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Field spectroscopy of plant water content in Eucalyptus grandis forest stands in KwaZulu-Natal, South Africa

The measurement of plant water content is essential to assess stress and



disturbance in forest plantations. Traditional techniques to assess plant water



content are costly, time consuming and spatially restrictive. Remote sensing



techniques offer the alternative of a non destructive and instantaneous method of



assessing plant water content over large spatial scales where ground



measurements would be impossible on a regular basis. The aim of this research



was to assess the relationship between plant water content and reflectance data in



Eucalyptus grandis forest stands in KwaZulu-Natal, South Africa. Field reflectance



and first derivative reflectance data were correlated with plant water content. The



first derivative reflectance performed better than the field reflectance data in



estimating plant water content with high correlations in the visible and mid-infrared



portions of the electromagnetic spectrum. Several reflectance indices were also



tested to evaluate their effectiveness in estimating plant water content and were



compared to the red edge position. The red edge position calculated from the first



derivative reflectance and from the linear four-point interpolation method performed



better than all the water indices tested. It was therefore concluded that the red



edge position can be used in association with other water indices as a stable



spectral parameter to estimate plant water content on hyperspectral data. The



South African satellite SumbandilaSat is due for launch in the near future and it is



essential to test the utility of this satellite in estimating plant water content, a study



which has not been done before. The field reflectance data from this study was



resampled to the SumbandilaSat band settings and was put into a neural network



to test its potential in estimating plant water content. The integrated approach



involving neural networks and the resampled field spectral data successfully



predicted plant water content with a correlation coefficient of 0.74 and a root mean



square error (RMSE) of 1.41 on an independent test dataset outperforming the



traditional multiple regression method of estimation. The potential of the



SumbandilaSat wavebands to estimate plant water content was tested using a



sensitivity analysis. The results from the sensitivity analysis indicated that the xanthophyll, blue and near infrared wavebands are the three most important



wavebands used by the neural network in estimating plant water content. It was



therefore concluded that these three bands of the SumbandilaSat are essential for



plant water estimation. In general this study showed the potential of up-scaling field



spectral data to the SumbandilaSat, the second South African satellite scheduled



for launch in the near future. / Thesis (M.Sc.) - University of KwaZulu-Natal, Pietermaritzburg, 2008.

Identiferoai:union.ndltd.org:netd.ac.za/oai:union.ndltd.org:ukzn/oai:http://researchspace.ukzn.ac.za:10413/263
Date January 2008
Source SetsSouth African National ETD Portal
LanguageEnglish
Detected LanguageEnglish
TypeThesis

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