Bury Thomas M, Dylewsky Daniel, Bauch Chris T, Anand Madhur, Glass Leon, Shrier Alvin, Bub Gil
Department of Physiology, McGill University, 3655 Promenade Sir William Osler, Montreal, Canada.
Department of Applied Mathematics, University of Waterloo, Waterloo, Canada.
Nat Commun. 2023 Oct 10;14(1):6331. doi: 10.1038/s41467-023-42020-z.
Many natural and man-made systems are prone to critical transitions-abrupt and potentially devastating changes in dynamics. Deep learning classifiers can provide an early warning signal for critical transitions by learning generic features of bifurcations from large simulated training data sets. So far, classifiers have only been trained to predict continuous-time bifurcations, ignoring rich dynamics unique to discrete-time bifurcations. Here, we train a deep learning classifier to provide an early warning signal for the five local discrete-time bifurcations of codimension-one. We test the classifier on simulation data from discrete-time models used in physiology, economics and ecology, as well as experimental data of spontaneously beating chick-heart aggregates that undergo a period-doubling bifurcation. The classifier shows higher sensitivity and specificity than commonly used early warning signals under a wide range of noise intensities and rates of approach to the bifurcation. It also predicts the correct bifurcation in most cases, with particularly high accuracy for the period-doubling, Neimark-Sacker and fold bifurcations. Deep learning as a tool for bifurcation prediction is still in its nascence and has the potential to transform the way we monitor systems for critical transitions.
许多自然和人造系统都容易发生临界转变——动力学中突然且可能具有破坏性的变化。深度学习分类器可以通过从大型模拟训练数据集中学习分岔的通用特征,为临界转变提供早期预警信号。到目前为止,分类器仅被训练用于预测连续时间分岔,而忽略了离散时间分岔所特有的丰富动力学。在此,我们训练了一个深度学习分类器,为余维数为一的五种局部离散时间分岔提供早期预警信号。我们在来自生理学、经济学和生态学中使用的离散时间模型的模拟数据,以及经历倍周期分岔的自发跳动的鸡心脏聚集体的实验数据上测试了该分类器。在广泛的噪声强度和接近分岔的速率下,该分类器显示出比常用早期预警信号更高的灵敏度和特异性。它在大多数情况下也能预测正确的分岔,对于倍周期、涅马克 - 萨克和折叠分岔的预测准确率尤其高。深度学习作为一种分岔预测工具仍处于起步阶段,并且有可能改变我们监测系统临界转变的方式。