Online parameter estimation for the Crazyflie quadcopter through an EM algorithm
Yanhua Zhao

TL;DR
This paper presents an online EM algorithm for real-time parameter estimation of a Crazyflie quadcopter, demonstrating its effectiveness compared to offline methods in noisy conditions.
Contribution
It introduces an online EM algorithm for quadcopter parameter estimation, enhancing real-time adaptability over traditional offline approaches.
Findings
Online estimation has a larger convergence range.
The method effectively estimates parameters under noise.
Online approach shows improved real-time performance.
Abstract
Drones are becoming more and more popular nowadays. They are small in size, low in cost, and reliable in operation. They contain a variety of sensors and can perform a variety of flight tasks, reaching places that are difficult or inaccessible for humans. Earthquakes damage a lot of infrastructure, making it impossible for rescuers to reach some areas. But drones can help. Many amateur and professional photographers like to use drones for aerial photography. Drones play a non-negligible role in agriculture and transportation too. Drones can be used to spray pesticides, and they can also transport supplies. A quadcopter is a four-rotor drone and has been studied in this paper. In this paper, random noise is added to the quadcopter system and its effects on the drone system are studied. An extended Kalman filter has been used to estimate the state based on noisy observations from the…
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Taxonomy
TopicsUAV Applications and Optimization · Aerospace and Aviation Technology · Air Traffic Management and Optimization
