Smartphone Distance Estimation Based on RSSI-Fuzzy Classification Approach

Positioning people indoors has known an exponential growth in the last few years, especially thanks to Bluetooth Low Energy (BLE) technology and the Received Signal Strength Indicator (RSSI) technique. This approach is available in wearable devices, is easy to implement and has energy consumption advantages. However, the relative distance calculation is inaccurate, as the strength of BLE signals significantly fluctuates in indoor environments. Typical coping mechanisms, such as path-loss propagation models, require mathematical modeling and time-consuming calibration, that depend on the environment. In this paper, we propose a novel distance estimator based on RSSI-fuzzy classification of the BLE signals. Fuzzy-logic improves the robustness and accuracy of RSSI-based estimators, does not require an explicit propagation model and is easy and intuitive to (graphically) tune (using basic statistical analysis). The estimator’s suitability and the feasibility to provide an easy implementation were experimentally demonstrated in two scenarios with real-world data.

[1]  Mourad Oussalah,et al.  A survey of fuzzy logic in wireless localization , 2020, EURASIP Journal on Wireless Communications and Networking.

[2]  Pedro A. C. Sousa,et al.  Using Fuzzy Logic to Improve BLE Indoor Positioning System , 2016, DoCEIS.

[3]  Rytis Maskeliunas,et al.  Fuzzy Logic Type-2 Based Wireless Indoor Localization System for Navigation of Visually Impaired People in Buildings , 2019, Sensors.

[4]  Franca Delmastro,et al.  Sensing social interactions through BLE beacons and commercial mobile devices , 2020, Pervasive and Mobile Computing.

[5]  Jari Nurmi,et al.  Collaborative Indoor Positioning Systems: A Systematic Review , 2021, Sensors.

[6]  Michele Caldara,et al.  Indoor distance estimated from Bluetooth Low Energy signal strength: Comparison of regression models , 2016, 2016 IEEE Sensors Applications Symposium (SAS).

[7]  M. Ying,et al.  Fuzzy Logic and Soft Computing , 1999, The International Series on Asian Studies in Computer and Information Science.

[8]  Arif Sari,et al.  Path Loss Algorithms for Data Resilience in Wireless Body Area Networks for Healthcare Framework , 2018 .

[9]  Chen-Chien James Hsu,et al.  Mobile Localization-Based Service Based on RSSI Fingerprinting Method by BLE Technology , 2018, 2018 IEEE 8th International Conference on Consumer Electronics - Berlin (ICCE-Berlin).

[10]  Huarui Wu,et al.  The Accurate Location Estimation of Sensor Node Using Received Signal Strength Measurements in Large-Scale Farmland , 2018, J. Sensors.

[11]  Kaibi Zhang,et al.  Research of RSSI indoor ranging algorithm based on Gaussian - Kalman linear filtering , 2016, 2016 IEEE Advanced Information Management, Communicates, Electronic and Automation Control Conference (IMCEC).

[12]  Petros Spachos,et al.  COVID-19 and Your Smartphone: BLE-Based Smart Contact Tracing , 2020, IEEE Systems Journal.

[13]  Robert LIN,et al.  NOTE ON FUZZY SETS , 2014 .

[14]  Yu Pang,et al.  Indoor Positioning Algorithm Based on the Improved RSSI Distance Model , 2018, Sensors.

[15]  Kashem M. Muttaqi,et al.  Role of optimization algorithms based fuzzy controller in achieving induction motor performance enhancement , 2020, Nature Communications.

[16]  Rytis Maskeliunas,et al.  Smartphone based intelligent indoor positioning using fuzzy logic , 2018, Future Gener. Comput. Syst..

[17]  Helge Janicke,et al.  A Survey of COVID-19 Contact Tracing Apps , 2020, IEEE Access.

[18]  Igor Skrjanc,et al.  Indoor RSSI-based Localization using Fuzzy Path Loss Models , 2018, 2018 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE).

[19]  Aleksandr Ometov,et al.  Technical Perspectives of Contact-Tracing Applications on Wearables for COVID-19 Control , 2020, 2020 12th International Congress on Ultra Modern Telecommunications and Control Systems and Workshops (ICUMT).