De Jesus Kevin Lawrence M, Senoro Delia B, Dela Cruz Jennifer C, Chan Eduardo B
School of Graduate Studies, Mapua University, Manila 1002, Philippines.
School of Chemical, Biological, Materials Engineering and Sciences, Mapua University, Manila 1002, Philippines.
Toxics. 2022 Feb 18;10(2):95. doi: 10.3390/toxics10020095.
Limited monitoring activities to assess data on heavy metal (HM) concentration contribute to worldwide concern for the environmental quality and the degree of toxicants in areas where there are elevated metals concentrations. Hence, this study used in-situ physicochemical parameters to the limited data on HM concentration in SW and GW. The site of the study was Marinduque Island Province in the Philippines, which experienced two mining disasters. Prediction model results showed that the SW models during the dry and wet seasons recorded a mean squared error (MSE) ranging from 6 × 10 to 0.070276. The GW models recorded a range from 5 × 10 to 0.045373, all of which were approaching the ideal MSE value of 0. Kling-Gupta efficiency values of developed models were all greater than 0.95. The developed neural network-particle swarm optimization (NN-PSO) models for SW and GW were compared to linear and support vector machine (SVM) models and previously published deterministic and artificial intelligence (AI) models. The findings indicated that the developed NN-PSO models are superior to the developed linear and SVM models, up to 1.60 and 1.40 times greater than the best model observed created by linear and SVM models for SW and GW, respectively. The developed models were also on par with previously published deterministic and AI-based models considering their prediction capability. Sensitivity analysis using Olden's connection weights approach showed that pH influenced the concentration of HM significantly. Established on the research findings, it can be stated that the NN-PSO is an effective and practical approach in the prediction of HM concentration in water resources that contributes a solution to the limited HM concentration monitored data.
有限的监测活动用于评估重金属(HM)浓度数据,这引发了全球对环境质量以及金属浓度升高地区有毒物质程度的关注。因此,本研究利用现场理化参数来补充关于地表水(SW)和地下水(GW)中HM浓度的有限数据。研究地点是菲律宾的马林杜克岛省,该地区经历了两次采矿灾难。预测模型结果表明,旱季和雨季的地表水模型记录的均方误差(MSE)范围为6×10至0.070276。地下水模型记录的范围为5×10至0.045373,所有这些都接近理想的MSE值0。所开发模型的克林 - 古普塔效率值均大于0.95。将所开发的地表水和地下水的神经网络 - 粒子群优化(NN - PSO)模型与线性模型、支持向量机(SVM)模型以及先前发表的确定性和人工智能(AI)模型进行了比较。研究结果表明,所开发的NN - PSO模型优于所开发的线性模型和SVM模型,分别比地表水和地下水的线性模型和SVM模型所观测到的最佳模型高出1.60倍和1.40倍。考虑到其预测能力,所开发的模型也与先前发表的确定性和基于AI的模型相当。使用奥尔登连接权重方法进行的敏感性分析表明,pH值对HM浓度有显著影响。基于研究结果,可以说NN - PSO是预测水资源中HM浓度的一种有效且实用的方法,为有限的HM浓度监测数据提供了一种解决方案。