Planetary rovers and data fusion

This research will investigate the problem of position estimation for planetary rovers. Diverse algorithmic filters are available for collecting input data and transforming that data to useful information for the purpose of position estimation process. The terrain has sandy soil which might cause sl...

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Bibliographic Details
Main Author: Masuku, Anthony Dumisani
Other Authors: Hobbs, S. E.
Format: Thesis
Language:English
Published: Cranfield University 2012
Subjects:
Online Access:http://dspace.lib.cranfield.ac.uk/handle/1826/9883
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record_format openpolar
spelling ftcranfield:oai:dspace.lib.cranfield.ac.uk:1826/9883 2023-05-15T13:51:36+02:00 Planetary rovers and data fusion Masuku, Anthony Dumisani Hobbs, S. E. 2012-05 http://dspace.lib.cranfield.ac.uk/handle/1826/9883 en eng Cranfield University http://dspace.lib.cranfield.ac.uk/handle/1826/9883 © Cranfield University, 2012. All rights reserved. No part of this publication may be reproduced without the written permission of the copyright holder. Data fusion Planetary rover Kalman filter Navigation Laser speckle velocimetry Measurements Mars Thesis or dissertation Masters by Research MSc by Research 2012 ftcranfield 2022-01-09T06:49:46Z This research will investigate the problem of position estimation for planetary rovers. Diverse algorithmic filters are available for collecting input data and transforming that data to useful information for the purpose of position estimation process. The terrain has sandy soil which might cause slipping of the robot, and small stones and pebbles which can affect trajectory. The Kalman Filter, a state estimation algorithm was used for fusing the sensor data to improve the position measurement of the rover. For the rover application the locomotion and errors accumulated by the rover is compensated by the Kalman Filter. The movement of a rover in a rough terrain is challenging especially with limited sensors to tackle the problem. Thus, an initiative was taken to test drive the rover during the field trial and expose the mobile platform to hard ground and soft ground(sand). It was found that the LSV system produced speckle image and values which proved invaluable for further research and for the implementation of data fusion. During the field trial,It was also discovered that in a at hard surface the problem of the steering rover is minimal. However, when the rover was under the influence of soft sand the rover tended to drift away and struggled to navigate. This research introduced the laser speckle velocimetry as an alternative for odometric measurement. LSV data was gathered during the field trial to further simulate under MATLAB, which is a computational/mathematical programming software used for the simulation of the rover trajectory. The wheel encoders came with associated errors during the position measurement process. This was observed during the earlier field trials too. It was also discovered that the Laser Speckle Velocimetry measurement was able to measure accurately the position measurement but at the same time sensitivity of the optics produced noise which needed to be addressed as error problem. Though the rough terrain is found in Mars, this paper is applicable to a terrestrial robot on Earth. There are regions in Earth which have rough terrains and regions which are hard to measure with encoders. This is especially true concerning icy places like Antarctica, Greenland and others. The proposed implementation for the development of the locomotion system is to model a system for the position estimation through the use of simulation and collecting data using the LSV. Two simulations are performed, one is the differential drive of a two wheel robot and the second involves the fusion of the differential drive robot data and the LSV data collected from the rover testbed. The results have been positive. The expected contributions from the research work includes a design of a LSV system to aid the locomotion measurement system. Simulation results show the effect of different sensors and velocity of the robot. The kalman filter improves the position estimation process. Thesis Antarc* Antarctica Greenland Cranfield University: Collection of E-Research - CERES Greenland
institution Open Polar
collection Cranfield University: Collection of E-Research - CERES
op_collection_id ftcranfield
language English
topic Data fusion
Planetary rover
Kalman filter
Navigation
Laser speckle velocimetry
Measurements
Mars
spellingShingle Data fusion
Planetary rover
Kalman filter
Navigation
Laser speckle velocimetry
Measurements
Mars
Masuku, Anthony Dumisani
Planetary rovers and data fusion
topic_facet Data fusion
Planetary rover
Kalman filter
Navigation
Laser speckle velocimetry
Measurements
Mars
description This research will investigate the problem of position estimation for planetary rovers. Diverse algorithmic filters are available for collecting input data and transforming that data to useful information for the purpose of position estimation process. The terrain has sandy soil which might cause slipping of the robot, and small stones and pebbles which can affect trajectory. The Kalman Filter, a state estimation algorithm was used for fusing the sensor data to improve the position measurement of the rover. For the rover application the locomotion and errors accumulated by the rover is compensated by the Kalman Filter. The movement of a rover in a rough terrain is challenging especially with limited sensors to tackle the problem. Thus, an initiative was taken to test drive the rover during the field trial and expose the mobile platform to hard ground and soft ground(sand). It was found that the LSV system produced speckle image and values which proved invaluable for further research and for the implementation of data fusion. During the field trial,It was also discovered that in a at hard surface the problem of the steering rover is minimal. However, when the rover was under the influence of soft sand the rover tended to drift away and struggled to navigate. This research introduced the laser speckle velocimetry as an alternative for odometric measurement. LSV data was gathered during the field trial to further simulate under MATLAB, which is a computational/mathematical programming software used for the simulation of the rover trajectory. The wheel encoders came with associated errors during the position measurement process. This was observed during the earlier field trials too. It was also discovered that the Laser Speckle Velocimetry measurement was able to measure accurately the position measurement but at the same time sensitivity of the optics produced noise which needed to be addressed as error problem. Though the rough terrain is found in Mars, this paper is applicable to a terrestrial robot on Earth. There are regions in Earth which have rough terrains and regions which are hard to measure with encoders. This is especially true concerning icy places like Antarctica, Greenland and others. The proposed implementation for the development of the locomotion system is to model a system for the position estimation through the use of simulation and collecting data using the LSV. Two simulations are performed, one is the differential drive of a two wheel robot and the second involves the fusion of the differential drive robot data and the LSV data collected from the rover testbed. The results have been positive. The expected contributions from the research work includes a design of a LSV system to aid the locomotion measurement system. Simulation results show the effect of different sensors and velocity of the robot. The kalman filter improves the position estimation process.
author2 Hobbs, S. E.
format Thesis
author Masuku, Anthony Dumisani
author_facet Masuku, Anthony Dumisani
author_sort Masuku, Anthony Dumisani
title Planetary rovers and data fusion
title_short Planetary rovers and data fusion
title_full Planetary rovers and data fusion
title_fullStr Planetary rovers and data fusion
title_full_unstemmed Planetary rovers and data fusion
title_sort planetary rovers and data fusion
publisher Cranfield University
publishDate 2012
url http://dspace.lib.cranfield.ac.uk/handle/1826/9883
geographic Greenland
geographic_facet Greenland
genre Antarc*
Antarctica
Greenland
genre_facet Antarc*
Antarctica
Greenland
op_relation http://dspace.lib.cranfield.ac.uk/handle/1826/9883
op_rights © Cranfield University, 2012. All rights reserved. No part of this publication may be reproduced without the written permission of the copyright holder.
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