Litcius/Paper detail

Parallel-Cascaded Parameter Identification Scheme for PMSM-Driven Servo Systems During Self-Commission

Danqi Xiang, Jianzhong Yang, Yong Hao, Guangda Xu

2024IEEE Transactions on Industrial Electronics12 citationsDOI

Abstract

Parameter identification is a critical factor influencing the dynamic performance of permanent magnet synchronous motor (PMSM)-driven servo systems. However, mechanical parameter identification encounters the following challenges: multiple parameters that are significantly mutually coupled and difficulties in direct measurement, especially with friction parameters. Currently, most scholars have navigated these challenges through partial parameter identification, either by ignoring Coulomb friction, neglecting the dynamic processes of Coulomb friction, or identifying only the parameters associated with the friction model. In this study, a scheme using a parallel-cascaded extended sliding-mode observer (PCESMO) is proposed to address these challenges. The PCESMO relies solely on phase currents and rotor position to identify parameters, including the moment of inertia, viscous damping, load torque, and parameters of a simplified LuGre model that considers the dynamic process of Coulomb friction during self-commission. Additionally, the PCESMO has low computational complexity and is easy to implement. The effectiveness of the PCESMO was validated through both simulations and experiments. Compared to other competitive methods, PCESMO-identified parameters result in optimal control effects.

Topics & Concepts

Control theory (sociology)Identification (biology)Scheme (mathematics)Control engineeringComputer scienceServo driveIdentification schemeServomotorEngineeringMathematicsControl (management)Artificial intelligenceBiologyProcess (computing)Operating systemBotanyMathematical analysisControl Systems in EngineeringIterative Learning Control SystemsHydraulic and Pneumatic Systems