Meyer-Ortmanns Hildegard
School of Science, Constructor University, Bremen, Germany.
Complexity Science Hub Vienna, Vienna, Austria.
Front Netw Physiol. 2023 Nov 8;3:1276401. doi: 10.3389/fnetp.2023.1276401. eCollection 2023.
Heteroclinic networks are a mathematical concept in dynamic systems theory that is suited to describe metastable states and switching events in brain dynamics. The framework is sensitive to external input and, at the same time, reproducible and robust against perturbations. Solutions of the corresponding differential equations are spatiotemporal patterns that are supposed to encode information both in space and time coordinates. We focus on the concept of winnerless competition as realized in generalized Lotka-Volterra equations and report on results for binding and chunking dynamics, synchronization on spatial grids, and entrainment to heteroclinic motion. We summarize proposals of how to design heteroclinic networks as desired in view of reproducing experimental observations from neuronal networks and discuss the subtle role of noise. The review is on a phenomenological level with possible applications to brain dynamics, while we refer to the literature for a rigorous mathematical treatment. We conclude with promising perspectives for future research.
异宿网络是动态系统理论中的一个数学概念,适用于描述脑动力学中的亚稳态和切换事件。该框架对外部输入敏感,同时具有可重复性且对扰动具有鲁棒性。相应微分方程的解是时空模式,其应在空间和时间坐标中编码信息。我们关注广义洛特卡 - 沃尔泰拉方程中实现的无胜者竞争概念,并报告绑定和组块动力学、空间网格上的同步以及对异宿运动的同步的研究结果。我们总结了关于如何根据再现神经网络的实验观察结果来设计所需异宿网络的建议,并讨论了噪声的微妙作用。本综述处于现象学层面,可能应用于脑动力学,而严格的数学处理我们参考了相关文献。我们以对未来研究有前景的展望作为结论。