Indoor Air Quality  Predictions For Automation

Yazarlar

  • Kadir Gökdeniz Ankara University Author
  • Erkan Bostanci Ankara Üniversitesi Author

DOI:

https://doi.org/10.5281/zenodo.14670650

Anahtar Kelimeler:

Automation System- Air Quality- Deep Learning- Machine Learning

Öz

Abstract- This study examines the implementation of home automation systems to predict indoor air quality using real-time data such as temperature, humidity, pressure, occupancy status, energy consumption, and window conditions. Due to the superior pattern recognition performance of recurrent neural networks, the study employs deep learning techniques for air quality prediction. A comparative analysis of GRU, LSTM and BiGRU models highlights GRU’s superior performance across various metrics, emphasizing its generalization capability. The study also introduces an Air-Smart Control Device, enabling users to monitor predictions and control home automation systems. In conclusion, the research underscores the potential of home automation in air quality prediction, provides insights into neural network architectures, and contributes to advancements in automation technology and air quality management.

İndirmeler

İndirme verisi henüz mevcut değil.

Yazar Biyografisi

  • Erkan Bostanci, Ankara Üniversitesi

    .

Yayınlanmış

2024-12-28

Sayı

Bölüm

Articles

Nasıl Atıf Yapılır

Indoor Air Quality  Predictions For Automation. (2024). Yapay Zeka Ve İnsan Bilimleri Dergisi, 1(1), 56-66. https://doi.org/10.5281/zenodo.14670650