Publication

Autonomous vehicle state estimation and mapping using Takagi–Sugeno modeling approach

Journal Article (2022)

Journal

Sensors

Pages

3399

Volume

22

Number

9

Doc link

https://doi.org/10.3390/s22093399

File

Download the digital copy of the doc pdf document

Abstract

This paper proposes an optimal approach for state estimation based on the Takagi–Sugeno (TS) Kalman filter using measurement sensors and rough pose obtained from LIDAR scan end-points matching. To obtain stable and optimal TS Kalman gain for estimator design, a linear matrix inequality (LMI) is optimized which is constructed from Lyapunov stability criteria and dual linear quadratic regulator (LQR). The technique utilizes a Takagi–Sugeno (TS) representation of the system, which allows modeling the complex nonlinear dynamics in such a way that linearization is not required for the estimator or controller design. In addition, the TS fuzzy representation is exploited to obtain a real-time Kalman gain, avoiding the expensive optimization of LMIs at every step. The estimation schema is integrated with a nonlinear model-predictive control (NMPC) that is in charge of controlling the vehicle. For the demonstration, the approach is tested in the simulation, and for practical validity, a small-scale autonomous car is used.

Categories

control theory.

Scientific reference

S. Chaubey and V. Puig. Autonomous vehicle state estimation and mapping using Takagi–Sugeno modeling approach. Sensors, 22(9): 3399, 2022.