Litcius/Paper detail

An Accelerated Approach on Adaptive Gradient Neural Network for Solving Time-Dependent Linear Equations: A State-Triggered Perspective

Haoen Huang, Zhigang Zeng

2024IEEE Transactions on Neural Networks and Learning Systems14 citationsDOI

Abstract

To improve the acceleration performance, a hybrid state-triggered discretization (HSTD) is proposed for the adaptive gradient neural network (AGNN) for solving time-dependent linear equations (TDLEs). Unlike the existing approaches that use an activation function or a time-varying coefficient for acceleration, the proposed HSTD is uniquely designed from a control theory perspective. It comprises two essential components: adaptive sampling interval state-triggered discretization (ASISTD) and adaptive coefficient state-triggered discretization (ACSTD). The former addresses the gap in acceleration methods related to the variable sampling period, while the latter considers the underlying evolutionary dynamics of the Lyapunov function to determine coefficients greedily. Finally, compared with commonly used discretization methods, the acceleration performance and computational advantages of the proposed HSTD are substantiated by the numerical simulations and applications to robotics.

Topics & Concepts

DiscretizationAccelerationArtificial neural networkControl theory (sociology)Lyapunov functionComputer scienceAdaptive samplingGradient methodInterval (graph theory)Sampling (signal processing)MathematicsApplied mathematicsMathematical optimizationArtificial intelligenceAlgorithmNonlinear systemMathematical analysisControl (management)PhysicsMonte Carlo methodFilter (signal processing)Classical mechanicsQuantum mechanicsComputer visionCombinatoricsStatisticsNeural Networks and ApplicationsRobotic Mechanisms and DynamicsPiezoelectric Actuators and Control
An Accelerated Approach on Adaptive Gradient Neural Network for Solving Time-Dependent Linear Equations: A State-Triggered Perspective | Litcius