| Literature DB >> 27869682 |
Gonçalo Marques1, Rui Pitarma2.
Abstract
The study of systems and architectures for ambient assisted living (AAL) is undoubtedly a topic of great relevance given the aging of the world population. The AAL technologies are designed to meet the needs of the aging population in order to maintain their independence as long as possible. As people typically spend more than 90% of their time in indoor environments, indoor air quality (iAQ) is perceived as an imperative variable to be controlled for the inhabitants' wellbeing and comfort. Advances in networking, sensors, and embedded devices have made it possible to monitor and provide assistance to people in their homes. The continuous technological advancements make it possible to build smart objects with great capabilities for sensing and connecting several possible advancements in ambient assisted living systems architectures. Indoor environments are characterized by several pollutant sources. Most of the monitoring frameworks instantly accessible are exceptionally costly and only permit the gathering of arbitrary examples. iAQ is an indoor air quality system based on an Internet of Things paradigm that incorporates in its construction Arduino, ESP8266, and XBee technologies for processing and data transmission and micro sensors for data acquisition. It also allows access to data collected through web access and through a mobile application in real time, and this data can be accessed by doctors in order to support medical diagnostics. Five smaller scale sensors of natural parameters (air temperature, moistness, carbon monoxide, carbon dioxide, and glow) were utilized. Different sensors can be included to check for particular contamination. The results reveal that the system can give a viable indoor air quality appraisal in order to anticipate technical interventions for improving indoor air quality. Indeed indoor air quality might be distinctively contrasted with what is normal for a quality living environment.Entities:
Keywords: Internet of Things; ZigBee; air quality monitoring; ambient assisted living; gas sensors; indoor air quality; indoor environment; smart cities; wireless sensor network
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Year: 2016 PMID: 27869682 PMCID: PMC5129362 DOI: 10.3390/ijerph13111152
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Wireless sensor networks (WSN) architecture.
WSN consumption (mA).
| Node State | iAQ Sensor | iAQ Gateway |
|---|---|---|
| Sleeping | 108 | 54 |
| Awake (Transmitting) | 274 | 247 |
| Awake (Receiving) | 129 | 139 |
Figure 2Polytechnic Institute of Guarda Laboratory plan.
Figure 3Relation between distance and RSSI.
Figure 4Android app.
Figure 5iAQ system architecture.
Figure 6iAQ Sensor.
Figure 7iAQ Sensor hardware.
Figure 8iAQ Gateway.
Figure 9Data visualization: relative humidity (%).
Figure 10Data visualization: temperature (°C).
Figure 11Data visualization: carbon dioxide (CO2) concentration (ppm).
Figure 12iAQ notifications system.