Entropy (Jul 2024)

Probabilistic Estimation and Control of Dynamical Systems Using Particle Filter with Adaptive Backward Sampling

  • Taketo Omi,
  • Toshiaki Omori

DOI
https://doi.org/10.3390/e26080653
Journal volume & issue
Vol. 26, no. 8
p. 653

Abstract

Read online

Estimating and controlling dynamical systems from observable time-series data are essential for understanding and manipulating nonlinear dynamics. This paper proposes a probabilistic framework for simultaneously estimating and controlling nonlinear dynamics under noisy observation conditions. Our proposed method utilizes the particle filter not only as a state estimator and a prior estimator for the dynamics but also as a controller. This approach allows us to handle the nonlinearity of the dynamics and uncertainty of the latent state. We apply two distinct dynamics to verify the effectiveness of our proposed framework: a chaotic system defined by the Lorenz equation and a nonlinear neuronal system defined by the Morris–Lecar neuron model. The results indicate that our proposed framework can simultaneously estimate and control complex nonlinear dynamical systems.

Keywords