Civil and Environmental Engineering, Indian Institute of Technology Patna, Bihta, Bihar, India.
Environ Monit Assess. 2020 Nov 26;192(12):791. doi: 10.1007/s10661-020-08691-7.
Groundwater pollution is the biggest threat to sustainability of groundwater resources and even more difficult to detect in case of clandestine sources. At the time when pollution is first detected in randomly located sparse wells, very little is known about the pollution sources. Finding the precise locations of clandestine sources of pollution and their release flux history is the biggest challenge and often termed as a problem belonging to the class of environmental forensics. In this study, two linked simulation optimization-based novel techniques are developed to estimate locations and release flux history from clandestine point sources of groundwater pollution. Simulation model is clubbed with optimization solver to determine the locations and release flux histories of groundwater pollution sources by minimizing the residual error between observed and simulated concentration values. Simulated annealing (SA) and particle swarm optimization (PSO) are used as optimization algorithms. A detailed comparative analysis of these two meta-heuristic optimization algorithms in minimizing the residual error is presented in this study. The performance evaluation of both the algorithms in identifying the sources locations and release flux history is carried out for two synthetic cases and a real-life scenario of groundwater pollution in an aquifer in New South Wales, Australia, which has not been attempted in the past. The results of source location identification and release flux history show the selective applicability of each algorithm in solving real-life scenarios of groundwater pollution.
地下水污染是对地下水资源可持续性的最大威胁,而且在隐蔽污染源的情况下更难检测到。在随机分布的稀疏井首次检测到污染时,对污染源的了解甚少。找到隐蔽污染源的确切位置及其释放通量历史是最大的挑战,通常被称为环境取证问题。在这项研究中,开发了两种基于模拟优化的新技术,用于估计地下水污染隐蔽点源的位置和释放通量历史。通过最小化观测值与模拟值之间的残差,将模拟模型与优化求解器相结合,以确定地下水污染源的位置和释放通量历史。模拟退火(SA)和粒子群优化(PSO)被用作优化算法。在本研究中,对这两种启发式优化算法在最小化残差方面的性能进行了详细的比较分析。针对两个合成案例和澳大利亚新南威尔士州含水层中的一个地下水污染实际情况,对两种算法在识别源位置和释放通量历史方面的性能进行了评估,这在过去从未尝试过。源位置识别和释放通量历史的结果表明,每个算法在解决实际地下水污染情况下具有选择性适用性。