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http://dx.doi.org/10.3745/KTSDE.2017.6.9.457

Indoor Air Condition Measurement and Regression Analysis System Through Sensor Measurement Device and Gated Recurrent Unit  

Ahn, Jaehyun (버즈니(주))
Shin, Dongil (서강대학교 컴퓨터공학과)
Kim, Kyuho (서강대학교 산학협력중점)
Yang, Jihoon (서강대학교 컴퓨터공학과)
Publication Information
KIPS Transactions on Software and Data Engineering / v.6, no.9, 2017 , pp. 457-464 More about this Journal
Abstract
Indoor air quality analysis is conducted to understand abnormal atmospheric phenomena and the external factor affecting indoor air quality. By recording indoor air quality measurements periodically, we are able to observe patterns in air quality. However, it difficult to predict the number of potential parameters, set parameters for a given observation and find the coefficients. Moreover, the results are time-dependent. Thus to address these issues, we introduce a microchip capable of periodically recording indoor air quality and a model that estimates atmospheric changes based on time series data.
Keywords
Atmospheric Observation System; Time Series Prediction; Long-Short Term Memory (LSTM); Circuit Type Circulation Unit (GRU);
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