| Literature DB >> 30149547 |
Yupin Huang1, Liping Qian2, Anqi Feng3, Yuan Wu4, Wei Zhu5.
Abstract
The traditional speed prediction generally utilizes the Global Position System (GPS) and video images, and thus, the prediction precision mainly depends on environmental factors (i.e., weather, ionosphere, troposphere, air, and electromagnetic waves). We study the Radio Frequency Identification (RFID) data-driven vehicle speed prediction and proposed an improved extended kalman filter (i.e., the adaptive extended kalman filter, AEKF) algorithm. Firstly, the on-board RFID reader equipped in the vehicle reads the information (i.e., current speed and time) from the tag deployed on the road. Secondly, the received information is transmitted to the on-board information processing unit, and it is demodulated and decoded into available information. Finally, based on the vehicle state space model, the AEKF algorithm is proposed to predict vehicle speed and improve the prediction results, so that the vehicle speed gradually approaches the actual vehicle speed. The simulation results show that compared with the conventional extended kalman filter (EKF) algorithm, our proposed AEKF algorithm improves the dynamic performance of the filtering and better suppresses the filtering divergence process. Moreover, the AEKF algorithm also improves the precision of the Mean Square Error (MSE) and Mean Absolute Error (MAE) by 57.4% and 32.4%, respectively.Entities:
Keywords: adaptive extended kalman filter; data acquisition; radio frequency identification; speed prediction
Year: 2018 PMID: 30149547 PMCID: PMC6164285 DOI: 10.3390/s18092787
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The diagram of RFID data-driven vehicle speed prediction system.
Figure 2The reading area of RFID reader.
Figure 3The operation of the AEKF algorithm.
Figure 4Errors with different values.
Comparison with different values.
|
| 1 | 1.2 | 1.4 | 1.6 | 1.8 | 2 | 2.2 | 2.4 | 2.6 | 2.8 | 3 |
|---|---|---|---|---|---|---|---|---|---|---|---|
|
| 0.0396 | 0.0441 | 0.0485 | 0.0530 | 0.0572 | 0.0613 | 0.0653 | 0.0690 | 0.0724 | 0.0757 | 0.0788 |
|
| 0.1525 | 0.1614 | 0.1702 | 0.1784 | 0.1861 | 0.1931 | 0.1994 | 0.2052 | 0.2105 | 0.2152 | 0.2195 |
Figure 5Speed prediction effect in the normal model.
Figure 6Speed error effect in the normal model.
Algorithmic errors in the normal model.
| Stage | EKF | AEKF | EKF vs AEKF | |||
|---|---|---|---|---|---|---|
| MSE | MAE | MSE | MAE | MSE | MAE | |
|
| 0.0608 | 0.1833 | 0.0232 | 0.1257 | 61.8% | 31.4% |
|
| 0.0828 | 0.2114 | 0.0356 | 0.1494 | 57.0% | 29.3% |
|
| 0.0862 | 0.2247 | 0.0418 | 0.1673 | 51.5% | 25.5% |
|
| 0.0609 | 0.2017 | 0.0240 | 0.1233 | 60.6% | 38.9% |
|
| 0.0756 | 0.2084 | 0.0330 | 0.1457 | 56.3% | 30.1% |
Figure 7Speed prediction effect in the constant speed model.
Algorithmic errors in the vehicle speed model.
| Stage | EKF | AEKF | EKF vs AEKF | |||
|---|---|---|---|---|---|---|
| MSE | MAE | MSE | MAE | MSE | MAE | |
|
| 0.0756 | 0.2084 | 0.0330 | 0.1457 | 56.3% | 30.1% |
|
| 0.1746 | 0.3269 | 0.0705 | 0.2115 | 59.6% | 35.3% |
|
| 0.1085 | 0.2489 | 0.0493 | 0.1732 | 54.5% | 30.4% |
|
| 0.1196 | 0.2614 | 0.0509 | 0.1768 | 57.4% | 32.4% |
Figure 8Speed prediction effect in the deceleration model.