TL;DR
FlowSense is a machine learning-based system that accurately monitors airflow and vent status in buildings using privacy-preserving audio sensing, enhancing indoor air quality management.
Contribution
This work introduces a novel audio-based airflow monitoring system that preserves user privacy and demonstrates high accuracy and robustness in real-world indoor environments.
Findings
Over 90% accuracy in vent status prediction
0.96 MSE in airflow rate estimation
Robustness across different smartphone models and distances
Abstract
Proper indoor ventilation through buildings' heating, ventilation, and air conditioning (HVAC) systems has become an increasing public health concern that significantly impacts individuals' health and safety at home, work, and school. While much work has progressed in providing energy-efficient and user comfort for HVAC systems through IoT devices and mobile-sensing approaches, ventilation is an aspect that has received lesser attention despite its importance. With a motivation to monitor airflow from building ventilation systems through commodity sensing devices, we present FlowSense, a machine learning-based algorithm to predict airflow rate from sensed audio data in indoor spaces. Our ML technique can predict the state of an air vent-whether it is on or off-as well as the rate of air flowing through active vents. By exploiting a low-pass filter to obtain low-frequency audio signals,…
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Taxonomy
Methodstravel james
