DocumentCode :
1720589
Title :
Soil Moisture Prediction with Feature Selection Using a Neural Network
Author :
Song, Junlei ; Wang, Dianhong ; Liu, Nianjun ; Cheng, Li ; Du, Lan ; Zhang, Ke
Author_Institution :
China Univ. of Geosci., Wuhan
fYear :
2008
Firstpage :
130
Lastpage :
136
Abstract :
For the problem of soil moisture prediction, existing approaches in literature [M. Kashif et al., 2006; Y. Shao et al., 1997] usually utilize as many decision factors as possible, e.g. rainfall, solar irradiance, drainage, etc. However, the redundancy aspect of the decision factors has not been studied rigorously. Previous research work in data mining has shown that removing redundant features improves rather than deteriorates the prediction accuracy. In this paper, we propose an approach to the problem of soil moisture prediction, which integrates two components: feature selection and prediction model: a method is proposed for feature selection that effectively removes the redundant decision factors; This is followed by a feedforward neural network to make prediction based on the retained (i.e. non-redundant) decision factors. Empirical simulations demonstrate the effectiveness of the proposed approach. In particular, with the help of the proposed feature selection component to remove redundant decision factors, the proposed approach is shown to give better prediction accuracy with lower data collection cost.
Keywords :
feedforward neural nets; geophysical techniques; geophysics computing; moisture measurement; soil; data mining; feature selection; feedforward neural network; prediction accuracy; prediction model; soil moisture prediction; Accuracy; Australia; Costs; Ecosystems; Feedforward neural networks; Land surface; Neural networks; Predictive models; Samarium; Soil moisture;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Digital Image Computing: Techniques and Applications (DICTA), 2008
Conference_Location :
Canberra, ACT
Print_ISBN :
978-0-7695-3456-5
Type :
conf
DOI :
10.1109/DICTA.2008.35
Filename :
4700011
Link To Document :
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