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AERO-LQG: Aerial-Enabled Robust Optimization for LQG-Based Quadrotor Flight Controller

Published: August 28, 2025 | arXiv ID: 2508.20888v1

By: Daniel Engelsman, Itzik Klein

Potential Business Impact:

Makes drones fly better and longer.

Business Areas:
Drone Management Hardware, Software

Quadrotors are indispensable in civilian, industrial, and military domains, undertaking complex, high-precision tasks once reserved for specialized systems. Across all contexts, energy efficiency remains a critical constraint: quadrotors must reconcile the high power demands of agility with the minimal consumption required for extended endurance. Meeting this trade-off calls for mode-specific optimization frameworks that adapt to diverse mission profiles. At their core lie optimal control policies defining error functions whose minimization yields robust, mission-tailored performance. While solutions are straightforward for fixed weight matrices, selecting those weights is a far greater challenge-lacking analytical guidance and thus relying on exhaustive or stochastic search. This interdependence can be framed as a bi-level optimization problem, with the outer loop determining weights a priori. This work introduces an aerial-enabled robust optimization for LQG tuning (AERO-LQG), a framework employing evolutionary strategy to fine-tune LQG weighting parameters. Applied to the linearized hovering mode of quadrotor flight, AERO-LQG achieves performance gains of several tens of percent, underscoring its potential for enabling high-performance, energy-efficient quadrotor control. The project is available at GitHub.

Repos / Data Links

Page Count
7 pages

Category
Electrical Engineering and Systems Science:
Systems and Control