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Swarm intelligence-based solver for parameter estimation of laboratory through-diffusion transport of contaminants

机译:基于群体智能的求解器,用于评估污染物在实验室中的扩散传播过程中的参数

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摘要

Theoretical approaches are of fundamental importance to predict the potential impact of waste disposal facilities on ground water contamination. Appropriate design parameters are generally estimated by fitting theoretical models to data gathered from field monitoring or laboratory experiments. Transient through-diffusion tests are generally conducted in the laboratory to estimate the mass transport parameters of the proposed barrier material. These parameters are usually estimated either by approximate eye-fitting calibration or by combining the solution of the direct problem with any available gradient-based techniques. In this work, an automated, gradient-free solver is developed to estimate the mass transport parameters of a transient through-diffusion model. The proposed inverse model uses a particle swarm optimization (PSO) algorithm that is based on the social behavior of animals searching for food sources. The finite difference numerical solution of the forward model is integrated with the PSO algorithm to solve the inverse problem of parameter estimation. The working principle of the new solver is demonstrated and mass transport parameters are estimated from laboratory through-diffusion experimental data. An inverse model based on the standard gradient-based technique is formulated to compare with the proposed solver. A detailed comparative study is carried out between conventional methods and the proposed solver. The present automated technique is found to be very efficient and robust. The mass transport parameters are obtained with great precision.
机译:理论方法对于预测废物处理设施对地下水污染的潜在影响至关重要。通常,通过将理论模型与现场监测或实验室实验收集的数据拟合,可以估算出合适的设计参数。通常在实验室中进行瞬态扩散测试,以估计拟议的阻隔材料的传质参数。这些参数通常通过近似眼睛拟合校准或通过将直接问题的解决方案与任何可用的基于梯度的技术相结合来估计。在这项工作中,开发了一种自动,无梯度的求解器,以估算瞬态穿透模型的传质参数。提出的逆模型使用粒子群优化(PSO)算法,该算法基于动物寻找食物来源的社会行为。将正向模型的有限差分数值解与PSO算法集成在一起,以解决参数估计的反问题。演示了新求解器的工作原理,并根据实验室的扩散实验数据估算了传质参数。建立了基于标准梯度技术的逆模型,以与提出的求解器进行比较。在常规方法和提出的求解器之间进行了详细的比较研究。发现本自动化技术是非常有效和鲁棒的。可以非常精确地获得传质参数。

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