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Dynamic Neural Network Models for Time-Varying Problem Solving: A Survey on Model Structures

Cheng Hua, Xinwei Cao, Qian Xu, Bolin Liao, Shuai Li

2023IEEE Access19 citationsDOIOpen Access PDF

Abstract

In recent years, neural networks have become a common practice in academia for handling complex problems. Numerous studies have indicated that complex problems can generally be formulated as a single or a set of time-varying equations. Dynamic neural networks, as powerful tools for processing time-varying problems, play an essential role in their online solution. This paper reviews recent advances in real-valued, complex-valued, and noise-tolerant dynamic neural networks for solving various time-varying problems, discusses the finite-time convergence, fixed/varying parameters, and noise tolerance properties of dynamic neural network models. This review is highly relevant for researchers and novices interested in using dynamic neural networks to solve time-varying problems.

Topics & Concepts

Artificial neural networkComputer scienceNoise (video)Convergence (economics)Set (abstract data type)Stochastic neural networkDynamic equationArtificial intelligenceTime delay neural networkNonlinear systemProgramming languagePhysicsQuantum mechanicsEconomicsImage (mathematics)Economic growthNeural Networks and ApplicationsRobotic Mechanisms and DynamicsFuzzy Logic and Control Systems
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