| Literature DB >> 34993692 |
Apidet Booranawong1, Peeradon Thammachote2, Yoschanin Sasiwat2, Jutamanee Auysakul3, Kiattisak Sengchuai2, Dujdow Buranapanichkit2, Sawit Tanthanuch2, Nattha Jindapetch2, Hiroshi Saito4.
Abstract
In this paper, implementation and validation of a target tracking system based on the received signal strength indicator (RSSI) for an indoor corridor environment of the hospital is presented. Six tracking methods of a moving target (i.e., equipment, robot, or human) using RSSI signals measured from two stationary reference nodes located at the different sides of the corridor are proposed. A filter with its optimal weight value is also applied to smoothen and increase the accuracy of estimated position results (i.e., the x-position in the corridor). Additionally, a determination approach for finding the optimal parameters assigned for the proposed tracking methods and the filter are also introduced. The proposed methods are implemented in MATLAB/Simulink, and experiments using a 2.4 GHz, IEEE 802.15.4/ZigBee wireless network have been carried out in the indoor corridor of the hospital building. Experimental results obtained from the corridor size of 22 m demonstrate that our proposed methods can automatically and efficiently track the moving target in real time. The average distance errors, in the case of varying and manual tuning the optimal parameters of the proposed methods and the filter, reduce from 5.14 to 1.01 m and 4.55 to 0.86 m (i.e., two test cases; slow moving speed and double moving speed). Here, the errors decrease by 80.35% and 81.10%, respectively. For the case using the optimal parameters determined by the optimization approach, the average errors can reduce to 0.97 m for the first test case and 0.78 m for the second test case, respectively. An RSSI-based real-time tracking system for a moving target in an indoor corridor of the hospital building.Entities:
Keywords: Corridor; Hospital; Optimization; RSSI; Tracking; Wireless sensor networks
Mesh:
Year: 2022 PMID: 34993692 PMCID: PMC8735738 DOI: 10.1007/s11517-021-02489-6
Source DB: PubMed Journal: Med Biol Eng Comput ISSN: 0140-0118 Impact factor: 2.602
Fig. 1The RSSI-based tracking system
Fig. 2The proposed solution 6 in (12) and the filter in (13) implemented on MATLAB/Simulink
Fig. 3A flowchart of the proposed methods with the filter
Optimization information for determining the optimal values of and
| Description | Parameter/equation/technique |
|---|---|
| (1) Position estimation by the solution 6 | |
| Inputs: | |
| Estimated positions: | |
| Objective function: | Minimize Where |
| Subject to the constraint: | |
| Solving method: | Evolutionary |
| Output: | Optimal value of |
| (2) Filter | |
| Input: | |
| Smoothed value: | |
| Objective function: | Minimize |
| Subject to the constraint: | |
| Solving method: | Evolutionary |
| Output: | Optimal value of |
Fig. 4A flowchart for determining the optimal values of and
Fig. 5The test field with the equipment. a Corridor in the hospital building. b Equipment
Fig. 6The layout of the test field in Fig. 5
Fig. 7The path-loss equation of the test field in Fig. 5
Fig. 8Raw RSSI signals received from the reference node 1 and the reference node 2; a the first test case and b the second test case
Fig. 9The actual target positions () of the target node during the experiment and the estimated target positions before and after smoothing ( and with ); a the first test case and b the second test case
Fig. 10The average error distances by the solution 1 to the solution 6 with ; a the first test case and b the second test case
Fig. 11Examples of the average error distances by the solution 4 when varying the weighting factor of the filter in (13); a the first test case and b the second test case
Fig. 12Examples of the estimated target positions by the solution 4 when varying the weighting factor ; a the first test case and b the second test case
Fig. 13Examples of the average error distances by the solution 6 when varying the weighting factor of the solution 6 in (12); a the first test case and b the second test case
Fig. 14The average error distances by the solution 6 without and with the optimization approach in Sect. 2 (E); a the first test case and b the second test case
Fig. 15The actual target positions () of the target node during the experiment and the estimated target positions using of 0.0826 and of 0.0253; a the first test case and b the second test case