Doherty John
Department of Civil Engineering, University of Queensland, St. Lucia, Queensland, 4072 Australia.
Ground Water. 2003 Mar-Apr;41(2):170-7. doi: 10.1111/j.1745-6584.2003.tb02580.x.
Use of nonlinear parameter estimation techniques is now commonplace in ground water model calibration. However, there is still ample room for further development of these techniques in order to enable them to extract more information from calibration datasets, to more thoroughly explore the uncertainty associated with model predictions, and to make them easier to implement in various modeling contexts. This paper describes the use of "pilot points" as a methodology for spatial hydraulic property characterization. When used in conjunction with nonlinear parameter estimation software that incorporates advanced regularization functionality (such as PEST), use of pilot points can add a great deal of flexibility to the calibration process at the same time as it makes this process easier to implement. Pilot points can be used either as a substitute for zones of piecewise parameter uniformity, or in conjunction with such zones. In either case, they allow the disposition of areas of high and low hydraulic property value to be inferred through the calibration process, without the need for the modeler to guess the geometry of such areas prior to estimating the parameters that pertain to them. Pilot points and regularization can also be used as an adjunct to geostatistically based stochastic parameterization methods. Using the techniques described herein, a series of hydraulic property fields can be generated, all of which recognize the stochastic characterization of an area at the same time that they satisfy the constraints imposed on hydraulic property values by the need to ensure that model outputs match field measurements. Model predictions can then be made using all of these fields as a mechanism for exploring predictive uncertainty.
非线性参数估计技术在地下水模型校准中如今已很常见。然而,为使这些技术能从校准数据集中提取更多信息、更全面地探究与模型预测相关的不确定性,并使其在各种建模环境中更易于实施,这些技术仍有很大的进一步发展空间。本文描述了使用“试点”作为一种空间水力特性表征方法。当与包含先进正则化功能的非线性参数估计软件(如PEST)结合使用时,试点的使用可以为校准过程增添极大的灵活性,同时使该过程更易于实施。试点既可以替代分段参数均匀性区域,也可以与这些区域结合使用。在任何一种情况下,它们都能通过校准过程推断出高水力特性值和低水力特性值区域的分布情况,而无需建模者在估计与这些区域相关的参数之前猜测这些区域的几何形状。试点和正则化还可以用作基于地质统计学的随机参数化方法的辅助手段。使用本文所述的技术,可以生成一系列水力特性场,所有这些场在认识到一个区域的随机特征的同时,还满足因确保模型输出与现场测量结果匹配而对水力特性值施加的约束。然后可以使用所有这些场进行模型预测,以此作为探究预测不确定性的一种机制。