Real-time gradient-aware indigenous AQI estimation IoT platform
| Author | Tariq H. |
| Author | Abdaoui A. |
| Author | Touati F. |
| Author | Al Hitmi M.A. |
| Author | Crescini D. |
| Author | Mnaouer A.B. |
| Available date | 2022-05-22T11:03:02Z |
| Publication Date | 2020 |
| Publication Name | Advances in Science, Technology and Engineering Systems |
| Resource | Scopus |
| Identifier | http://dx.doi.org/10.25046/AJ0506198 |
| Abstract | Environmental monitoring has gained significant importance in outdoor air quality measurement and assessment for fundamental survival as well as ambient assisted living. In real-time outdoor urban scale, instantaneous air quality index estimation, the electrochemical sensors warm-up time, cross-sensitivity computation-error, geo-location typography, instantaneous capacity or back up time; and energy efficiency are the six major challenges. These challenges lead to real-time gradient anomalies that effect the accuracy and pro-longed lags in air quality index mapping campaigns for state and environmental/meteorological agencies. In this work, a gradient-aware, multi-variable air quality sensing node is proposed with event-triggered sensing based on position, gas magnitudes, and cross-sensitivity interpolation. In this approach, temperature, humidity, pressure, geo-position, photovoltaic power, volatile organic compounds, particulate matter (2.5), ozone, Carbon mono-oxide, Nitrogen dioxide, and Sulphur dioxide are the principle variables. Results have shown that the proposed system optimized the real-time air quality monitoring for the chosen geo-spatial cluster (Qatar University). |
| Language | en |
| Publisher | ASTES Publishers |
| Subject | Air quality Gas sensors node IoT Mapping Multi-variable environmental |
| Type | Article |
| Pagination | 1666-1673 |
| Issue Number | 6 |
| Volume Number | 5 |
Files in this item
| Files | Size | Format | View |
|---|---|---|---|
|
There are no files associated with this item. |
|||
This item appears in the following Collection(s)
-
Electrical Engineering [2850 items ]

