Key Laboratory of Groundwater Resources and Environment (Jilin University), Ministry of Education, Changchun, 130021, China.
Jilin Provincial Key Laboratory of Water Resources and Environment, Jilin University, Changchun, 130021, China.
Environ Sci Pollut Res Int. 2020 Sep;27(27):34107-34120. doi: 10.1007/s11356-020-08996-7. Epub 2020 Jun 16.
Measurements of contaminant concentrations inevitably contain noise because of accidental and systematic errors. However, groundwater contamination sources identification (GCSI) is highly dependent on the data measurements, which directly affect the accuracy of the identification results. Thus, in the present study, the wavelet hierarchical threshold denoising method was employed to denoise concentration measurements and the denoised measurements were then used for GCSI. A 0-1 mixed-integer nonlinear programming optimization model (0-1 MINLP) based on a kernel extreme learning machine (KELM) was applied to identify the location and release history of a contamination source. The results showed the following. (1) The wavelet hierarchical threshold denoising method was not very effective when applied to concentration measurements observed every 2 months (the number of measurements is small and relatively discrete) compared with those obtained every 2 days (the number of measurements is large and relatively continuous). (2) When the concentration measurements containing noise were employed for GCSI, the identifications results were further from the true values when the measurements contained more noise. The approximation of the identification results to the true values improved when the denoised concentration measurements were employed for GCSI. (3) The 0-1 MINLP based on the surrogate KELM model could simultaneously identify the location and release history of contamination sources, as well reducing the computational load and decreasing the calculation time by 96.5% when solving the 0-1 MINLP.
由于偶然和系统误差,污染物浓度的测量不可避免地包含噪声。然而,地下水污染溯源识别(GCSI)高度依赖于数据测量,这直接影响识别结果的准确性。因此,在本研究中,采用了小波分层阈值去噪方法对浓度测量值进行去噪,并将去噪后的测量值用于 GCSI。应用基于核极限学习机(KELM)的 0-1 混合整数非线性规划优化模型(0-1 MINLP)来识别污染源的位置和释放历史。结果表明:(1)与每 2 天获得的数据(测量值大且相对连续)相比,小波分层阈值去噪方法对于每 2 个月观察一次的浓度测量(测量值小且相对离散)效果不是很好;(2)当使用含有噪声的浓度测量值进行 GCSI 时,测量值噪声越大,识别结果越偏离真实值。当使用去噪后的浓度测量值进行 GCSI 时,识别结果更接近真实值;(3)基于替代 KELM 模型的 0-1 MINLP 可以同时识别污染源的位置和释放历史,同时通过求解 0-1 MINLP 将计算负载降低了 96.5%,计算时间减少了 96.5%。