Implementation of Kalman Filtering with Spiking Neural Networks

Sensors (Basel). 2022 Nov 16;22(22):8845. doi: 10.3390/s22228845.

Abstract

A Kalman filter can be used to fill space-state reconstruction dynamics based on knowledge of a system and partial measurements. However, its performance relies on accurate modeling of the system dynamics and a proper characterization of the uncertainties, which can be hard to obtain in real-life scenarios. In this work, we explore how the values of a Kalman gain matrix can be estimated by using spiking neural networks through a combination of biologically plausible neuron models with spike-time-dependent plasticity learning algorithms. The performance of proposed neural architecture is verified with simulations of some representative nonlinear systems, which show promising results. This approach traces a path for its implementation in neuromorphic analog hardware that can learn and reconstruct partial and changing dynamics of a system without the massive power consumption that is typically needed in a Von Neumann-based computer architecture.

Keywords: Kalman filter; artificial intelligence; dynamics; robotics; spiking neural networks.

MeSH terms

  • Algorithms*
  • Computer Systems
  • Computers
  • Neural Networks, Computer*
  • Neurons / physiology