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Yaw rate.

Yaw rate.

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Conference Paper
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In this paper, the autonomous vehicle presented as a discrete-time Takagi-Sugeno fuzzy (T-S) model. We used the discrete-time T-S model since it is ready for the implementation unlike the continuous T-S fuzzy model. The main goal is to keep the autonomous vehicle in the centreline of the lane regardless the external disturbances. These disturbances...

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... 4 presents the sideslip angle convergence to equilibrium point in 10 seconds. Figure 5 shows that the yaw rate converges in 12 seconds. Figures 6-9 show that the lateral deviation error, the heading error and the steering angle converges in 8 seconds. ...

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