| Literature DB >> 28726729 |
Sheng-Lun Yi1,2, Xue-Bo Jin3,4, Ting-Li Su5,6, Zhen-Yun Tang7, Fa-Fa Wang8,9, Na Xiang10,11, Jian-Lei Kong12,13.
Abstract
Online denoising is motivated by real-time applications in the industrial process, where the data must be utilizable soon after it is collected. Since the noise in practical process is usually colored, it is quite a challenge for denoising techniques. In this paper, a novel online denoising method was proposed to achieve the processing of the practical measurement data with colored noise, and the characteristics of the colored noise were considered in the dynamic model via an adaptive parameter. The proposed method consists of two parts within a closed loop: the first one is to estimate the system state based on the second-order adaptive statistics model and the other is to update the adaptive parameter in the model using the Yule-Walker algorithm. Specifically, the state estimation process was implemented via the Kalman filter in a recursive way, and the online purpose was therefore attained. Experimental data in a reinforced concrete structure test was used to verify the effectiveness of the proposed method. Results show the proposed method not only dealt with the signals with colored noise, but also achieved a tradeoff between efficiency and accuracy.Entities:
Keywords: Kalman filter; Yule–Walker algorithm; online denoising; real-time data processing; the second-order adaptive statistics model
Year: 2017 PMID: 28726729 PMCID: PMC5539702 DOI: 10.3390/s17071668
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The flow chart of the proposed online denoising method.
Figure 2The configuration of the experiment.
Figure 3The real data and measurement data.
Figure 4The denoised result of the adaptive statistics models.
Figure 5The error comparison of the adaptive statistics models for online denoising.
Performance comparison between different adaptive statistics models.
| Second-Order Adaptive Statistics Model | Third-Order Adaptive Statistics Model | |||||
|---|---|---|---|---|---|---|
| Mean/mm | Covariance | RMSE | Mean/mm | Covariance | RMSE | |
| 0.1301 | 0.0269 | 0.1640 | 0.1762 | 0.0675 | 0.2598 | |
| 0.1130 | 0.0241 | 0.1552 | 0.4852 | 0.5179 | 0.7197 | |
| 0.1375 | 0.0355 | 0.1884 | 0.1757 | 0.0607 | 0.2463 | |
| 0.0930 | 0.0153 | 0.1237 | 0.1107 | 0.0287 | 0.1694 | |
| 0.0721 | 0.0098 | 0.0990 | 0.1179 | 0.0286 | 0.1691 | |
| 0.1091 | 0.0223 | 0.1461 | 0.2131 | 0.1407 | 0.3129 | |
Figure 6Covariance and RMSE of the adaptive statistics models.
Mean, covariance and RMSE of first-order exponential smoothing with different parameters.
| Various Models | The Parameter of 0.2 | The Parameter of 0.5 | The Parameter of 0.8 | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Mean | Covariance | RMSE | Mean | Covariance | RMSE | Mean | Covariance | RMSE | |
| 0.5864 | 0.4352 | 0.6597 | 0.9282 | 1.0813 | 1.0399 | 1.0112 | 1.2645 | 1.1245 | |
| 0.5867 | 0.4351 | 0.6596 | 0.9284 | 1.0814 | 1.0340 | 1.0113 | 1.2642 | 1.1244 | |
| 0.5870 | 0.4353 | 0.6598 | 0.9287 | 1.0813 | 1.0399 | 1.0118 | 1.2637 | 1.1241 | |
| 0.5861 | 0.4340 | 0.6588 | 0.9279 | 1.0794 | 1.0389 | 1.0108 | 1.2617 | 1.1233 | |
| 0.5864 | 0.4340 | 0.6588 | 0.9282 | 1.0802 | 1.0393 | 1.0112 | 1.2625 | 1.1236 | |
| 0.5865 | 0.4347 | 0.6593 | 0.9283 | 1.0807 | 1.0384 | 1.0113 | 1.2633 | 1.1240 | |
Mean, covariance and RMSE the of Holt’s exponential smoothing with different parameter a.
| Various Models | The Parameter | The Parameter | The Parameter | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Mean | Covariance | RMSE | Mean | Covariance | RMSE | Mean | Covariance | RMSE | |
| 0.3832 | 0.1891 | 0.4349 | 0.5978 | 0.4679 | 0.6840 | 0.9326 | 1.0542 | 1.0267 | |
| 0.3824 | 0.1870 | 0.4324 | 0.5973 | 0.4669 | 0.6833 | 0.9329 | 1.0532 | 1.0262 | |
| 0.3824 | 0.1870 | 0.4324 | 0.5975 | 0.4667 | 0.6832 | 0.9326 | 1.0532 | 1.0262 | |
| 0.3816 | 0.1861 | 0.4314 | 0.5965 | 0.4655 | 0.6823 | 0.9321 | 1.0505 | 1.0249 | |
| 0.3818 | 0.1857 | 0.4309 | 0.5968 | 0.4657 | 0.6824 | 0.9324 | 1.0512 | 1.0253 | |
| 03823 | 0.1870 | 0.4324 | 0.5972 | 0.4665 | 0.6830 | 0.9325 | 1.0525 | 1.0259 | |
The results by several kinds of online denoising methods.
| Various models | Various orders/parameters | |||
|---|---|---|---|---|
| Adaptive | Second-order | 0.1091 | 0.0223 | 0.1461 |
| Third-order | 0.2131 | 0.1407 | 0.3129 | |
| First-order | Parameter of 0.2 | 0.5865 | 0.4347 | 0.6593 |
| Parameter of 0.5 | 0.9283 | 1.0807 | 1.0384 | |
| Parameter of 0.8 | 1.0113 | 1.2633 | 1.1240 | |
| Holt’s | Parameter | 0.3823 | 0.1870 | 0.4324 |
| Parameter | 0.5972 | 0.4665 | 0.6830 | |
| Parameter | 0.9325 | 1.0525 | 1.0259 |
Figure 7The real data and measurement data.
Mean, covariance and RMSE of the last 5000 points derived by the adaptive statistics model.
| Various Model | Second-Order Adaptive Statistics Model | Third-Order Adaptive Statistics Model | ||||
|---|---|---|---|---|---|---|
| Mean | Covariance | RMSE | Mean | Covariance | RMSE | |
| 0.1106 | 0.0178 | 0.1334 | 0.1333 | 0.0235 | 0.1533 | |
| 0.0888 | 0.0120 | 0.1095 | 0.2301 | 0.0808 | 0.2842 | |
| 0.1528 | 0.0454 | 0.2131 | 0.1343 | 0.0304 | 0.1743 | |
| 0.0682 | 0.0064 | 0.0800 | 0.1260 | 0.0269 | 0.1640 | |
| 0.0536 | 0.0041 | 0.0640 | 0.0842 | 0.0109 | 0.1044 | |
| 0.0948 | 0.0171 | 0.1200 | 0.1416 | 0.0345 | 0.1760 | |
Figure 8Covariance and RMSE of the adaptive statistics models of the last 5000 points.
Figure 9The denoised result and the reference value.
Figure 10The reference value and the denoised result.
Figure 11The signal with noise and the reference value.
Figure 12The reference value and the signal with noise.