论文标题
数据驱动的预测和控制混乱流中极端事件的控制
Data-driven prediction and control of extreme events in a chaotic flow
论文作者
论文摘要
极端事件是非线性系统状态突然发生的变化。在流体动力学中,极端事件可能会对系统的最佳设计和可操作性产生不利影响,这要求对其预测和控制进行准确的方法。在本文中,我们提出了一种数据驱动的方法,以预测和控制混乱的剪切流中极端事件。该方法基于回声状态网络,该网络是一种在时间依赖数据集中学习时间相关性的储层计算。目标是五倍。首先,我们从二进制分类中利用临时指标来分析(i)网络实际上发生了多少个极端事件(精度),以及(ii)网络丢失了多少个极端事件(回忆)。我们将原则性的策略应用于最佳的超参数选择,这是网络性能的关键。其次,我们专注于时间准确的极端事件预测。我们表明,ECHO状态网络能够预测超出可预测性时间的极端事件,即超过五个Lyapunov时代。第三,我们从统计的角度关注对极端事件的长期预测。通过使用包含不融合统计数据的数据集训练网络,我们表明网络能够学习和推断流的长期统计数据。换句话说,网络能够从相对较短的时间序列中推断出时间。第四,我们设计了一种简单有效的控制策略,以防止极端事件发生。相对于不受控制的系统,控制策略将极端事件的发生降低到一个数量级。最后,我们分析了一系列雷诺数字的结果的鲁棒性。我们表明,这些网络在各种范围内的表现都很好。
An extreme event is a sudden and violent change in the state of a nonlinear system. In fluid dynamics, extreme events can have adverse effects on the system's optimal design and operability, which calls for accurate methods for their prediction and control. In this paper, we propose a data-driven methodology for the prediction and control of extreme events in a chaotic shear flow. The approach is based on echo state networks, which are a type of reservoir computing that learn temporal correlations within a time-dependent dataset. The objective is five-fold. First, we exploit ad-hoc metrics from binary classification to analyse (i) how many of the extreme events predicted by the network actually occur in the test set (precision), and (ii) how many extreme events are missed by the network (recall). We apply a principled strategy for optimal hyperparameter selection, which is key to the networks' performance. Second, we focus on the time-accurate prediction of extreme events. We show that echo state networks are able to predict extreme events well beyond the predictability time, i.e., up to more than five Lyapunov times. Third, we focus on the long-term prediction of extreme events from a statistical point of view. By training the networks with datasets that contain non-converged statistics, we show that the networks are able to learn and extrapolate the flow's long-term statistics. In other words, the networks are able to extrapolate in time from relatively short time series. Fourth, we design a simple and effective control strategy to prevent extreme events from occurring. The control strategy decreases the occurrence of extreme events up to one order of magnitude with respect to the uncontrolled system. Finally, we analyse the robustness of the results for a range of Reynolds numbers. We show that the networks perform well across a wide range of regimes.