rtdgps implementation by online prediction of gps position components error using ga-ann model

Authors

m. h. refan

a. dameshghi

abstract

if both reference station (rs) and navigational device in differential global positioning system (dgps) receive signals from the same satellite, rs position components error (rpce) can be used to compensate for navigational device error. this research used hybrid method for rpce prediction which was collected by a low-cost gps receiver. it is a combination of genetic algorithm (ga) computing and artificial neural network (ann). ga was used for weight optimization and rs and mobile station (ms) were implemented by the software. the experimental results demonstrated which ga-ann had great approximation ability and suitability in prediction; ga-anns prediction' rms errors were less than 0.12 m. the simulation results with real data showed that position components' rms errors in ms were less than 0.51 m after rpce prediction.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

RTDGPS Implementation by Online Prediction of GPS Position Components Error Using GA-ANN Model

If both Reference Station (RS) and navigational device in Differential Global Positioning System (DGPS) receive signals from the same satellite, RS Position Components Error (RPCE) can be used to compensate for navigational device error. This research used hybrid method for RPCE prediction which was collected by a low-cost GPS receiver. It is a combination of Genetic Algorithm (GA) computing an...

full text

An ANN-GA model based promoter prediction in Arabidopsis thaliana using tilling microarray data

Identification of promoter region is an important part of gene annotation. Identification of promoters in eukaryotes is important as promoters modulate various metabolic functions and cellular stress responses. In this work, a novel approach utilizing intensity values of tilling microarray data for a model eukaryotic plant Arabidopsis thaliana, was used to specify promoter region from non-promo...

full text

Surface Roughness Prediction Model Using Ann & Anfis

Now a days the general manufacturing problem can be described as the achievement of a predefined product quality with given equipment, cost and time constraints. There is a rapid development in the quality of advanced aero space materials like aluminum and its alloys with improved properties. The difficulties in machining of these materials economically and effectively are limiting their applic...

full text

A Ga–ann Hybrid Model for Prediction and Optimization of Co2 Laser-mig Hybrid Welding Process

The paper presents a hybrid model of an Artificial Neural Network (ANN) and Genetic Algorithm (GA) for modeling of a hybrid laser welding process. This model is employed for the prediction and optimization of penetration depth with corresponding process parameters. A single program developed for the purpose initially establishes an optimized ANN architecture using a Back-Propagation Neural Netw...

full text

GA-SVR and Pseudo-position-aided GPS/INS Integration during GPS Outage

Xinglong Tan, Jian Wang, Shuanggen Jin and Xiaolin Meng (School of Environment and Spatial Informatics, China University of Mining and Technology, Xuzhou, China) (Shanghai Astronomical Observatory, Chinese Academy of Sciences, Shanghai, China) (Department of Geomatics Engineering, Bulent Ecevit University, Zonguldak, Turkey) (Institute of Engineering Surveying and Space Geodesy (IESSG), The Uni...

full text

Autonomous Error Bounding of Position Estimates from GPS and Galileo

In safety-of-life applications of satellite-based navigation, such as the guided approach and landing of an aircraft, the most important question is whether the navigation error is tolerable. Although differentially corrected GPS is accurate enough for the task most of the time, anomalous measurement errors can create situations where the navigation error is intolerably large. Detection of such...

full text

My Resources

Save resource for easier access later


Journal title:
journal of electrical and computer engineering innovations

Publisher: shahid rajaee teacher training university (srttu)

ISSN 2322-3952

volume 1

issue 1 2013

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023