The High- Precision Optimized Adaptive Neural Backstepping Control for PMLSM under High-Amplitude Trajectories and Severe Load Shocks

محتوى المقالة الرئيسي

Amaal Althini
Ahlam Elbeskri

الملخص

This paper proposes an adaptive neural backstepping control strategy for Permanent Magnet Linear Synchronous Motors (PMLSMs) operating under high-amplitude trajectories and severe external disturbances. The control scheme integrates a nonlinear backstepping framework with a Radial Basis Function Neural Network (RBFNN) to online approximate lumped uncertainties and load variations. To ensure smooth disturbance estimation and avoid high-frequency oscillations, the neural parameters are systematically optimized, and a σ-leakage mechanism is employed to prevent neural weight drift. Lyapunov-based analysis guarantees Uniformly Ultimately Bounded (UUB) stability of the closed-loop system. MATLAB simulation results demonstrate micrometer-level tracking accuracy and rapid disturbance rejection under a 0.4 m reference trajectory and a 25 N load disturbance, confirming the robustness and effectiveness of the proposed approach for high-precision motion control applications.

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تفاصيل المقالة

كيفية الاقتباس
[1]
A. Althini و A. Elbeskri, "The High- Precision Optimized Adaptive Neural Backstepping Control for PMLSM under High-Amplitude Trajectories and Severe Load Shocks ", SJST, م 8, عدد 1, ص 085–095, 2026.
القسم
قسم العلوم والتقنية

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