Neural networks have proven to be remarkably successful for a wide range of complicated tasks, from image recognition and object detection to speech recognition and machine translation. One of their successes is the skill in prediction of future dynamics given a suitable training set of data. Previous studies have shown how Echo State Networks (ESNs), a subset of Recurrent Neural Networks, can successfully predict even chaotic systems for times longer than the Lyapunov time. This study shows that, remarkably, ESNs can successfully predict dynamical behavior that is qualitatively different from any behavior contained in the training set. Evidence is provided for a fluid dynamics problem where the flow can transition between laminar (ordered) and turbulent (disordered) regimes. Despite being trained on the turbulent regime only, ESNs are found to predict laminar behavior. Moreover, the statistics of turbulent-to-laminar and laminar-to-turbulent transitions are also predicted successfully, and the utility of ESNs in acting as an early-warning system for transition is discussed. These results are expected to be widely applicable to data-driven modelling of temporal behaviour in a range of physical, climate, biological, ecological and finance models characterized by the presence of tipping points and sudden transitions between several competing states.
翻译:事实证明,从图像识别和对象探测到语音识别和机器翻译等一系列复杂任务,神经网络非常成功,从图像识别和语音识别到语音识别和机器翻译,其成功之处之一是根据一套合适的培训数据预测未来动态的技能。以前的研究表明,一个经常性神经网络子子集的回声状态网络(ESNs)能够成功地预测甚至混乱系统的时间比Lyapunov时间长一些时间。研究表明,显著的是,ESNs能够成功地预测动态行为,从质量上看不同于培训集中包含的任何行为。提供了证据,说明流动可以在 laminar(有秩序的)和动荡(有秩序的)制度之间过渡的流动性动态问题。尽管仅接受过关于动荡制度的培训,但ESNs仍然能够预测Laminar行为。此外,动荡到laminar和laminar-burnor-builent的过渡统计数据也得到了成功的预测,而且ESNs作为过渡的早期警报系统的效用也得到了讨论。这些结果预计将广泛适用于一系列实体、气候、生物、生态和不断变化的金融状态之间的突然转变模式。