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JOURNALS // Artificial Intelligence and Decision Making // Archive

Artificial Intelligence and Decision Making, 2021 Issue 4, Pages 75–88 (Mi iipr120)

This article is cited in 1 paper

Computational intelligence

Joint use neural networks and evidence theory methods in control and diagnostic fuzzy systems

V. K. Ivanov, B. V. Paliukh

Tver State Technical University, Tver, Russia

Abstract: The article describes the study results of various intelligent data processing methods, such as neural networks and algorithms of the theory of evidence, joint use. The study was conducted on the development of diagnostic systems examples. These methods hybridization is one of the general approaches to reduce uncertainty in the data used and increase the degree of confidence in them. The data uncertainty is of an objective nature when they are obtained from the sensors of technological equipment, from technical regulations, as well as from expert specialists. The study includes an analysis of modern developments descriptions presented at significant international conferences and published recently. Several dozen descriptions of the systems composition, structure and main algorithms functioning developed for projects in various fields were reviewed. As a result, the joint application modes of neural networks and theory of evidence algorithms including the features of architectures and their implementation are determined. We also summarized information about the effectiveness of these methods’ joint application in terms of the uncertainty level reducing and confidence level increasing in the decision-making data. The scope of this study results application is the architectural solutions design of a hybrid expert system for diagnosing the technology processes state and detecting anomalies in them.

Keywords: neural network, Dempster-Schafer evidence theory, hybrid expert system, diagnostics, manufacturing process, fuzzy system, network training, belief function.

DOI: 10.14357/20718594210407


 English version:
, 2022, 49:6, 446–454

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© Steklov Math. Inst. of RAS, 2024