Litcius/Paper detail

Chaotic Neural Network-Based Hysteresis Modeling With Dynamic Operator for Magnetic Shape Memory Alloy Actuator

Chen Zhang, Yewei Yu, Yifan Wang, Zhiwu Han, Miaolei Zhou

2021IEEE Transactions on Magnetics20 citationsDOI

Abstract

The magnetic shape memory alloy (MSMA) is a new family of smart materials, which exhibits great strain deformation and high energy density. Based on these properties, the MSMA has excellent potential to represent an available means for developing a novel generation of actuators in the micro-positioning application. However, the MSMA-based actuator suffers from the inherent hysteresis and it has become a bottleneck in the industrial application. A hybrid hysteresis model, which consists of a simple dynamic hysteresis operator (SDHO) and chaotic neural network (CNN), is proposed in this article. This developed model possesses a concise construction and distinguished generalization capability. By conducting comparative experiments, the proposed approach has a superior ability to predict the hysteresis behaviors under various input signals.

Topics & Concepts

HysteresisShape-memory alloyActuatorChaoticComputer scienceArtificial neural networkMagnetic hysteresisBottleneckControl theory (sociology)Magnetic shape-memory alloyOperator (biology)GeneralizationSmart materialMaterials scienceMechanical engineeringMagnetic fieldMagnetizationArtificial intelligencePhysicsMathematical analysisMagnetic domainMathematicsEngineeringCondensed matter physicsNanotechnologyControl (management)BiochemistryChemistryTranscription factorGeneQuantum mechanicsEmbedded systemRepressorShape Memory Alloy TransformationsPiezoelectric Actuators and Control