Intera Inc., Fort Collins, CO, USA.
U.S. Geological Survey, Lower Mississippi Gulf Water Science Center, Nashville, TN, USA.
Ground Water. 2021 Nov;59(6):788-798. doi: 10.1111/gwat.13106. Epub 2021 Jun 8.
Realistic environmental models used for decision making typically require a highly parameterized approach. Calibration of such models is computationally intensive because widely used parameter estimation approaches require individual forward runs for each parameter adjusted. These runs construct a parameter-to-observation sensitivity, or Jacobian, matrix used to develop candidate parameter upgrades. Parameter estimation algorithms are also commonly adversely affected by numerical noise in the calculated sensitivities within the Jacobian matrix, which can result in unnecessary parameter estimation iterations and less model-to-measurement fit. Ideally, approaches to reduce the computational burden of parameter estimation will also increase the signal-to-noise ratio related to observations influential to the parameter estimation even as the number of forward runs decrease. In this work a simultaneous increments, an iterative ensemble smoother (IES), and a randomized Jacobian approach were compared to a traditional approach that uses a full Jacobian matrix. All approaches were applied to the same model developed for decision making in the Mississippi Alluvial Plain, USA. Both the IES and randomized Jacobian approach achieved a desirable fit and similar parameter fields in many fewer forward runs than the traditional approach; in both cases the fit was obtained in fewer runs than the number of adjustable parameters. The simultaneous increments approach did not perform as well as the other methods due to inability to overcome suboptimal dropping of parameter sensitivities. This work indicates that use of highly efficient algorithms can greatly speed parameter estimation, which in turn increases calibration vetting and utility of realistic models used for decision making.
用于决策的现实环境模型通常需要高度参数化的方法。由于广泛使用的参数估计方法需要为每个调整的参数进行单独的正向运行,因此此类模型的校准计算量很大。这些运行构建了一个参数到观测的灵敏度(或雅可比矩阵),用于开发候选参数升级。参数估计算法也经常受到雅可比矩阵中计算灵敏度中的数值噪声的不利影响,这可能导致不必要的参数估计迭代和较少的模型到测量的拟合。理想情况下,减少参数估计计算负担的方法也将增加与对参数估计有影响的观测相关的信噪比,即使正向运行次数减少。在这项工作中,同时增量法、迭代集合平滑器(IES)和随机化雅可比方法与传统方法进行了比较,传统方法使用完整的雅可比矩阵。所有方法都应用于为美国密西西比河冲积平原的决策制定而开发的相同模型。IES 和随机化雅可比方法在比传统方法少得多的正向运行中实现了令人满意的拟合和相似的参数场;在两种情况下,拟合都是在少于可调参数数量的运行中获得的。由于无法克服参数灵敏度的次优下降,同时增量方法的性能不如其他方法。这项工作表明,使用高效算法可以大大加快参数估计的速度,从而提高用于决策的现实模型的校准验证和实用性。