Abstract
AbstractLiving organisms dynamically and flexibly operate a great number of components. As one of such redundant control mechanisms, low-dimensional coordinative structures among multiple components have been investigated. However, structures extracted from the conventional statistical dimensionality reduction methods do not reflect dynamical properties in principle. Here we regard coordinative structures in biological periodic systems with unknown and redundant dynamics as a nonlinear limit-cycle oscillation, and apply a data-driven operator-theoretic spectral analysis, which obtains dynamical properties of coordinative structures such as frequency and phase from the estimated eigenvalues and eigenfunctions of a composition operator. Using segmental angle series during human walking as an example, we first extracted the coordinative structures based on dynamics; e.g. the speed-independent coordinative structures in the harmonics of gait frequency. Second, we discovered the speed-dependent time-evolving behaviours of the phase by estimating the eigenfunctions via our approach on the conventional low-dimensional structures. We also verified our approach using the double pendulum and walking model simulation data. Our results of locomotion analysis suggest that our approach can be useful to analyse biological periodic phenomena from the perspective of nonlinear dynamical systems.
Funder
MEXT | Japan Society for the Promotion of Science
Council for Science, Technology and Innovation
The Cross-ministerial Strategic Innovation Promotion Program
Publisher
Springer Science and Business Media LLC
Reference62 articles.
1. Bernstein, N. The coordination and regulation of movement (Pergamon Press, London, 1967).
2. Pfeifer, R., Lungarella, M. & Iida, F. The challenges ahead for bio-inspired ’soft’ robotics. Commun. ACM 55, 76–87 (2012).
3. Taga, G., Yamaguchi, Y. & Shimizu, H. Self-organized control of bipedal locomotion by neural oscillators in unpredictable environment. Biol. Cybern. 65, 147–159 (1991).
4. Fujii, K., Yoshihara, Y., Tanabe, H. & Yamamoto, Y. Switching adaptability in human-inspired sidesteps: A minimal model. Front. Hum. Neurosci. 11, 298 (2017).
5. Lillicrap, T. P. et al. Continuous control with deep reinforcement learning. arXiv preprint arXiv:1509.02971 (2015).
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