Welcome to Chinese Journal of Applied Ecology! Today is Share:

Chinese Journal of Applied Ecology

• Articles • Previous Articles     Next Articles

Kriging prediction of soil zinc in contaminated field by using an auxiliary variable

JIANG Yong1;LI Qi1,2;ZHANG Xiaoke1,2;LIANG Wenju1   

  1. 1Institute of Applied Ecology,Chinese Academy of Sciences,Shenyang 110016,China;2Graduate School of Chinese Academy of Sciences,Beijing 100039,China

  • Received:2005-02-21 Revised:2005-07-05 Online:2006-01-18 Published:2006-01-18

Abstract: In this study,two kriging methods using an auxiliary variable, i.e.,ordinary cokriging (OCK) and ordinary kriging combined with regression (OKR) were used for the interpolation of soil zinc (0.1 mol·L-1 HCl extractable Zn) in a 17.6 hm2 field at the vicinity of a metal manufacturer in southern suburb of Shenyang,China.A total of 36 measured data of soil Zn content at the depth of 10~20 cm (subsoil Zn) was selected as target variable,72 measured data at the depth of 0~10 cm (topsoil Zn) as auxiliary variable,while other 36 measured data of subsoil for validation.The two interpolation methods were evaluated for the suitability of estimating the spatial distribution of soil Zn by using an auxiliary variable.The results showed that OKR gave better results than OCK or ordinary kriging (OK).The theoretical model obtained from OKR exhibited higher coefficient of determination and lower residual sums of squares than that from OCK or OK.The prediction accuracy of soil Zn was increased by 4% with OKR than with OK.The map of soil Zn obtained with OKR was quite similar with that obtained with OK,by using 72 measured Zn data.However,no advantages were found between OCK and OK.It was suggested that OKR was an effective way to estimate the distribution of soil heavy metals by using auxiliary variables.

Key words: Riparian forest buffers, Riparian, Ecosystem management