@article { , title = {Chemometric Study on the Forensic Discrimination of Soil Types Using Their Infrared Spectral Characteristics}, abstract = {Soil has been utilized in criminal investigations for some time because of its prevalence and transferability. It is usually the physical characteristics that are studied; however, the research carried out here aims to make use of the chemical profile of soil samples. The research we are presenting in this work used sieved (2 mm) soil samples taken from the top soil layer (about 10 cm) that were then analyzed using mid-infrared spectroscopy. The spectra obtained were pretreated and then input into two chemometric classification tools: nonlinear iterative partial least squares followed by linear discriminant analysis (NIPALS-LDA) and partial least squares discriminant analysis (PLS-DA). The models produced show that it is possible to discriminate between soil samples from different land use types and both approaches are comparable in performance. NIPALS-LDA performs much better than PLS-DA in classifying samples to location.}, doi = {10.1366/10-06197}, eissn = {0003-7028}, issn = {0003-7028}, issue = {10}, journal = {Applied Spectroscopy}, pages = {1151-1161}, publicationstatus = {Published}, publisher = {SAGE Publications}, url = {https://hull-repository.worktribe.com/output/3316342}, volume = {65}, keyword = {Health and Health Inequalities, Soil analysis, Forensic science, Fourier transform infrared spectroscopy, FT-IR spectroscopy, Nonlinear iterative partial least squares, PLS, Linear discriminant analysis, LDA, Partial least squares discriminant analysis}, year = {2011}, author = {Baron, Mark and Gonzalez-Rodriguez, Jose and Croxton, Ruth and Gonzalez, Rafael and Jimenez-Perez, Rebeca} }