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Stochastic Memristive Quaternion-Valued Neural Networks with Time Delays: An Analysis on Mean Square Exponential Input-to-State Stability

Usa Wannasingha Humphries, Grienggrai Rajchakit, Pramet Kaewmesri, Pharunyou Chanthorn, R. Sriraman, R. Samidurai, Chee Peng Lim

2020Mathematics48 citationsDOIOpen Access PDF

Abstract

In this paper, we study the mean-square exponential input-to-state stability (exp-ISS) problem for a new class of neural network (NN) models, i.e., continuous-time stochastic memristive quaternion-valued neural networks (SMQVNNs) with time delays. Firstly, in order to overcome the difficulties posed by non-commutative quaternion multiplication, we decompose the original SMQVNNs into four real-valued models. Secondly, by constructing suitable Lyapunov functional and applying It o ^ ’s formula, Dynkin’s formula as well as inequity techniques, we prove that the considered system model is mean-square exp-ISS. In comparison with the conventional research on stability, we derive a new mean-square exp-ISS criterion for SMQVNNs. The results obtained in this paper are the general case of previously known results in complex and real fields. Finally, a numerical example has been provided to show the effectiveness of the obtained theoretical results.

Topics & Concepts

QuaternionArtificial neural networkMathematicsStability (learning theory)Square (algebra)Exponential stabilityExponential functionMultiplication (music)State (computer science)Applied mathematicsControl theory (sociology)Mean squareCommutative propertyMean squared errorComputer scienceAlgorithmDiscrete mathematicsMathematical analysisArtificial intelligenceCombinatoricsNonlinear systemPhysicsMachine learningQuantum mechanicsControl (management)StatisticsGeometryNeural Networks Stability and SynchronizationAdvanced Memory and Neural ComputingDistributed Control Multi-Agent Systems