Publication | Open Access
Indoor Air Quality Analysis Using Deep Learning with Sensor Data
104
Citations
10
References
2017
Year
Environmental MonitoringMachine LearningEngineeringAir Pollution MeasurementAir QualityPollution MonitoringLow Cost SensorSocial SciencesPollution DetectionData ScienceAir Quality MonitoringEmbedded Machine LearningOptimal Observation PeriodSensor DataComputer ScienceDeep LearningIntelligent SensorAir Quality PredictionIndoor Air QualityAir PollutionEnvironmental Signal Processing
Indoor air quality analysis is of interest to understand the abnormal atmospheric phenomena and external factors that affect air quality. By recording and analyzing quality measurements, we are able to observe patterns in the measurements and predict the air quality of near future. We designed a microchip made out of sensors that is capable of periodically recording measurements, and proposed a model that estimates atmospheric changes using deep learning. In addition, we developed an efficient algorithm to determine the optimal observation period for accurate air quality prediction. Experimental results with real-world data demonstrate the feasibility of our approach.
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