Swing-Free Manoeuvre Controller for Rotorcraft Unmanned Aerial Vehicle Slung-Load System Using Echo State Networks

Swing-Free Manoeuvre Controller for Rotorcraft Unmanned Aerial Vehicle Slung-Load System Using Echo State Networks

Share it!

A journal publication of a research I did last year was recently accepted and published on the International Journal of Unmanned Systems Engineering (ISSN: 2052-112X).

slung load animation

The title of my research is:

Swing-Free Manoeuvre Controller for Rotorcraft Unmanned Aerial Vehicle Slung-Load System Using Echo State Networks

Abstract:

There is a growing interest in developing Rotorcraft Unmanned Aerial Systems (RUAS) with advanced onboard autonomous capabilities. RUAS is a very versatile vehicle and its unique flying characteristics enable it to carry loads, hanging in wires underneath it. This suspended load alters the flight characteristics of the vehicle. In this paper, an anti-swing manoeuvre controller for a rotorcraft unmanned aerial system with an attached suspended load (slung-load) is proposed. The presented architecture is powered by Echo State Networks (ESN) that enables simple modeling of the controller and outperforms linear techniques in terms of robustness to unmodelled dynamics and disturbances. The external load behaves like a pendulum; this can change the natural frequencies and mode shapes of the low frequency modes of the RUAS. The technique chosen to solve the problem is to achieve both robust performance and computational efficiency. Reservoir Computing (RC) is an alternative to gradient descent methods for training Recurrent Neural Networks (RNN), which represent a very powerful generic tool, integrating both large dynamical memory and highly adaptable computational capabilities. ESN is a type of reservoir computing; the advantage lies in the ability to overcome the difficulties in RNN training, it is conceptually simple and computationally inexpensive. It has been demonstrated that a model and controller design using ESN may be developed. ESN performs well to control unknown nonlinear systems.

Keywords: Autonomous systems, Echo State Networks, Nonlinear systems, Slungload multicopter, Recurrent neural networks, Reservoir computing.

 


And of course you can read it completely from here this url: http://www.ijuseng.com/#/ijuseng-3-1-26-37-2015/4587568279

Full details:

Article
IJUSEng – 2015, Vol. 3, No. 1, 26-37
http://dx.doi.org/10.14323/ijuseng.2015.3

 

 

Share it!

Leave a Reply

This site uses Akismet to reduce spam. Learn how your comment data is processed.