Speed tracking control of pneumatic motor servo systems using observation-based adaptive dynamic sliding-mode control

•Modeling and speed control of a pneumatic servo motor are studied.•A novel adaptive dynamic sliding-mode control (ADSMC) approach is proposed.•Adaptive algorithms are designed for the ADSMC system.•The stability analysis of the proposed control system is proved.•Experimentations of five controllers...

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Veröffentlicht in:Mechanical systems and signal processing 2017-09, Vol.94, p.111-128
Hauptverfasser: Chen, Syuan-Yi, Gong, Sheng-Sian
Format: Artikel
Sprache:eng
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Zusammenfassung:•Modeling and speed control of a pneumatic servo motor are studied.•A novel adaptive dynamic sliding-mode control (ADSMC) approach is proposed.•Adaptive algorithms are designed for the ADSMC system.•The stability analysis of the proposed control system is proved.•Experimentations of five controllers in two test conditions are compared. This study aims to develop an adaptive high-precision control system for controlling the speed of a vane-type air motor (VAM) pneumatic servo system. In practice, the rotor speed of a VAM depends on the input mass air flow, which can be controlled by the effective orifice area (EOA) of an electronic throttle valve (ETV). As the control variable of a second-order pneumatic system is the integral of the EOA, an observation-based adaptive dynamic sliding-mode control (ADSMC) system is proposed to derive the differential of the control variable, namely, the EOA control signal. In the ADSMC system, a proportional–integral–derivative fuzzy neural network (PIDFNN) observer is used to achieve an ideal dynamic sliding-mode control (DSMC), and a supervisor compensator is designed to eliminate the approximation error. As a result, the ADSMC incorporates the robustness of a DSMC and the online learning ability of a PIDFNN. To ensure the convergence of the tracking error, a Lyapunov-based analytical method is employed to obtain the adaptive algorithms required to tune the control parameters of the online ADSMC system. Finally, our experimental results demonstrate the precision and robustness of the ADSMC system for highly nonlinear and time-varying VAM pneumatic servo systems.
ISSN:0888-3270
1096-1216
DOI:10.1016/j.ymssp.2017.02.025