Sensor integration for satellite-based vehicular navigation using neural networks.

Rashad Sharaf, Aboelmagd Noureldin
Author Information

Abstract

Land vehicles rely mainly on global positioning system (GPS) to provide their position with consistent accuracy. However, GPS receivers may encounter frequent GPS outages within urban areas where satellite signals are blocked. In order to overcome this problem, GPS is usually combined with inertial sensors mounted inside the vehicle to obtain a reliable navigation solution, especially during GPS outages. This letter proposes a data fusion technique based on radial basis function neural network (RBFNN) that integrates GPS with inertial sensors in real time. A field test data was used to examine the performance of the proposed data fusion module and the results discuss the merits and the limitations of the proposed technique.

MeSH Term

Algorithms
Artificial Intelligence
Geographic Information Systems
Motor Vehicles
Neural Networks, Computer
Pattern Recognition, Automated
Spacecraft
Systems Integration
Transducers

Word Cloud

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