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Data Mining with Neural Networks for Wheat Yield Prediction
Type of publication: Inproceedings
Citation: russ2008icdm
Booktitle: Advances in Data Mining -- Medical Applications, E-Commerce, Marketing, and Theoretical Aspects
Series: LNAI
Volume: 5077
Year: 2008
Month: July
Pages: 47--56
Publisher: Springer Verlag
Location: Leipzig
Address: Berlin, Heidelberg
ISSN: 0302-9743
ISBN: 978-3-540-70717-2
DOI: 10.1007/978-3-540-70720-2_4
Abstract: Precision agriculture (PA) and information technology (IT) are closely interwoven. The former usually refers to the application of nowadays' technology to agriculture. Due to the use of sensors and GPS technology, in today's agriculture many data are collected. Making use of those data via IT often leads to dramatic improvements in efficiency. For this purpose, the challenge is to change these raw data into useful information. In this paper we deal with neural networks and their usage in mining these data. Our particular focus is whether neural networks can be used for predicting wheat yield from cheaply-available in-season data. Once this prediction is possible, the industrial application is quite straightforward: use data mining with neural networks for, e.g., optimizing fertilizer usage, in economic or environmental terms.
Keywords: Data Mining, Neural Networks, Precision Agriculture, Prediction
Authors Ruß, Georg
Kruse, Rudolf
Wagner, Peter
Schneider, Martin
Editors Perner, Petra
Added by: [ADM]
Total mark: 0
Attachments
  • russ2008icdm-springer.pdf
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