Environment-Aware Indoor LoRaWAN Ranging Using Path Loss Model Inversion and Adaptive RSSI Filtering
Nahshon Mokua Obiri, Kristof Van Laerhoven

TL;DR
This paper introduces an environment-aware, interpretable indoor LoRaWAN ranging method that combines path loss model inversion with adaptive RSSI filtering, achieving sub-10 meter accuracy in complex indoor settings.
Contribution
The authors develop a lightweight, site-calibrated pipeline integrating environmental covariates into path loss modeling and filtering, significantly improving indoor ranging accuracy over existing methods.
Findings
Achieved a mean absolute error of 4.74 m in indoor distance estimation.
Filtering RSSI reduces volatility and improves model fit, increasing R^2 from 0.82 to 0.89.
Outperformed a baseline multi-wall model with 12.07 m MAE by a substantial margin.
Abstract
Achieving sub-10 m indoor ranging with LoRaWAN is challenging because multipath, human blockage, and micro-climate dynamics induce non-stationary attenuation in received signal strength indicator (RSSI) measurements. We present a lightweight, interpretable, site-calibrated pipeline that couples an environment-aware multi-wall path loss model with a forward-only, innovation-driven Kalman prefilter for RSSI. The model augments distance and wall terms with frequency, signal-to-noise ratio (SNR), and co-located environmental covariates, including temperature, relative humidity, carbon dioxide, particulate matter, and barometric pressure, and is inverted deterministically for distance estimation. On a one-year single-gateway office dataset comprising over 2 million uplinks, the approach attains a mean absolute error (MAE) of 4.74 m and a root mean square error (RMSE) of 6.76 m in distance…
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