期刊文献+

Simultaneous Forecast for Three Speciations of Heavy Metal Elements Using Fuzzy Cluster-Artificial Neural Network

Simultaneous Forecast for Three Speciations of Heavy Metal Elements Using Fuzzy Cluster-Artificial Neural Network
下载PDF
导出
摘要 The three speciations(water extract, adsorption and organic speciations) of Cu, Zn, Fe and Mn in geo-chemical samples were determined by fuzzy cluster-artificial neural network(FC-ANN) method coupled with atomic absorption spectrometry. A back-propagation artificial neural network with one input node and three export nodes was constructed, which could forecaste three speciations of heavy metals simultaneously. In the learning sample set, the three speciations of each element were allowed to change in a wide concentration range and the accuracy of the analysis was apparently increased via the learning sample set optimized with the help of the fuzzy cluster analysis. The average relative errors of the three speciations of Cu, Zn, Fe or Mn from 100 geo-chemical samples were less than 5%. The relative standard deviations of the three speciations of each of four heavy metals were 0.008%―4.43%. The three speciations(water extract, adsorption and organic speciations) of Cu, Zn, Fe and Mn in geo-chemical samples were determined by fuzzy cluster-artificial neural network(FC-ANN) method coupled with atomic absorption spectrometry. A back-propagation artificial neural network with one input node and three export nodes was constructed, which could forecaste three speciations of heavy metals simultaneously. In the learning sample set, the three speciations of each element were allowed to change in a wide concentration range and the accuracy of the analysis was apparently increased via the learning sample set optimized with the help of the fuzzy cluster analysis. The average relative errors of the three speciations of Cu, Zn, Fe or Mn from 100 geo-chemical samples were less than 5%. The relative standard deviations of the three speciations of each of four heavy metals were 0.008%―4.43%.
机构地区 College of Chemistry
出处 《Chemical Research in Chinese Universities》 SCIE CAS CSCD 2012年第5期802-806,共5页 高等学校化学研究(英文版)
基金 Supported by the National Natural Science Foundation of China(No.29975004)
关键词 Fuzzy cluster Artificial neural network Speciation Fuzzy cluster Artificial neural network Speciation
  • 相关文献

参考文献18

  • 1Szpunar J., Lobinski R., Fresenius J., Anal. Chem., 1999, 363, 550.
  • 2Mishra B., Haack E. A., Maurice E A., Bunker B. A., Environ. Sci. Technol., 2009, 43, 94.
  • 3Vespa M., Dahn R., Grolimtmd D., Wieland E., Seheidegger A. M., Environ. Sci. Technol., 2006, 40,2275.
  • 4Kim J. I-I., Pudasainee D., Yoon Y. S., Son S. U,, Seo Y. C., In. Eng. Chem. Res., 2010, 49, 5197.
  • 5Wang E, Bi S. P., Zhou Y. 17., Tao Q. S., Gan W. X., Xu Y., Hong Z., Cai W. S., Atmos. Environ., 2007, 41, 5788.
  • 6Tessier A., Campbell E G. C., Bisson M., Anal. Chem., 1979, 51,844.
  • 7Wang Z. F., Liu L. L., Sun F. S., Environ. Ecol. in The Three Gorges, 2009, 2, 12.
  • 8Ou W. J., Meng Y. Y., Zhang X. Y., Kong M., Chin. J. Anal. Chem., 2011, 39(7), 1104.
  • 9Deaton B. C., Balsam W. L., J. Sediment. Petrol., 1991, 61,628.
  • 10Oakley S. M., Nelson E O., Williamson K. J., Environ. Sci. Technol., 1981, 15, 474.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部