Gormez, YasinArslan, HalilIsik, Yunus EmreTomac, Sercan2024-10-262024-10-2620241300-70092147-5881https://doi.org/10.5505/pajes.2023.57088https://hdl.handle.net/20.500.12418/28832Indoor localization involves pinpointing the location of an object in an interior space and has several applications, including navigation, asset tracking, and shift management. However, this technology has not yet been perfected, and many methods, such as triangulation, Kalman filters, and machine learning models have been proposed to address indoor localization problems. Unfortunately, these methods still have a large degree of error that makes them ill-suited for difficult cases in real-time. In this study, we propose a hybrid model for Bluetooth low energy -based indoor localization. In this model, the triangulation method is combined with several machine learning methods (naive Bayes, k -nearest neighbor, logistic regression, support vector machines, and artificial neural networks) that are optimized and tested in three different environments. In the experiment, the proposed model performed similarly to the solo triangulation model in easy and medium cases; however, the proposed model obtained a much smaller degree of error for hard cases than either solo triangulation or machine learning models alone.tr10.5505/pajes.2023.57088info:eu-repo/semantics/closedAccessInternet of ThingsIndoor localizationBluetooth low energyMachine learningTriangulationA novel hybrid model for bluetooth low energy-based indoor localization using machine learning in the internet of thingsArticle30143361283226WOS:001168170900007N/A