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EMPIRICAL EVALUATION OF BAYESIAN OPTIMIZATION IN PARAMETRIC TUNING OF CHAOTIC SYSTEMS

机译:混沌系统参数调整中贝叶斯优化的实证评价

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摘要

In this work, we consider the Bayesian optimization (BO) approach for parametric tuning of complex chaotic systems. Such problems arise, for instance, in tuning the sub-grid-scale parameterizations in weather and climate models. For such problems, the tuning procedure is generally based on a performance metric which measures how well the tuned model fits the data. This tuning is often a computationally expensive task. We show that BO, as a tool for finding the extrema of computationally expensive objective functions, is suitable for such tuning tasks. In the experiments, we consider tuning parameters of two systems: a simplified atmospheric model and a low-dimensional chaotic system. We show that BO is able to tune parameters of both the systems with a low number of objective function evaluations.
机译:在这项工作中,我们考虑贝叶斯优化(BO)方法对复杂混沌系统进行参数调整。例如,在调整天气和气候模型中的子网格规模参数设置时会出现此类问题。对于此类问题,调整过程通常基于性能指标,该指标衡量调整后的模型对数据的拟合程度。这种调整通常是一项计算量很大的任务。我们表明,BO作为查找计算上昂贵的目标函数极值的工具,适用于此类调整任务。在实验中,我们考虑了两个系统的调整参数:简化的大气模型和低维混沌系统。我们表明,BO能够以较少数量的目标函数求值来调整两个系统的参数。

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