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Marine ecosystem model calibration with real data using enhanced surrogate-based optimization

机译:使用增强的基于替代的优化对真实数据进行海洋生态系统模型校准

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摘要

We have already shown in a previous methodological work that the surrogate-based optimization (SBO) approach can be successful and computationally very efficient when reconstructing parameters in a typical nonlinear, time-dependent marine ecosystem model, where a one-dimensional application has been considered to test the method's functionality in a first step. The application on real (measurement) data is covered in this paper. Essential here are a special model data treatment and further methodological enhancements which allow us to improve the robustness of the algorithm and the accuracy of the solution. By numerical experiments, we demonstrate that SBO is able to yield a solution close to the original model's optimum while time savings are again up to 85% when compared to a conventional direct optimization of the original model.
机译:我们在先前的方法学工作中已经表明,在典型的非线性,时间相关的海洋生态系统模型中重建参数时,基于替代的优化(SBO)方法可以成功并且计算效率很高,其中已经考虑了一维应用程序在第一步中测试该方法的功能。本文涵盖了实际(测量)数据的应用。这里必不可少的是特殊的模型数据处理和进一步的方法改进,使我们能够提高算法的鲁棒性和解决方案的准确性。通过数值实验,我们证明,与传统的直接优化原始模型相比,SBO能够提供接近原始模型最优值的解决方案,同时又节省了高达85%的时间。

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