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Adaptive Neuro Fuzzy Inference System control of active suspension system with actuator dynamics

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Figure

Fig. 1. Half car suspension model
Fig. 2. Layout of ANFIS controller for active suspension
Fig. 5. Response of heave and pitch angle for road Zr1
Table 3. Root mean squared values of parameter of active suspension
+2

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