REAL-TIME SPATIOTEMPORAL DISTRIBUTION AND ITS INTERPRETATION OF INDOOR AIR QUALITY ASSESSMENT USING MACHINE LEARNING - Dalam bentuk buku karya ilmiah

LULU MILLATINA RACHMAWATI

Informasi Dasar

119 kali
23.05.346
621.31
Karya Ilmiah - Thesis (S2) - Reference

Indoor air quality assessment is vital for building habitability, but current protocols suit larger buildings and involve costly instruments. To address this gap, this study employ micro sensors for detailed observations. This study establish a real-time validation system, enhancing outlier detection using a sliding window with an optimal size of 240 data points (8 hours). Our analysis shows micro sensors’ reliability, with an average of valid data from six sensors consistently exceeding 89%. In spatiotemporal model  prediction using machine learning, LSTM Neural Network outperforms MLP. The temporal model, trained with individual station/node data, yields mean RMSE values of 6 ug/m3 (PM2.5) and 67 ppm (CO2). However, the spatial model shows increased RMSE during cross-validation, necessitating further investigation. Results reveal PM2.5 concentrations rising during infiltration events, signifying pollutant transport into the observed room, while CO2 concentrations decrease and vice versa. Partitions significantly affect CO2 concentrations, impacting predictions near node in the partition room. Visualizations indicate homogeneous PM2.5 distribution exceeding the 24-hour standard, while CO2 consistently exceeds expectations in partitioned areas without surpassing standards. This underscores tailored indoor air quality assessments’ importance, especially for smaller buildings, utilizing micro sensors for a comprehensive understanding of indoor air quality dynamics.

Subjek

ELECTRICAL ENGINEERING
 

Katalog

REAL-TIME SPATIOTEMPORAL DISTRIBUTION AND ITS INTERPRETATION OF INDOOR AIR QUALITY ASSESSMENT USING MACHINE LEARNING - Dalam bentuk buku karya ilmiah
 
xii,33p.: il,; pdf file
inggris

Sirkulasi

Rp. 0
Rp. 0
Tidak

Pengarang

LULU MILLATINA RACHMAWATI
Perorangan
Indra Chandra, Fiky Yosef Suratman
 

Penerbit

Universitas Telkom, S2 Teknik Elektro
Bandung
2023

Koleksi

Kompetensi

 

Download / Flippingbook

 

Ulasan

Belum ada ulasan yang diberikan
anda harus sign-in untuk memberikan ulasan ke katalog ini