Source Journal of CSCD
Source Journal for Chinese Scientific and Technical Papers
Core Journal of RCCSE
Included in JST China
Volume 41 Issue 12
Dec.  2023
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Article Contents
ZHANG Tao, WANG Xiahui, BI Erping, HUANG Guoxin, YANG Ruijie. GROUNDWATER VULNERABILITY EVALUATION AND RISK CONTROL IN A CERTAIN AREA IN NORTHERN GUANGDONG PROVINCE BASED ON BP NEURAL NETWORK[J]. ENVIRONMENTAL ENGINEERING , 2023, 41(12): 270-277. doi: 10.13205/j.hjgc.202312034
Citation: ZHANG Tao, WANG Xiahui, BI Erping, HUANG Guoxin, YANG Ruijie. GROUNDWATER VULNERABILITY EVALUATION AND RISK CONTROL IN A CERTAIN AREA IN NORTHERN GUANGDONG PROVINCE BASED ON BP NEURAL NETWORK[J]. ENVIRONMENTAL ENGINEERING , 2023, 41(12): 270-277. doi: 10.13205/j.hjgc.202312034

GROUNDWATER VULNERABILITY EVALUATION AND RISK CONTROL IN A CERTAIN AREA IN NORTHERN GUANGDONG PROVINCE BASED ON BP NEURAL NETWORK

doi: 10.13205/j.hjgc.202312034
  • Received Date: 2022-03-01
    Available Online: 2024-03-08
  • Aiming at the high subjectivity of the traditional DRASTIC model in the process of the parameter weight determination, taking shallow groundwater in a certain area in northern Guangdong Province as a study target, the BP neural network was optimized and the DRASTICL model was constructed by using the collected shallow groundwater-related data and adding land use type parameter. On this basis, groundwater NO3- concentration was used to verify the models, and further the BP neural network and the constructed DRASTICL model were coupled to establish a BP-DRASTICL model. Finally, risk control strategies were suggested according to the spatial distribution characteristics of groundwater vulnerability. The results showed that when the training function was trainlm, the learning rate was 0.1, and the number of hidden layer neurons was 6, BP neural network performed best, and accordingly the optimal BP-DRASTICL parameter weights were 0.1420 (groundwater depth, D), 0.1151 (recharge, R), 0.0791 (aquifer media, A), 0.1833 (soil medium, S), 0.0908 (topography, T), 0.1574 (influence of vadose zone media, I), 0.0891 (hydraulic conductivity, C) and 0.1433 (land use type, L). D, S, T and L had the greatest influence on the evaluation results. Compared with the DRASTIC models and the DRASTICL model, the BP-DRASTICL model had the highest Pearson (0.615) and Spearman (0.656) correlation coefficients, indicating a high linear correlation between the actual nitrate concentration and the vulnerability index. The groundwater vulnerability was generally in the extremely low, and low level, across the study area, and the areas with the high and extremely high vulnerability level were mainly distributed in the middle of the study area. According to the spatial distribution characteristics of the vulnerability, differentiated strategies were proposed for groundwater pollution risk control. Using the BP neural network to determine the parameter weights of the DRASTICL model is more accurate than using the traditional expert scoring method, because it reduces the influence of human subjectivity.
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