TY - JOUR
T1 - A Dynamic-Data-Driven Method for Improving the Performance of Receiver Autonomous Integrity Monitoring
AU - Zheng, Xueen
AU - Xu, Chengdong
AU - Wang, Yudong
AU - Zou, Haoming
AU - Lv, Xijuan
AU - Zhao, Shuai
AU - Shi, Yansong
AU - Shu, Qinghai
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2021
Y1 - 2021
N2 - In this article, the problem of receiver autonomous integrity monitoring (RAIM) is transformed into a modeling problem using dynamic data and an artificial neural network. A new RAIM method based on a probabilistic neural network (P-RAIM) is presented to improve integrity monitoring performance. Compared with existing RAIM methods, P-RAIM has a greater ability to meet the monitoring requirements for localizer performance with vertical guidance down to altitudes of 250 feet (LPV-250) ina single global navigation satellite system. First, by projecting the pseudorange error model from the measurement domain into the positioning domain through multiconvolution, patterns including a satellite fault pattern and a fault-free pattern are obtained based on variance inflation theory. Second, the P-RAIM model is proposed as a modified dynamic-data-driven probabilistic neural network with five layers; moreover, unique methods for training sample collection and integrity support are presented. Then, particle swarm optimization is applied to optimize a fitness function based on thefalse alarm probability and missed detection probability thereby improving the ability of P-RAIM tomeet the LPV-250 requirements, including the false alarm probability, missed detection probability,vertical alarm limit and alarm time. Finally, utilizing real satellite data from a receiver locatedin Beijing to verify the effectiveness and universality of P-RAIM, evaluation experiments show thatboth the false alarm probability and missed detection probability can be effectively reduced to meet the LPV-250 requirements when the positioning bias is no less than 40 m. Compared with least-squares-residuals RAIM, P-RAIM can more easily detect potential faulty satellites in a single constellation.
AB - In this article, the problem of receiver autonomous integrity monitoring (RAIM) is transformed into a modeling problem using dynamic data and an artificial neural network. A new RAIM method based on a probabilistic neural network (P-RAIM) is presented to improve integrity monitoring performance. Compared with existing RAIM methods, P-RAIM has a greater ability to meet the monitoring requirements for localizer performance with vertical guidance down to altitudes of 250 feet (LPV-250) ina single global navigation satellite system. First, by projecting the pseudorange error model from the measurement domain into the positioning domain through multiconvolution, patterns including a satellite fault pattern and a fault-free pattern are obtained based on variance inflation theory. Second, the P-RAIM model is proposed as a modified dynamic-data-driven probabilistic neural network with five layers; moreover, unique methods for training sample collection and integrity support are presented. Then, particle swarm optimization is applied to optimize a fitness function based on thefalse alarm probability and missed detection probability thereby improving the ability of P-RAIM tomeet the LPV-250 requirements, including the false alarm probability, missed detection probability,vertical alarm limit and alarm time. Finally, utilizing real satellite data from a receiver locatedin Beijing to verify the effectiveness and universality of P-RAIM, evaluation experiments show thatboth the false alarm probability and missed detection probability can be effectively reduced to meet the LPV-250 requirements when the positioning bias is no less than 40 m. Compared with least-squares-residuals RAIM, P-RAIM can more easily detect potential faulty satellites in a single constellation.
KW - LPV-250
KW - Receiver autonomous integrity monitoring
KW - alarm systems
KW - global navigation satellite system
KW - multi-layer neural network
UR - http://www.scopus.com/inward/record.url?scp=85103757346&partnerID=8YFLogxK
U2 - 10.1109/ACCESS.2021.3070658
DO - 10.1109/ACCESS.2021.3070658
M3 - Article
AN - SCOPUS:85103757346
SN - 2169-3536
VL - 9
SP - 55833
EP - 55843
JO - IEEE Access
JF - IEEE Access
M1 - 9393949
ER -