基于AMESim 车辆主动悬架联合仿真研究

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The vehicles active suspension based on fuzzy control is built and co-simulated with AMESim and MATLAB. Compared with the active suspension based on math model, the result shows that the acceleration curve basically is the same, and the control strategies are reasonable. Compared to passive suspension, the active suspension fuzzy control based on AMESim can reduce the bodywork acceleration. The dynamics equation and transfer function arent needed with the co simulation method. The method offers a new though to the simulation of control system of complex mechanism.
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