Litcius/Paper detail

Fuzzy Neural Pseudo Control With Prescribed Performance for Waverider Vehicles: A Fragility-Avoidance Approach

Xiangwei Bu, Maolong Lv, Humin Lei, Jinde Cao

2023IEEE Transactions on Cybernetics98 citationsDOI

Abstract

A fuzzy-neural-approximation-based pseudo nonaffine control protocol is proposed for waverider vehicles (WVs), which is capable of guaranteeing tracking errors with desired prescribed performance and rejecting the obstacle of fragility inherent to the traditional prescribed performance control (PPC). The pseudo control is defined to approximate the nonaffine dynamics of WVs, while there is no need of model affinization. Furthermore, fuzzy neural approximators are combined with the adaptive compensation strategy to resist both system uncertainties and external disturbances. Especially, a new type of nonfragile prescribed performance, being able to self-adjust its prescribed funnel, is proposed to remedy the fragility defect associated with the existing PPC. Finally, the realizability of the spurred prescribed performance is proved via stability proof, and the superiority of the addressed design is tested by compared simulations.

Topics & Concepts

FragilityControl theory (sociology)Computer scienceFuzzy logicCompensation (psychology)Fuzzy control systemRealizabilityStability (learning theory)Obstacle avoidanceControl (management)Artificial intelligenceAlgorithmMachine learningRobotMobile robotPhysical chemistryPsychoanalysisPsychologyChemistryAdaptive Control of Nonlinear SystemsAdaptive Dynamic Programming ControlDistributed Control Multi-Agent Systems