AI Agents 相关度: 6/10

Storage and selection of multiple chaotic attractors in minimal reservoir computers

Francesco Martinuzzi, Holger Kantz
arXiv: 2603.15155v1 发布: 2026-03-16 更新: 2026-03-16

AI 摘要

研究了最小储备池计算机存储和选择多个混沌吸引子的能力,发现其存储能力强但切换能力弱。

主要贡献

  • 证明了最小架构可以存储多个混沌吸引子
  • 发现最小架构在任务切换方面存在困难
  • 研究了不同拓扑结构对多吸引子性能的影响

方法论

在28个混沌系统对上测试了不同最小储备池拓扑结构存储和选择多个混沌吸引子的性能。

原文摘要

Modern predictive modeling increasingly calls for a single learned dynamical substrate to operate across multiple regimes. From a dynamical-systems viewpoint, this capability decomposes into the storage of multiple attractors and the selection of the appropriate attractor in response to contextual cues. In reservoir computing (RC), multi-attractor learning has largely been pursued using large, randomly wired reservoirs, on the assumption that stochastic connectivity is required to generate sufficiently rich internal dynamics. At the same time, recent work shows that minimal deterministic reservoirs can match random designs for single-system chaotic forecasting. Under which conditions can minimal topologies learn multiple chaotic attractors? In this paper, we find that minimal architectures can successfully store multiple chaotic attractors. However, these same architectures struggle with task switching, in which the system must transition between attractors in response to external cues. We test storage and selection on all 28 unordered system pairs formed from eight three-dimensional chaotic systems. We do not observe a robust dependence of multi-attractor performance on reservoir topology. Over the ten topologies investigated, we find that no single one consistently outperforms the others for either storage or cue-dependent selection. Our results suggest that while minimal substrates possess the representational capacity to model coexisting attractors, they may lack the robust temporal memory required for cued transitions.

标签

储备池计算 混沌系统 动态系统 多吸引子 机器学习

arXiv 分类

nlin.CD cs.LG