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        <dc:title>Comparing multivariate regression and artificial neural network to predict barley production from soil characteristics in northern Iran</dc:title>
        <dc:creator>Ayoubi, S</dc:creator>
        <dc:creator>Sahrawat, K L</dc:creator>
        <dc:subject>Soil Science</dc:subject>
        <dc:description>In this study artificial neural network (ANN) models were designed to predict the&#13;
biomass and grain yield of barley from soil properties; and the performance of&#13;
ANN models was compared with earlier tested statistical models based on&#13;
multivariate regression. Barley yield data and surface soil samples (0–30 cm&#13;
depth) were collected from 1 m2 plots at 112 selected points in the arid region&#13;
of northern Iran. ANN yield models gave higher coefficient of determination and&#13;
lower root mean square error compared to the multivariate regression, indicating&#13;
that ANN is a more powerful tool than multivariate regression. Sensitivity&#13;
analysis showed that soil electrical conductivity, sodium absorption ratio, pH,&#13;
total nitrogen, available phosphorus, and organic matter consistently influenced&#13;
barley biomass and grain yield. A comparison of the two methods to identify the&#13;
most important factors indicated that while in the ANN analysis, soil organic&#13;
matter (SOM) was included among the most important factors; SOM was&#13;
excluded from the most important factors in the multivariate analysis. This&#13;
significant discrepancy between the two methods was apparently a consequence&#13;
of the non-linear relationships of SOM with other soil properties. Overall, our&#13;
results indicated that the ANN models could explain 93 and 89% of the total&#13;
variability in barley biomass and grain yield, respectively. The performance of the&#13;
ANN models as compared to multivariate regression has better chance for&#13;
predicting yield, especially when complex non-linear relationships exist among&#13;
the factors. We suggest that for further potential improvement in predicting&#13;
the barley yield, factors other than the soil properties considered such as soil&#13;
micronutrient status and soil and crop management practices followed during the&#13;
growing season, need to be included in the models.</dc:description>
        <dc:publisher>Taylor &amp; Francis</dc:publisher>
        <dc:date>2011</dc:date>
        <dc:type>Article</dc:type>
        <dc:type>PeerReviewed</dc:type>
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        <dc:language>en</dc:language>
        <dc:identifier>http://oar.icrisat.org/4041/1/ArcOfAgronAndSoilSci57_5_549-565_2011.pdf</dc:identifier>
        <dc:identifier>  Ayoubi, S and Sahrawat, K L  (2011) Comparing multivariate regression and artificial neural network to predict barley production from soil characteristics in northern Iran.  Archives of Agronomy and Soil Science, 57 (5).  pp. 549-565.  ISSN 0365-0340     </dc:identifier>
        <dc:relation>http://dx.doi.org/10.1080/03650341003631400</dc:relation></oai_dc:dc>
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