the form of a binary decomposition tree. The use of such a data structure makes it possible to split a large number of recognition classes into pairs of nearest neighbors, for which the optimization of machine learning parameters is carried out according to a linear algorithm of the required depth. Results. Information, algorithmic software for the system of functional diagnostics of a laser printer based on images of typical defects in printed material has been developed. The influence of machine learning parameters on the functional efficiency of the system of functional diagnostics of a laser printer based on images of defects in printed material has been investigated. Conclusions. The results of physical modeling have confirmed the efficiency of the proposed method of information-extreme machine learning of the system of functional diagnosis of a laser printer based on typical defects in printed material and can be recommended for practical use. The prospect of increasing the functional efficiency of information-extremal learning of the functional diagnostics system is to increase the depth of machine learning by optimizing additional parameters of the system’s functions, including the parameters of the formation of the input training matrix.
具有分层数据结构的功能诊断系统的信息极值机器训练系统
上下文。以激光打印机打印材料的典型缺陷识别技术状态为例,探讨了功能诊断系统的信息极值机器学习问题。研究的对象是机电设备功能诊断系统的分层机器学习过程。本文的主要目标是通过自动为扩展的识别类字母表形成新的分层数据结构,提高功能诊断系统再训练过程中机器学习的功能效率。提出了一种基于打印材料典型缺陷的激光打印机功能诊断系统的信息极值层次机器学习方法。该方法采用自然智能认知过程的功能建模方法,使诊断系统在任意初始条件下对印刷缺陷图像的形成具有适应性,并使系统在再训练过程中由于识别类的字母表能力的增加而具有灵活性。该方法基于机器学习过程中信息量最大化的原则。信息极限机器学习的过程被认为是根据信息准则对功能诊断系统的功能参数进行优化的迭代过程。作为优化机器学习参数的准则,考虑了一种修正的Kullback信息测度,它是分类解精确特征的函数。根据所提出的分类功能模型,提出了一种基于二叉分解树形式的分层数据结构的信息极值机器学习算法。这种数据结构的使用使得将大量的识别类分割成最近邻对成为可能,并根据所需深度的线性算法对机器学习参数进行优化。开发了基于典型缺陷图像的激光打印机功能诊断系统的信息、算法软件。研究了机器学习参数对基于打印材料缺陷图像的激光打印机功能诊断系统功能效率的影响。物理建模的结果证实了基于典型打印材料缺陷的激光打印机功能诊断系统的信息极端机器学习方法的有效性,可以推荐用于实际应用。提高功能诊断系统信息极值学习的功能效率的前景是通过优化系统功能的附加参数,包括输入训练矩阵的形成参数,来增加机器学习的深度。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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