Paper
13 October 2008 A new algorithmic of SINS state estimation based on neural network
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Abstract
A new algorithmic for strapdown inertial navigation system (SINS) state estimation based on neural networks is introduced. In training strategy, the error vector and its delay are introduced. This error vector is made of the position and velocity difference between the estimations of system and the outputs of GPS. After state prediction and state update, the states of the system are estimated. After off-line training, the network can approach the status switching of SINS and after on-line training, the state estimate precision can be improved further by reducing network output errors. Then the network convergence is discussed. In the end, several simulations with different noise are given. The results show that the neural network state estimator has lower noise sensitivity and better noise immunity than Kalman filter.
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Yanhong Lu "A new algorithmic of SINS state estimation based on neural network", Proc. SPIE 7129, Seventh International Symposium on Instrumentation and Control Technology: Optoelectronic Technology and Instruments, Control Theory and Automation, and Space Exploration, 71291X (13 October 2008); https://doi.org/10.1117/12.807645
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KEYWORDS
Neural networks

Global Positioning System

Evolutionary algorithms

Error analysis

Computer simulations

Filtering (signal processing)

Detection and tracking algorithms

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