Modelling Soil Bulk Density using Data-Mining and Expert Knowledge

dc.contributor.advisorCorstanje, Ronald
dc.contributor.advisorWhelan, Michael J.
dc.contributor.advisorCreamer, Rachel E.
dc.contributor.authorTaalab, Khaled Paul
dc.date.accessioned2014-02-12T10:39:33Z
dc.date.available2014-02-12T10:39:33Z
dc.date.issued2013-04
dc.description.abstractData about the spatial variation of soil attributes is required to address a great number of environmental issues, such as improving water quality, flood mitigation, and determining the effects of the terrestrial carbon cycle. The need for a continuum of soils data is problematic, as it is only possible to observe soil attributes at a limited number of locations, beyond which, prediction is required. There is, however, disparity between the way in which much of the existing information about soil is recorded and the format in which the data is required. There are two primary methods of representing the variation in soil properties, as a set of distinct classes or as a continuum. The former is how the variation in soils has been recorded historically by the soil survey, whereas the latter is how soils data is typically required. One solution to this issue is to use a soil-landscape modelling approach which relates the soil to the wider landscape (including topography, land-use, geology and climatic conditions) using a statistical model. In this study, the soil-landscape modelling approach has been applied to the prediction of soil bulk density (Db). The original contribution to knowledge of the study is demonstrating that producing a continuous surface of Db using a soil-landscape modelling approach is that a viable alternative to the ‘classification’ approach which is most frequently used. The benefit of this method is shown in relation to the prediction of soil carbon stocks, which can be predicted more accurately and with less uncertainty. The second part of this study concerns the inclusion of expert knowledge within the soil-landscape modelling approach. The statistical modelling approaches used to predict Db are data driven, hence it is difficult to interpret the processes which the model represents. In this study, expert knowledge is used to predict Db within a Bayesian network modelling framework, which structures knowledge in terms of probability.This approach creates models which can be more easily interpreted and consequently facilitate knowledge discovery, it also provides a method for expert knowledge to be used as a proxy for empirical data. The contribution to knowledge of this section of the study is twofold, firstly, that Bayesian networks can be used as tools for data-mining to predict a continuous soil attribute such as Db and that in lieu of data, expert knowledge can be used to accurately predict landscape-scale trends in the variation of Db using a Bayesian modelling approach.en_UK
dc.identifier.urihttp://dspace.lib.cranfield.ac.uk/handle/1826/8273
dc.language.isoenen_UK
dc.publisherCranfield Universityen_UK
dc.rights© Cranfield University 2013. All rights reserved. No part of this publication may be reproduced without the written permission of the copyright owner.en_UK
dc.subjectBayesian networksen_UK
dc.subjectRandom Foresten_UK
dc.subjectArtificial Neural Networksen_UK
dc.subjectCarbon Stocksen_UK
dc.subjectElicitationen_UK
dc.subjectSoil Taxonomyen_UK
dc.subjectLegacy Dataen_UK
dc.titleModelling Soil Bulk Density using Data-Mining and Expert Knowledgeen_UK
dc.typeThesis or dissertationen_UK
dc.type.qualificationlevelDoctoralen_UK
dc.type.qualificationnamePhDen_UK

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