ICUAS 2021 Paper Abstract

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Paper ThB2.3

Santos, Marcelo Alves (Federal University of Minas Gerais), Ferramosca, Antonio (University of Bergamo), Raffo, Guilherme Vianna (Federal University of Minas Gerais)

Energy-Aware Model Predictive Control with Obstacle Avoidance

Scheduled for presentation during the Regular Session "Control Design II" (ThB2), Thursday, June 17, 2021, 14:40−15:00, Kozani

2021 International Conference on Unmanned Aircraft Systems (ICUAS), June 15-18, 2021, Athens, Greece

This information is tentative and subject to change. Compiled on April 26, 2024

Keywords Control Architectures, Energy Efficient UAS, Navigation

Abstract

This work proposes a single-layer finite-horizon optimal control strategy to solve the autonomous navigation problem while accounting for energy efficiency and providing obstacle avoidance feature in cluttered environments with unknown obstacles. Considering the rate capacity effect of electric batteries, the nonlinear state-of-charge behavior is described and included in the optimal control problem to achieve energy-awareness. Besides, artificial potential fields are considered to obtain obstacle avoidance capabilities. The control problem is formulated inspired by the tracking model predictive control framework, and it considers the central idea of including artificial variables into the control problem to obtain a closed-loop system with an enlarged domain of attraction and with feasibility insurance. Finally, numerical results in a case study considering a quadrotor UAV are provided to corroborate the proposed strategy.

 

 

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