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http://repositorio.ufc.br/handle/riufc/55347
Type: | Dissertação |
Title: | Reference trajectory tracking control of a nonholonomic mobile robotwith inertial sensor fusion |
Authors: | Forte, Marcus Davi do Nascimento |
Advisor: | Nogueira, Fabrício Gonzalez |
Co-advisor: | Correia, Wilkley Bezerra |
Keywords: | Mobile robot;Sensor fusion;LQR Control;Kalman filter |
Issue Date: | 2018 |
Citation: | FORTE, Marcus Davi do Nascimento. Reference trajectory tracking control of a nonholonomic mobile robotwith inertial sensor fusion. 2018. 88 f. Dissertação (mestrado) – Universidade Federal do Ceará, Centro de Tecnologia, Programa de Pós-Graduação em Engenharia Elétrica, Fortaleza, 2018. |
Abstract in Brazilian Portuguese: | This work presents a study on differential drive wheeled mobile robots regarding its localization estimation using sensor fusion techniques and control over a reference trajectory. The robot’s posture is an extremely important variable to be estimated, specially for autonomous mobile robots as it has to drive along a path without manual intervention. Posture estimation provided by individual sensors has shown to be inaccurate or straightforward mismatched, leading to a need of data fusion from different sources. Sensors such as accelerometer, gyroscope and magnetometer each have its own intrinsic constructive limitations. However, by combining all their flaws into a linear model allows optimal estimators, such as Kalman Filter (KF), to be used and produce estimates close to real life behavior. For the trajectory tracking and disturbance rejection, a linear control strategy for a linearized mobile robot model is applied. The system is modeled with error states to be carried out by a Linear Quadratic Regulator (LQR) controller along with a feedforward reference control action so that the reference trajectory is accordingly tracked. |
Abstract: | This work presents a study on differential drive wheeled mobile robots regarding its localization estimation using sensor fusion techniques and control over a reference trajectory. The robot’s posture is an extremely important variable to be estimated, specially for autonomous mobile robots as it has to drive along a path without manual intervention. Posture estimation provided by individual sensors has shown to be inaccurate or straightforward mismatched, leading to a need of data fusion from different sources. Sensors such as accelerometer, gyroscope and magnetometer each have its own intrinsic constructive limitations. However, by combining all their flaws into a linear model allows optimal estimators, such as Kalman Filter (KF), to be used and produce estimates close to real life behavior. For the trajectory tracking and disturbance rejection, a linear control strategy for a linearized mobile robot model is applied. The system is modeled with error states to be carried out by a Linear Quadratic Regulator (LQR) controller along with a feedforward reference control action so that the reference trajectory is accordingly tracked. |
URI: | http://www.repositorio.ufc.br/handle/riufc/55347 |
Appears in Collections: | DEEL - Dissertações defendidas na UFC |
Files in This Item:
File | Description | Size | Format | |
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2018_dis_mdnforte.pdf | 10,69 MB | Adobe PDF | View/Open |
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