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通过运输模型优化降低长期补救成本。

Reducing long-term remedial costs by transport modeling optimization.

作者信息

Becker David, Minsker Barbara, Greenwald Robert, Zhang Yan, Harre Karla, Yager Kathleen, Zheng Chunmiao, Peralta Richard

机构信息

US Army Corps of Engineers, Hazardous, Toxic, and Radioactive Waste Center of Expertise, 12565 W. Center Road, Omaha, NE 68144-3869, USA.

出版信息

Ground Water. 2006 Nov-Dec;44(6):864-75. doi: 10.1111/j.1745-6584.2006.00242.x.

Abstract

The Department of Defense (DoD) Environmental Security Technology Certification Program and the Environmental Protection Agency sponsored a project to evaluate the benefits and utility of contaminant transport simulation-optimization algorithms against traditional (trial and error) modeling approaches. Three pump-and-treat facilities operated by the DoD were selected for inclusion in the project. Three optimization formulations were developed for each facility and solved independently by three modeling teams (two using simulation-optimization algorithms and one applying trial-and-error methods). The results clearly indicate that simulation-optimization methods are able to search a wider range of well locations and flow rates and identify better solutions than current trial-and-error approaches. The solutions found were 5% to 50% better than those obtained using trial-and-error (measured using optimal objective function values), with an average improvement of approximately 20%. This translated into potential savings ranging from 600,000 dollars to 10,000,000 dollars for the three sites. In nearly all cases, the cost savings easily outweighed the costs of the optimization. To reduce computational requirements, in some cases the simulation-optimization groups applied multiple mathematical algorithms, solved a series of modified subproblems, and/or fit "meta-models" such as neural networks or regression models to replace time-consuming simulation models in the optimization algorithm. The optimal solutions did not account for the uncertainties inherent in the modeling process. This project illustrates that transport simulation-optimization techniques are practical for real problems. However, applying the techniques in an efficient manner requires expertise and should involve iterative modification to the formulations based on interim results.

摘要

美国国防部(DoD)环境安全技术认证计划和美国环境保护局赞助了一个项目,旨在评估污染物运移模拟优化算法相对于传统(试错法)建模方法的优势和实用性。该项目选取了国防部运营的三个抽提处理设施。针对每个设施开发了三种优化公式,并由三个建模团队独立求解(两个团队使用模拟优化算法,一个团队采用试错法)。结果清楚地表明,模拟优化方法能够搜索更广泛的井位和流量范围,并且比当前的试错法能找到更好的解决方案。找到的解决方案比使用试错法得到的方案(以最优目标函数值衡量)要好5%至50%,平均改善约20%。这为三个场地带来了60万美元至1000万美元的潜在节省。几乎在所有情况下,成本节省都轻松超过了优化成本。为了降低计算需求,在某些情况下,模拟优化团队应用了多种数学算法,求解了一系列修改后的子问题,和/或拟合了“元模型”,如神经网络或回归模型,以在优化算法中取代耗时的模拟模型。最优解未考虑建模过程中固有的不确定性。该项目表明,运移模拟优化技术对于实际问题是可行的。然而,以高效方式应用这些技术需要专业知识,并且应根据中期结果对公式进行迭代修改。

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