2023
DOI: 10.1017/s0263574723000863
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Exploration-exploitation-based trajectory tracking of mobile robots using Gaussian processes and model predictive control

Abstract: Mobile robots are a key component for the automation of many tasks that either require high precision or are deemed too hazardous for human personnel. One of the typical duties for mobile robots in the industrial sector is to perform trajectory tracking, which involves pursuing a specific path through both space and time. In this paper, an iterative learning-based procedure for highly accurate tracking is proposed. This contribution shows how data-based techniques, namely Gaussian process regression, can be us… Show more

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Cited by 2 publications
(1 citation statement)
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“…The time-optimal motion planning of wheeled inverted pendulum (also known as Segway-type systems) is addressed in the paper "Multistage approach for trajectory optimization for a wheeled inverted pendulum passing under an obstacle" [3], where a method for finding an initial guess for the optimization problem is presented. In "Exploration-Exploitation-Based Trajectory Tracking of Mobile Robots Using Gaussian Processes and Model Predictive Control" [4], an iterative learning-based procedure for the trajectory tracking of mobile robots is propoed.…”
Section: Special Issue Summarymentioning
confidence: 99%
“…The time-optimal motion planning of wheeled inverted pendulum (also known as Segway-type systems) is addressed in the paper "Multistage approach for trajectory optimization for a wheeled inverted pendulum passing under an obstacle" [3], where a method for finding an initial guess for the optimization problem is presented. In "Exploration-Exploitation-Based Trajectory Tracking of Mobile Robots Using Gaussian Processes and Model Predictive Control" [4], an iterative learning-based procedure for the trajectory tracking of mobile robots is propoed.…”
Section: Special Issue Summarymentioning
confidence: 99%