Abstract

For autonomous mobile robots moving in unknown environment, accurate estimation of available power along with the robot power demand for each mission is paramount to successful completion of that mission. Regarding the power consumption, the control unit deals with two tasks simultaneously: 1) it has to monitor the power supply (batteries) state of charge (SoC) constantly. This leads to estimation of robot current available power. Besides, batteries are sensitive to deep discharge or overcharge. The battery SoC is an essential factor in power management of a mobile robot. Accurate estimation of the battery SoC can improve power management, optimize the performance, extend the lifetime, and prevent permanent damage to the batteries. 2) The dynamic characteristics of the terrain the robot traverse requires rapid online modifications in its behaviour. The power required for driving a wheel is an increasing function of its slip ratio. For a wheeled robot moving for driving a wheel is an increasing function of its slip ratio. For a wheeled robot moving on different terrains, slip of the wheels should be checked and compensated for to keep the robot moving with less power consumption. To reduce the power consumption, the target robot moving with less power consumption. To reduce the power consumption, the target of the control system is to keep the slip ratio of the driving wheels around the desired value of the control system is to keep the slip ratio of the driving wheels around the desired value. To fulfill the above mentioned tasks, in this thesis, to increase model validity of lithium-ion battery in various charge/discharge scenarios during the mobile robot operation, the battery capacity fade and internal resistance change are modeled by adding them as state variables to a state space model. Using the output measured data, adaptive unscented Kalman Filter (AUKF) is employed for online model parameters identification of the equivalent circuit model at each sampling time. Subsequently, based on the updated model parameters, SoC estimation is conducted using AUKF. The effectiveness of the proposed method is verified through experiments under different power duties in the lab environment through experiments under different power duties in the lab environment. Better results are obtained both in battery model parameters estimation and the battery SoC estimation in comparison with other Kalman filter extensions. Furthermore, for effective control of the slip ratio, a model-based approach to estimating the longitudinal velocity of the mobile robot is presented. The AUKF is developed to estimate the vehicle longitudinal velocity and the wheel angular velocity using measurements from wheel encoders. Based on the estimated slip ratio, a sliding mode controller is designed for slip control of the uncertain nonlinear dynamical system in the presence of model uncertainties, parameter variations, and disturbances. Experiments are carried out in real time on a four-wheel mobile robot to verify the effectiveness of the estimation algorithm and the controller. It is shown that the controller is able to control the slip ratio of the mobile robot on different terrains while adaptive concept of AUKF leads to better results than the unscented Kalman filter in estimating the vehicle velocity which is difficult to measure in actual practice.

Highlights

  • 1.1 Overview and MotivationAn autonomous mobile robot (AMR) is a machine that operates in a partially unknown and unpredictable environment

  • It is demonstrated that the adaptive concept of adaptive unscented Kalman filtering (AUKF) leads to better results than the unscented Kalman filter in estimating the robot velocity which is difficult to measure in actual practice

  • In order to further evaluate the performance of AUKF-based state of charge (SoC) estimation algorithm, comparisons with adaptive extended Kalman filter (AEKF), Unscented Kalman filter (UKF), and Extended Kalman filter (EKF) algorithms will be made

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Summary

Overview and Motivation

An autonomous mobile robot (AMR) is a machine that operates in a partially unknown and unpredictable environment. Mobile robots are required to perform more difficult tasks in increasingly challenging terrains with limited human supervision. The performance of such mobile robots in complex environments is highly influenced by the power capability of the onboard power sources, especially in unknown areas like space where manual recharging or refreshing of the power source is not possible. In order to get more accurate and robust SoC estimation, the Lithium-Ion battery model parameters have been identified using an adaptive unscented Kalman filtering (AUKF) method and based on the updated model, the battery SoC has been estimated . This thesis presents a model-based approach to estimating the robot longitudinal velocity and effective control of the slip ratio applicable to wheeled mobile robots (WMR). It is demonstrated that the adaptive concept of AUKF leads to better results than the unscented Kalman filter in estimating the robot velocity which is difficult to measure in actual practice

Thesis Contributions
Dynamic model based state estimation of wheeled mobile robot
Real-time slip ratio control over different terrains
Thesis Organization
Battery SoC Estimation
Mobile Robot Dynamic Model, State Estimation and Slip Ratio Control
Problem Formulation
Lithium-Ion Battery Model Development
The state space model
Introduction to Kalman filter
The discrete Kalman filter algorithm
The extended Kalman filter (EKF)
The Unscented Kalman filter
Adaptive unscented Kalman filter
Experimental results for parameter identification using AUKF
20 AUKF UKF Offline Calculation
38 Offline
34 Measured Terminal Voltage
Experimental Results for SoC Estimation
38 EKF AUKF
Summary
Introduction
Tire Dynamics
Tractive force of tires
Rolling resistance of tires
Wheel Rotational Dynamics
Robot Body Dynamics
State Estimation Using AUKF
State space model formulation
Robot Description
Experimental results
Sliding surfaces
Controller design
Chattering reduction
Sliding Mode Design for the Wheel Slip Ratio Control
Experimental setup
Online slip ratio control
Conclusions
Future Work
Thesis Publications
Full Text
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