FEATURES OF DIAGNOSTIC ARTIFICIAL NEURAL NETWORKS FOR HYBRID EXPERT SYSTEMS

S. Konovalov
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Abstract

In the proposed article, various methods of constructing an artificial neural network as one of the components of a hybrid expert system for diagnosis were investigated. A review of foreign literature in recent years was conducted, where hybrid expert systems were considered as an integral part of complex technical systems in the field of security. The advantages and disadvantages of artificial neural networks are listed, and the main problems in creating hybrid expert systems for diagnostics are indicated, proving the relevance of further development of artificial neural networks for hybrid expert systems. The approaches to the analysis of natural language sentences, which are used for the work of hybrid expert systems with artificial neural networks, are considered. A bulletin board is shown, its structure and principle of operation are described. The structure of the bulletin board is divided into levels and sublevels. At sublevels, a confidence factor is applied. The dependence of the values of the confidence factor on the fulfillment of a particular condition is shown. The links between the levels and sublevels of the bulletin board are also described. As an artificial neural network architecture, the «key-threshold» model is used, the rule of neuron operation is shown. In addition, an artificial neural network has the property of training, based on the application of the penalty property, which is able to calculate depending on the accident situation. The behavior of a complex technical system, as well as its faulty states, are modeled using a model that describes the structure and behavior of a given system. To optimize the data of a complex technical system, an evolutionary algorithm is used to minimize the objective function. Solutions to the optimization problem consist of Pareto solution vectors. Optimization and training tasks are solved by using the Hopfield network. In general, a hybrid expert system is described using semantic networks, which consist of vertices and edges. The reference model of a complex technical system is stored in the knowledge base and updated during the acquisition of new knowledge. In an emergency, or about its premise, with the help of neural networks, a search is made for the cause and the control action necessary to eliminate the accident. The considered approaches, interacting with each other, can improve the operation of diagnostic artificial neural networks in the case of emergency management, showing more accurate data in a short time. In addition, the use of such a network for analyzing the state of health, as well as forecasting based on diagnostic data using the example of a complex technical system, is presented.
混合专家系统诊断人工神经网络的特点
在本文中,研究了构建人工神经网络作为混合诊断专家系统组成部分的各种方法。本文综述了近年来国外有关混合专家系统的研究进展,认为混合专家系统是安全领域复杂技术系统的重要组成部分。列举了人工神经网络的优点和缺点,指出了建立用于诊断的混合专家系统的主要问题,证明了人工神经网络在混合专家系统中的进一步发展的相关性。研究了用于人工神经网络混合专家系统的自然语言句子分析方法。介绍了电子公告板的结构和工作原理。布告栏的结构分为层和子层。在子级别上,应用置信度因子。给出了置信因子值对满足特定条件的依赖关系。还描述了公告板的级别和子级别之间的链接。作为一种人工神经网络结构,采用了“键-阈值”模型,揭示了神经元的运行规律。此外,人工神经网络具有训练性质,基于处罚性质的应用,能够根据事故情况进行计算。一个复杂技术系统的行为,以及它的故障状态,是用一个描述给定系统的结构和行为的模型来建模的。为了对复杂技术系统的数据进行优化,采用进化算法使目标函数最小化。优化问题的解由帕累托解向量组成。利用Hopfield网络解决了优化和训练任务。通常,混合专家系统是用由顶点和边组成的语义网络来描述的。复杂技术系统的参考模型存储在知识库中,并在获取新知识的过程中不断更新。在紧急情况下,或在其前提下,借助神经网络,搜索原因和必要的控制行动,以消除事故。所考虑的方法相互作用,可以改善诊断人工神经网络在应急管理情况下的运行,在短时间内显示更准确的数据。此外,还以一个复杂的技术系统为例,介绍了利用这种网络分析健康状况以及根据诊断数据进行预测。
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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