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Improving model fidelity and sensitivity for complex systems through empirical information theory

机译:通过经验信息论提高复杂系统的模型保真度和灵敏度

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摘要

In many situations in contemporary science and engineering, the analysis and prediction of crucial phenomena occur often through complex dynamical equations that have significant model errors compared with the true signal in nature. Here, a systematic information theoretic framework is developed to improve model fidelity and sensitivity for complex systems including perturbation formulas and multimodel ensembles that can be utilized to improve both aspects of model error simultaneously. A suite of unambiguous test models is utilized to demonstrate facets of the proposed framework. These results include simple examples of imperfect models with perfect equilibrium statistical fidelity where there are intrinsic natural barriers to improving imperfect model sensitivity. Linear stochastic models with multiple spatiotemporal scales are utilized to demonstrate this information theoretic approach to equilibrium sensitivity, the role of increasing spatial resolution in the information metric for model error, and the ability of imperfect models to capture the true sensitivity. Finally, an instructive statistically nonlinear model with many degrees of freedom, mimicking the observed non-Gaussian statistical behavior of tracers in the atmosphere, with corresponding imperfect eddy-diffusivity parameterization models are utilized here. They demonstrate the important role of additional stochastic forcing of imperfect models in order to systematically improve the information theoretic measures of fidelity and sensitivity developed here.
机译:在当代科学和工程学的许多情况下,关键现象的分析和预测通常是通过复杂的动力学方程式进行的,而与自然界中的真实信号相比,动力学方程式具有重大的模型误差。在这里,开发了一个系统的信息理论框架来提高复杂系统的模型保真度和敏感性,包括可用来同时改善模型误差的两个方面的微扰公式和多模型集合。使用了一组明确的测试模型来演示所提出框架的各个方面。这些结果包括具有完美均衡统计保真度的不完美模型的简单示例,其中存在固有的自然障碍,可以提高不完美模型的灵敏度。利用具有多个时空尺度的线性随机模型来证明这种信息理论方法对平衡敏感性,提高空间分辨率在模型误差的信息度量中的作用以及不完美模型捕获真实敏感性的能力。最后,这里使用了一个具有指导意义的,具有许多自由度的统计非线性模型,该模型模仿了大气中示踪剂的观察到的非高斯统计行为,以及相应的不完善的涡流扩散参数化模型。他们展示了不完全模型的附加随机强迫的重要作用,以便系统地改进此处开发的保真度和敏感性的信息理论测度。

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