dc.description.abstract | Indoor localization has gained significant importance in the context of smart cities, driven
by the need for accurate positioning and navigational solutions. This research focuses on
the application of long range (LoRa) wireless technology and Received Signal Strength
Indicator (RSSI) ensemble approaches to address the challenges of indoor localization.
While RSSI-based approaches offer simplicity and cost-effectiveness, they suffer from
variability and poor accuracy. On the other hand, Machine Learning (ML) techniques
hold promise for improving accuracy by leveraging past data and adapting to changing
environments, but they require extensive training data and computational resources.
Combining multiple technologies, such as RSSI and machine learning, can enhance the
accuracy and robustness of indoor localization systems. However, the choice of technique
should be based on the specific application requirements, considering factors such as ac curacy levels, cost constraints, and system complexity. In this work, an ensemble machine
learning based approach is proposed for LoRa based indoor localization systems. Where
ML algorithms Extra-trees classifier, Gradient Boost classifier, Random forest classifier,
Stacking Classifier,Soft Voting /Majority Rule classifier,Hist Gradient Boosting Classifier
and it observed that Hist Gradient Boosting Classifier algorithm is outperforming by
providing 99% localization accuracy | en_US |