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Data-driven research on chemical features of Jingdezhen and Longquan celadon by energy dispersive X-ray fluorescence

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 نشر من قبل Ziyang He
 تاريخ النشر 2015
  مجال البحث فيزياء
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The energy dispersive X-ray fluorescence (EDXRF) is used to determine the chemical composition of celadon body and glaze in Longquan kiln (at Dayao County) and Jingdezhen kiln. Forty typical shards in four cultural eras were selected to investigate the raw materials and firing technology. Random forests, a relatively new statistical technique, has been adopted to identify chemical elements that are strongest explanatory variables to classify samples into defferent cultural eras and kilns. The results indicated that the contents of Na2O, Fe2O3, TiO2, SiO2 and CaO vary in celadon bodies from Longquan and Jingdezhen, which implies that local clay was used to manufacture celadon bodies in Jingdezhen kiln. By comparing the chemical composition in glaze, we find that the chemical elements and firing technology of Jingdezhen kiln are very similar to those in Longquan kiln, especially for Ming dynasty. This study reveals the inheritance between Jingdezhen kiln and Longquan kiln, and explains the differences between those two kilns.



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