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Data-Driven Modeling and Prediction of Complex Spatio-Temporal Dynamics in Excitable Media

机译:激发介质中复杂时空动力学的数据驱动建模与预测

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Spatio-temporal chaotic dynamics in a two-dimensional excitable medium is (cross-) estimated using a machine learning method based on a convolutional neural network combined with a conditional random field. The performance of this approach is demonstrated using the four variables of the Bueno-Orovio-Fenton-Cherry model describing electrical excitation waves in cardiac tissue. Using temporal sequences of two-dimensional fields representing the values of one or more of the model variables as input the network successfully cross-estimated all variables and provides excellent forecasts when applied iteratively.
机译:使用基于卷积神经网络结合条件随机场的机器学习方法(交叉)估计二维可激发介质中的时空混沌动力学。使用描述心脏组织中电激发波的Bueno-Orovio-Fenton-Cherry模型的四个变量证明了该方法的性能。使用二维字段的时间序列表示一个或多个模型变量的值作为输入,网络成功地交叉估计了所有变量,并在迭代应用时提供了出色的预测。

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