Grey Assessment of the Ecological Adaptation of Major Strains of Trees Commercially Used in China

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A novel grey assessment model with variable weights was proposed to assess the ecological adaptation of major strains of trees commercially used in China. The contribution of each criterion was measured by the classified information entropy and the degrees of whitenization functions. The results show that the new model can integrate experts’ experience and sample information for confirming each criterion’s weight.

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2347-2350

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February 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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