Department of Civil Engineering, Indian Institute of Technology, Hauzkhas, New Delhi, India.
J Contam Hydrol. 2013 Aug;151:105-16. doi: 10.1016/j.jconhyd.2013.05.003. Epub 2013 May 26.
A methodology based on support vector machine and particle swarm optimization techniques (SVM-PSO) was used in this study to determine an optimal pumping rate and well location to achieve an optimal cost of an in-situ bioremediation system. In the first stage of the two stage methodology suggested for optimal in-situ bioremediation design, the optimal number of wells and their locations was determined from preselected candidate well locations. The pumping rate and well location in the first stage were subsequently optimized in the second stage of the methodology. The highly nonlinear system of equations governing in-situ bioremediation comprises the equations of flow and solute transport coupled with relevant biodegradation kinetics. A finite difference model was developed to simulate the process of in-situ bioremediation using an Alternate-Direction Implicit technique. This developed model (BIOFDM) yields the spatial and temporal distribution of contaminant concentration for predefined initial and boundary conditions. BIOFDM was later validated by comparing the simulated results with those obtained using BIOPLUME III for the case study of Shieh and Peralta (2005). The results were found to be in close agreement. Moreover, since the solution of the highly nonlinear equation otherwise requires significant computational effort, the computational burden in this study was managed within a practical time frame by replacing the BIOFDM model with a trained SVM model. Support Vector Machine which generates fast solutions in real time was considered to be a universal function approximator in the study. Apart from reducing the computational burden, this technique generates a set of near optimal solutions (instead of a single optimal solution) and creates a re-usable data base that could be used to address many other management problems. Besides this, the search for an optimal pumping pattern was directed by a simple PSO technique and a penalty parameter approach was adopted to handle the constraints in the PSO. The results showed that the costs involved in the proposed management solution were consistent with that resulting from other nontraditional optimization techniques which use embedded/linked bioremediation simulation models. Moreover, an optimal transient pumping strategy resulted in an overall reduction in pumping cost by almost 20% when compared to cases where a steady state pumping strategy was adopted. A considerable reduction in the number of simulations was achieved using the SVM approach.
本研究采用基于支持向量机和粒子群优化技术的方法(SVM-PSO),以确定原位生物修复系统的最佳成本的最佳泵送率和井位。在所建议的两阶段原位生物修复设计最佳化方法的第一阶段中,从预选的候选井位确定最佳井数及其位置。随后,在方法的第二阶段优化了第一阶段的泵送率和井位。控制原位生物修复的高度非线性系统包括流动和溶质传输方程以及相关的生物降解动力学方程。采用交替方向隐式技术开发了一个有限差分模型来模拟原位生物修复过程。该开发模型(BIOFDM)根据预定义的初始和边界条件生成污染物浓度的时空分布。BIOFDM 后来通过将模拟结果与 Shieh 和 Peralta(2005 年)的案例研究中使用 BIOPLUME III 获得的结果进行比较来验证。结果发现非常吻合。此外,由于否则需要大量计算工作量来求解高度非线性方程,因此本研究通过用训练有素的 SVM 模型代替 BIOFDM 模型来管理计算负担在实际时间范围内。支持向量机在实时生成快速解决方案方面被认为是该研究中的通用函数逼近器。除了降低计算负担外,该技术还生成了一组接近最佳的解决方案(而不是单个最佳解决方案),并创建了可用于解决许多其他管理问题的可重复使用数据库。除此之外,通过简单的 PSO 技术引导寻找最佳的泵送模式,并采用惩罚参数方法来处理 PSO 中的约束。结果表明,所提出的管理解决方案所涉及的成本与使用嵌入式/链接生物修复模拟模型的其他非传统优化技术所产生的成本一致。此外,与采用稳态泵送策略相比,采用最优瞬态泵送策略可将泵送成本降低近 20%。使用 SVM 方法可以大大减少模拟次数。