Application of ensemble surrogates and adaptive sequential sampling to optimal groundwater remediation design at DNAPLs-contaminated sites

Journal of Contaminant Hydrology - Tập 207 - Trang 31-38 - 2017
Qi Ouyang1,2, Wenxi Lu1,2, Tiansheng Miao1,2, Wenbing Deng3, Changlong Jiang4, Jiannan Luo1,2
1Key Laboratory of Groundwater Resources and Environment, Ministry of Education, Jilin University, Changchun 130021, PR China
2College of Environment and Resources, Jilin University, Changchun 130021, PR China
3Cores and Samples Center of Land and Resources, China Geological Survey, Yanjiao 065201, PR China
4Songliao water resources commission, Ministry of Water Resources, Changchun 130021, PR China

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