- International Journal of Automotive Science and Technology
- Volume:7 Issue:2
- Comparing the Performance of Different Methods for Estimation in Inertial Navigation Systems
Comparing the Performance of Different Methods for Estimation in Inertial Navigation Systems
Authors : Bekir GÖĞÜŞ, Gülnur Begüm CANGÖZ, Murat ÜÇÜNCÜ
Pages : 154-166
Doi:10.30939/ijastech..1174226
View : 59 | Download : 82
Publication Date : 2023-06-30
Article Type : Research Paper
Abstract :There are many positioning systems available today. The most prominent of these systems is the Inertial Navigation System, which is increasingly preferred because it works with its own internal system independent of external stimuli. This system de-tects position, orientation and velocity information by means of accelerometer and gyroscope sensors. Using this information, it is possible to make predictions for the next position, orientation and speed with various algorithms. In the studies conducted so far, Kalman Filter insert ignore into journalissuearticles values(KF); algorithms have been predominantly used for prediction. In this study, Long Term-Short Memory insert ignore into journalissuearticles values(LSTM); neural network architecture, Bidirectional Long Short-Term Memory insert ignore into journalissuearticles values(BLSTM);, Gated Recurrent Unit insert ignore into journalissuearticles values(GRU); and Kalman Filtering methods, which are among the deep learning algorithms that have proven themselves as prediction algorithms, are examined in detail and a comparative study is presented. Here, LSTM, BLSTM and GRU deep learning networks were first trained with IMU sensor data and speed estimation was performed. Root Mean Squared Error insert ignore into journalissuearticles values(RMSE); values were obtained as 2.5547, 2.7592 and 2.5414, respectively. Furthermore, the same deep learning network methods were trained with GPS data. The prediction data obtained through LSTM, BLSTM and GRU provided RMSE values of 0.42542, 1.91122 and 0.32274, respectively. We see that the prediction with GPS data have higher accuracy since deep learning networks trained with GPS were less affected by noise during the training phase.Keywords : Accelerometer, Rotation Meter, Deep Learning, Kalman Filter, LSTM