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A quadratic programming model for selection of fertilizer combination for crop optimal yield using the concept of response surface methodology

A quadratic programming model for selection of fertilizer combination for crop optimal yield using the concept of response surface methodology

Jeas: 7, 569-573

In every day life resources are lost because of human inability to transform most of our typical life problems into statistical or mathematical concept. Over the years agriculturist have lost so much in the purchase of different types of fertilizers and yet cannot combine them to obtain optimal yield of their crops. A quadratic programming model for this problem is here established using the concept of response surface methodology.

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Accession: 029760124

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