Department of Nursing, Fooyin University, Kaohsiung City 831, Taiwan.
Graduate Institute of Applied Geology, National Central University, Taoyuan City 320, Taiwan.
Int J Environ Res Public Health. 2021 Oct 29;18(21):11385. doi: 10.3390/ijerph182111385.
Groundwater resources are abundant and widely used in Taiwan's Lanyang Plain. However, in some places the groundwater arsenic (As) concentrations far exceed the World Health Organization's standards for drinking water quality. Measurements of the As concentrations in groundwater show considerable spatial variability, which means that the associated risk to human health would also vary from region to region. This study aims to adapt a back-propagation neural network (BPNN) method to carry out more reliable spatial mapping of the As concentrations in the groundwater for comparison with the geostatistical ordinary kriging (OK) method results. Cross validation is performed to evaluate the prediction performance by dividing the As monitoring data into three sets. The cross-validation results show that the average determination coefficients (R) for the As concentrations obtained with BPNN and OK are 0.55 and 0.49, whereas the average root mean square errors (RMSE) are 0.49 and 0.54, respectively. Given the better prediction performance of the BPNN, it is recommended as a more reliable tool for the spatial mapping of the groundwater As concentration. Subsequently, the As concentrations estimated obtained using the BPNN are applied to develop a spatial map illustrating the risk to human health associated with the ingestion of As-containing groundwater based on the noncarcinogenic hazard quotient (HQ) and carcinogenic target risk (TR) standards established by the U.S. Environmental Protection Agency. Such maps can be used to demarcate the areas where residents are at higher risk due to the ingestion of As-containing groundwater, and prioritize the areas where more intensive monitoring of groundwater quality is required. The spatial mapping of As concentrations from the BPNN was also used to demarcate the regions where the groundwater is suitable for farmland and fishponds based on the water quality standards for As for irrigation and aquaculture.
地下水资源丰富,在台湾兰阳平原得到广泛应用。然而,在某些地方,地下水砷(As)浓度远远超过世界卫生组织的饮用水质量标准。地下水砷浓度的测量结果显示出相当大的空间变异性,这意味着与人类健康相关的风险也会因地区而异。本研究旨在采用反向传播神经网络(BPNN)方法对地下水砷浓度进行更可靠的空间制图,并与地质统计学普通克里金(OK)方法的结果进行比较。通过将 As 监测数据分为三组进行交叉验证,以评估预测性能。交叉验证结果表明,BPNN 和 OK 获得的 As 浓度的平均决定系数(R)分别为 0.55 和 0.49,而平均均方根误差(RMSE)分别为 0.49 和 0.54。鉴于 BPNN 的预测性能更好,建议将其作为地下水 As 浓度空间制图的更可靠工具。随后,使用 BPNN 估算的 As 浓度应用于根据美国环境保护署制定的非致癌危害商(HQ)和致癌目标风险(TR)标准,开发一张说明与摄入含 As 地下水相关的人类健康风险的空间图。这些地图可用于划定因摄入含 As 地下水而面临更高风险的居民区域,并优先考虑需要更密集监测地下水质量的区域。基于灌溉和水产养殖的砷水质标准,BPNN 的砷浓度空间制图还用于划定适合农田和鱼塘的地下水区域。