Abstract

Accurate and objective object analysis requires multi-parameter estimation with significant computational costs. A methodological approach to improve the accuracy of assessing the state of the monitored object is proposed. This methodological approach is based on a combination of fuzzy cognitive models, advanced genetic algorithm and evolving artificial neural networks. The methodological approach has the following sequence of actions: building a fuzzy cognitive model; correcting the fuzzy cognitive model and training knowledge bases. The distinctive features of the methodological approach are that the type of data uncertainty and noise is taken into account while constructing the state of the monitored object using fuzzy cognitive models. The novelties while correcting fuzzy cognitive models using a genetic algorithm are taking into account the type of data uncertainty, taking into account the adaptability of individuals to iteration, duration of the existence of individuals and topology of the fuzzy cognitive model. The advanced genetic algorithm increases the efficiency of correcting factors and the relationships between them in the fuzzy cognitive model. This is achieved by finding solutions in different directions by several individuals in the population. The training procedure consists in learning the synaptic weights of the artificial neural network, the type and parameters of the membership function and the architecture of individual elements and the architecture of the artificial neural network as a whole. The use of the method allows increasing the efficiency of data processing at the level of 16–24 % using additional advanced procedures. The proposed methodological approach should be used to solve the problems of assessing complex and dynamic processes characterized by a high degree of complexity.

Highlights

  • The growth of information circulating in various information transmission systems leads to a significant complication of the tasks of collecting, processing and summarizing information

  • One such approach is a combination of neuro-fuzzy cognitive models (NFCM), artificial neural networks (ANN) and genetic algorithms (GA)

  • The aim of the study is to develop a method of evaluation in intelligent decision support systems, which would allow the analysis of the object state with given reliability under resource constraints

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Summary

Introduction

The growth of information circulating in various information transmission systems leads to a significant complication of the tasks of collecting, processing and summarizing information. Analysis of intelligent DSS creation shows that the most promising for their construction are information technologies based on a combination of different approaches [1,2,3,4,5,6,7,8]. One such approach is a combination of neuro-fuzzy cognitive models (NFCM), artificial neural networks (ANN) and genetic algorithms (GA). The combination of different approaches to artificial intelligence minimizes the individual shortcomings of each approach, thereby increasing the efficiency of data processing

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