Trajectory based observer design: A framework for lightweight sensor fusion

Federico Oliva, Tom Shaked, Daniele Carnevale, Amir Degani

Research output: Contribution to journalArticlepeer-review

Abstract

Efficient observer design and accurate sensor fusion are key in state estimation. This work proposes an optimization-based methodology, termed Trajectory Based Optimization Design (TBOD), allowing the user to easily design observers for general nonlinear systems and multi-sensor setups. Starting from parametrized observer dynamics, the proposed method considers a finite set of pre-recorded measurement trajectories from the nominal plant and exploits them to tune the observer parameters through numerical optimization. This research hinges on the classic observer's theory and Moving Horizon Estimators methodology. Optimization is exploited to ease the observer's design, providing the user with a lightweight, general-purpose sensor fusion methodology. TBOD's main characteristics are the capability to handle general sensors efficiently and in a modular way and, most importantly, its straightforward tuning procedure. The TBOD's performance is tested on a terrestrial rover localization problem, combining IMU and ranging sensors provided by Ultra Wide Band antennas, and validated through a motion-capture system. Comparison with an Extended Kalman Filter is also provided, matching its position estimation accuracy and significantly improving in the orientation.

Original languageEnglish
Article number106592
JournalControl Engineering Practice
Volume165
DOIs
StatePublished - Dec 2025
Externally publishedYes

Keywords

  • Estimation based on sensor data
  • Optimization
  • Robotics and automation
  • Sensor data fusion

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