首页> 外文会议>Conference on Noise in Complex Systems and Stochastic Dynamics Jun 2-4, 2003 Santa Fe, New Mexico, USA >Method for detecting the signature of noise-induced structures in spatiotemporal data sets: An application to excitable media
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Method for detecting the signature of noise-induced structures in spatiotemporal data sets: An application to excitable media

机译:时空数据集中检测噪声诱发结构特征的方法:在可激发介质中的应用

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We formulate mathematical tools for analyzing spatiotemporal data sets. The tools are based on nearest-neighbor considerations similar to cellular automata. One of the analysis tools allows to reconstruct the noise intensity in a data set and is an appropriate method for detecting a variety of noise-induced phenomena in spatiotemporal data. The functioning of these methods is illustrated on sample data generated with the forest fire model and with networks of nonlinear oscillators. It is seen that these methods allow the characterization of spatiotemporal stochastic resonance (STSR) in experimental data. Application of these tools to biological spatiotemporal patterns is discussed. For one specific example, the slime mould Dictyostelium discoideum, it is seen, how transitions between different patterns are clearly marked by changes in the spatiotemporal observables.
机译:我们制定了用于分析时空数据集的数学工具。这些工具基于类似于细胞自动机的最近邻因素。其中一种分析工具可以重建数据集中的噪声强度,并且是一种检测时空数据中各种由噪声引起的现象的合适方法。这些方法的功能在森林火灾模型和非线性振荡器网络生成的样本数据上得到了说明。可以看出,这些方法可以表征实验数据中的时空随机共振(STSR)。讨论了这些工具在生物时空模式中的应用。在一个特定的例子中,可以看到粘液霉菌盘基网柄菌(Dictoyostelium discoideum)如何通过时空观测值的变化清楚地标记出不同模式之间的过渡。

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