Ge Yuanbo, Lu Wenxi, Pan Zidong
Key Laboratory of Groundwater Resources and Environment, Ministry of Education, Jilin University, Changchun, 130021, China.
Jilin Provincial Key Laboratory of Water Resources and Environment, Jilin University, Changchun, 130021, China.
Environ Sci Pollut Res Int. 2023 Apr;30(18):53191-53203. doi: 10.1007/s11356-023-25890-0. Epub 2023 Feb 28.
In the traditional linked simulation-optimization method, solving the optimization model requires massive invoking of the groundwater numerical simulation model, which causes a huge computational load. In the present study, a surrogate model of the origin simulation model was developed using a bidirectional long and short-term memory neural network method (BiLSTM). Compared with the surrogate models built by shallow learning methods (BP neural network) and traditional LSTM methods, the surrogate model built by BiLSTM has higher accuracy and better generalization performance while reducing the computational load. The BiLSTM surrogate model had the highest R of the three with 0.9910 and the lowest RMSE with 3.7732 g/d. The BiLSTM surrogate model was linked to the optimization model and solved using the sparrow search algorithm based on Sobol sequences (SSAS). SSAS enhances the diversity of the initial population of sparrows by introducing Sobol sequences and introduces nonlinear inertia weights to control the search range and search efficiency. Compared with SSA, SSAS has stronger global search ability and faster search efficiency. And SSAS identifies the contamination source location and release intensity stably and reliably. The average relative error of SSAS for the identification of source location is 9.4%, and the average relative error for the identification of source intensity is 1.83%, which are both lower than that of SSA at 11.12% and 3.03%. This study also applied the Cholesky decomposition method to establish a Gaussian field for hydraulic conductivity to evaluate the feasibility of the simulation-optimization method.
在传统的耦合模拟优化方法中,求解优化模型需要大量调用地下水数值模拟模型,这会导致巨大的计算负荷。在本研究中,采用双向长短期记忆神经网络方法(BiLSTM)建立了原始模拟模型的替代模型。与通过浅层学习方法(BP神经网络)和传统LSTM方法构建的替代模型相比,BiLSTM构建的替代模型在降低计算负荷的同时具有更高的精度和更好的泛化性能。BiLSTM替代模型在三者中R最高,为0.9910,RMSE最低,为3.7732 g/d。将BiLSTM替代模型与优化模型相耦合,并使用基于索博尔序列的麻雀搜索算法(SSAS)进行求解。SSAS通过引入索博尔序列增强了麻雀初始种群的多样性,并引入非线性惯性权重来控制搜索范围和搜索效率。与SSA相比,SSAS具有更强的全局搜索能力和更快的搜索效率。并且SSAS能够稳定可靠地识别污染源位置和释放强度。SSAS识别源位置的平均相对误差为9.4%,识别源强度的平均相对误差为1.83%,均低于SSA的11.12%和3.03%。本研究还应用乔列斯基分解方法建立了渗透系数的高斯场,以评估模拟优化方法的可行性。