Nonlinear $H_{\infty}$ Filtering on the Special Orthogonal Group $SO(3)$ using Vector Directions
Farooq Aslam, Muhammad Farooq Haydar

TL;DR
This paper introduces a novel nonlinear $H_{ abla}$ filter on $SO(3)$ for attitude estimation, improving transient response while maintaining steady-state accuracy, by leveraging a Riccati update and an additional tuning gain.
Contribution
It develops a new $H_{ abla}$ filter directly on $SO(3)$ that enhances transient performance over existing methods like MEKF and GAME filters.
Findings
The proposed filter shows better transient response than MEKF.
Simulation results demonstrate competitive steady-state performance.
The filter's tuning gain $ abla$ allows for more aggressive transient behavior.
Abstract
The problem of filtering for attitude estimation using rotation matrices and vector measurements is studied. Starting from a storage function on the Special Orthogonal Group , a dissipation inequality is considered, and a deterministic nonlinear filter is derived which respects a given upper bound on the energy gain from exogenous disturbances and initial estimation errors to a generalized estimation error. The results are valid for all estimation errors which correspond to an angular error of less than radians in terms of the axis-angle representation. The approach builds on earlier results on attitude estimation, in particular nonlinear filtering using quaternions, and proposes a novel filter developed directly on . The proposed filter employs the same innovation term as the Multiplicative Extended Kalman Filter…
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Taxonomy
TopicsInertial Sensor and Navigation · Advanced Adaptive Filtering Techniques · Adaptive Control of Nonlinear Systems
