Improved-RSSI-based indoor localization by using pseudo-linear solution with machine learning algorithms
Tóm tắt
With the rapid advancement of the Internet of Things and the popularization of mobile Internet-based applications, the location-based service (LBS) has attracted much attention from commercial developers and researchers. Received signal strength indicator (RSSI)-based indoor localization technology has irreplaceable advantages for many LBS applications. However, due to multipath fading, noise, and the limited dynamic range of the RSSI measurements, precise localization based on a path-loss model and multiliterate becomes highly challenging. Therefore, this study proposes a machine learning (ML)-based improved RSSI-based indoor localization approach in which RSSI data is first augmented and then classified using ML algorithms. In addition, we implement an experimental testbed to collect the RSSI value based on Wi-Fi using various reference and target nodes. The received RSSI measurements undergo pre-processing using pseudo-linear solution techniques for closed-form solutions, approximating the original system of nonlinear RSSI measurement equations with a system of linear equations. Finally, the RSSI measurement are trained using ML models such as linear regression, polynomial regression, support vector regression, random forest regression, and decision tree regression. Consequently, the experimental results express in terms of root mean square error and coefficient of determinant compared with various machine learning models with hyper-parameter tuning.
Tài liệu tham khảo
Zafari F, Gkelias A, Leung KK (2019) A survey of indoor localization systems and technologies. IEEE Commun Surv Tutor 21(3):2568–2599
Fonseka P, Sandrasegaran K (2018) Indoor localization for IoT applications using fingerprinting. IEEE, pp 736–741
Ibwe K, Pande S, Abdalla AT et al (2023) Indoor positioning using circle expansion-based adaptive trilateration algorithm. J Electr Syst Inf Technol 10:10. https://doi.org/10.1186/s43067-023-00075-4
Mohar SS, Goyal S, Kaur R (2018) A survey of localization in wireless sensor network using optimization techniques. IEEE, pp 1–6
Sandamini C, Maduranga MWP, Tilwari V, Yahaya J, Qamar F, Nguyen QN, Ibrahim SRA (2023) A Review of Indoor Positioning Systems for UAV Localization with Machine Learning Algorithms. Electronics 12:1533. https://doi.org/10.3390/electronics12071533
Maduraga MWP, Abeysekara R (2021) Comparison of supervised learning-based indoor localization techniques for smart building applications. In: 2021 international research conference on smart computing and systems engineering (SCSE), Colombo, Sri Lanka, pp 145–148. https://doi.org/10.1109/SCSE53661.2021.9568311
Mingyi YOU, Annan LU (2021) A robust TDOA based solution for source location using mixed Huber loss. J Syst Eng Electron 32(6):1375–1380
Yongsheng Z, Dexiu HU, Yongjun Z, Zhixin LIU (2020) Moving target localization for multistatic passive radar using delay, Doppler and Doppler rate measurements. J Syst Eng Electron 31(5):939–949
Rahman SA, Tout H, Talhi C, Mourad A (2020) Internet of things intrusion detection: centralized, on-device, or federated learning? IEEE Netw 34(6):310–317. https://doi.org/10.1109/MNET.011.2000286
Kimothi S, Thapliyal A, Singh R, Rashid M, Gehlot A, Akram SV, Javed AR (2023) Comprehensive database creation for potential fish zones using IoT and ML with assimilation of geospatial techniques. Sustainability 15:1062. https://doi.org/10.3390/su15021062
Kherraf N, Alameddine HA, Sharafeddine S, Assi CM, Ghrayeb A (2019) Optimized provisioning of edge computing resources with heterogeneous workload in IoT networks. IEEE Trans Netw Serv Manag 16(2):459–474. https://doi.org/10.1109/TNSM.2019.2894955
Okereke GE, Bali MC, Okwueze CN et al (2023) K-means clustering of electricity consumers using time-domain features from smart meter data. J Electr Syst Inf Technol 10:2. https://doi.org/10.1186/s43067-023-00068-3
Gadhgadhi A, HachaΪchi Y, Zairi H (2020) A machine learning based indoor localization. IEEE, pp 33–38
Abbas HA, Boskany NW, Ghafoor KZ, Rawat DB (2021) Wi-Fi based accurate indoor localization system using SVM and LSTM algorithms. IEEE, pp 416–422
Maduranga MWP, Abeysekara R (2021) Supervised machine learning for RSSI based indoor localization in IoT applications. Int J Comput Appl 183(3):26–32
Itoh KI, Watanabe S, Shih JS, Sato T (2002) Performance of handoff algorithm based on distance and RSSI measurements. IEEE Trans Veh Technol 51(6):1460–1468
Schulten H, Kuhn M, Heyn R, Dumphart G, Trosch F, Wittneben A (2019) On the crucial impact of antennas and diversity on BLE RSSI-based indoor localization. IEEE, pp 1–6
Yang B, Guo L, Guo R, Zhao M, Zhao T (2020) A novel trilateration algorithm for RSSI-based indoor localization. IEEE Sens J 20(14):8164–8172
Jianyong Z, Haiyong L, Zili C, Zhaohui L (2014) RSSI based bluetooth low energy indoor positioning. IEEE, pp 526–533
Chen W-C, Kao K-F, Chang Y-T, Chang C-H (2018) An RSSI-based distributed real-time indoor positioning framework. IEEE, pp 1288–1291
Goldoni E, Savioli A, Risi M, Gamba P (2010) Experimental analysis of RSSI-based indoor localization with IEEE 802.15. IEEE, pp 71–77
Nazir U, Shahid N, Arshad MA, Raza SH (2012) Classification of localization algorithms for wireless sensor network: a survey. IEEE, pp 1–5
Zhang L, Peng H, He J, Zhang S, Zhang Z (2022) Three-dimensional localization algorithm of mobile nodes based on received signal strength indicator-angle of arrival and least-squares support-vector regression. Int J Distrib Sens Netw 18(7):15501329221111960
Wu S, Huang W, Li M, Xu K (2022) A novel RSSI fingerprint positioning method based on virtual AP and convolutional neural network. IEEE Sens J 22(7):6898–6909
Lapčak M, Ovseník LU, Oravec J, Zdravecký N (2022) Design of hard switching for FSO/RF hybrid system based on prediction of RSSI parameter and environmental conditions. IEEE, pp 1–6
Hassen WF, Mezghani J (2022) CNN based approach for indoor positioning services using RSSI fingerprinting technique. IEEE, pp 778–783
Jia B, Liu J, Feng T, Huang B, Baker T, Tawfik H (2022) TTSL: an indoor localization method based on temporal convolutional network using time-series RSSI. Comput Commun 193:293–301
