DocumentCode :
2448609
Title :
Wind Velocity Neural Estimator for Small Autonomous Surface Vehicles
Author :
Monteiro, J.R.B.A. ; Suetake, M. ; Paula, G.T. ; Almeida, T.E.P. ; Santana, M.P. ; Romero, G.B. ; Faracco, J.C. ; Monaco, F.J. ; Pinto, R.S.
fYear :
2012
fDate :
20-25 May 2012
Firstpage :
6
Lastpage :
11
Abstract :
Surface aquatic vehicles present a complex dynamic behavior since they operate between two different fluids, air and water, each one with a different density and viscosity. Wind and surface currents affect vehicle motion in different manners. This paper shows the development of an estimator based on an artificial neural network which is used for wind velocity estimation in autonomous surface vehicles, intended to operate in protected waters, i.e. with no water surface currents. An aquatic vehicle motion model considering surge, sway and yaw motions in the boat dynamics, as well as wind speed and direction effects on its position, is presented here. Considering the wind disturbances, an artificial neural network is used to identify wind absolute speed and direction, so the actual vehicle should not need to carry wind speed and direction sensors aboard, only a GPS and an electronic compass, as planned. A Perceptron neural network was used in order to quantify wind speed and direction based only on boat displacements and its internal operational parameters as motor thrust and rudder angle. Those conditions were compared to a reference model in order to achieve a proper network training. The network showed good results for steady-state boat operation and also satisfactory results for transient responses.
Keywords :
aerodynamics; hydrodynamics; marine vehicles; motion control; neurocontrollers; sensors; vehicle dynamics; air; aquatic vehicle motion model; artificial neural network; boat displacements; boat dynamics; complex dynamic behavior; motor thrust; network training; protected waters; reference model; rudder angle; small autonomous surface vehicles; steady-state boat operation; surface aquatic vehicles; surface currents; surge motions; sway motions; transient responses; vehicle motion; water; wind currents; wind direction sensors; wind speed sensors; wind velocity neural estimator; yaw motions; Artificial neural networks; Boats; Estimation; Neurons; Vehicles; Wind speed; artificial neural network; autonomous surface vehicle; ship control motion; wind velocity estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Critical Embedded Systems (CBSEC), 2012 Second Brazilian Conference on
Conference_Location :
Campinas
Print_ISBN :
978-1-4673-1912-6
Type :
conf
DOI :
10.1109/CBSEC.2012.16
Filename :
6227644
Link To Document :
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