Fuzzy Clustering Apply to Quality Grading Standards of Radix Bupleuri Seeds

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Abstract:

Establishing quality grading standards of radix bupleuri seeds,In order to control its quality,regulate the supply and demand of the market. Using of radix bupleuri seeds germination rate and thousand seed weight, neatness, water content and vigor index, classify the radix bupleuri seeds. this article analyze and verify another article “Research on Quality Grading Standards of Radix Bupleuri Seeds”, based on the original, put forward using the fuzzy c-means clustering applying to quality grading standards of radix bupleuri seeds. reduce the degree of human intervention, and establish the model of fuzzy c-means clustering on quality grading standards of radix bupleuri seeds, reclassify the radix bupleuri seeds. this article Provide one new reference standard of quality grading of radix bupleuri seeds.

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Advanced Materials Research (Volumes 971-973)

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1620-1623

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June 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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