Title :
An application of artificial neural networks for autonomous ship navigation through a channel
Author :
Stamenkovich, Mikan
Author_Institution :
US Naval Sea Combat Syst. Eng. Station, Norfolk, VA, USA
Abstract :
A neural network model based on reinforcement learning is investigated for use as a shipboard autonomous channel navigator. The model used consists of two neuron-like elements. The basic learning scheme involves learning with a critic. The network consists of an adaptive critic element (ACE) and an adaptive search element (ASE). The ASE explores the channel region while the ACE criticizes the actions of the ASE and tries to predict failures of the ASE´s attempt to navigate. The neural network model developed has been shown to be useful through software simulation with graphical feedback. A similar implementation could have applications in many electronic mapping systems utilizing vector information. The performance of such a system and its adaptability to new channels are investigated
Keywords :
adaptive systems; computerised navigation; digital simulation; learning (artificial intelligence); neural nets; ships; adaptive critic element; adaptive search element; artificial neural networks; autonomous ship navigation; channel; electronic mapping systems; failure prediction; graphical feedback; neural network model; performance; reinforcement learning; software simulation; vector information; Artificial neural networks; Control systems; Equations; Learning; Marine vehicles; Modeling; Navigation; Neural networks; Neurofeedback; Systems engineering and theory;
Conference_Titel :
Position Location and Navigation Symposium, 1992. Record. 500 Years After Columbus - Navigation Challenges of Tomorrow. IEEE PLANS '92., IEEE
Conference_Location :
Monterey, CA
Print_ISBN :
0-7803-0468-3
DOI :
10.1109/PLANS.1992.185865