Among the main sources of household air pollution are harmful gasses from wood fuel and Liquefied Petroleum Gas (LPG). Even though, attempts have been made to come up with solutions using different technologies to monitor the pollution levels and give appropriate alerts. There is a need to develop a solution that will not only monitor but also predict pollution levels so that corrective measures may be taken early enough. This study aims at developing a prototype for a household air quality monitoring system and pollution prediction system using Artificial Intelligence (AI).
The proposed solution will involve the installation of the system in the house with the use of a low-cost Arduino-based microcontroller that incorporates sensors to monitor carbon monoxide (CO) and particulate matter and environmental sensors to monitor temperature and humidity. The collected data will be sent to Cloud via Global System for Mobile (GSM) for data storage, processing, and analysis. The alerting system will be developed along with the prediction system using Artificial Intelligence. Pollution early warning alerts are generated appropriately. The expected results from the study are to collect data from a kitchen, alert people using the kitchen when the air quality is poor in real-time, and also the prediction of air quality so as to minimize and later avoid the exposure of poor air quality in households.
This work deployed sensors in the household connect them with Arduino UNO and send the collected data to a cloud platform known as Thingspeak with the use of a GSM module, the data was further used on air quality prediction using Machine Learning algorithms, and air quality widget will clearly show the level of air pollution in colors.
This system will help reduce the health risks relating to indoor air pollution and also provide data to be used by the government, NGO environmental bodies, and agencies.
Nowadays, there is a growth in the number of cardiac disorders, including an increased risk of a heart attack. Our suggested solution makes use of sensors that enable heartbeat sensing to identify a person's heart rate even if they are at home. The sensor is then connected to a microcontroller, whic...
Read more>>Nowadays Women Safety is the biggest concern in many parts of the world. There is still a fear in alone areas for women as well as men. So here we propose a security patrolling robot using Raspberry PI. The system uses cameras and mic mounted on robotic vehicle for securing any premises. The robotic...
Read more>>Farmers frequently have to irrigate the ground by hand. This is a labor-intensive task that takes a lot of time to complete. After all, it can be difficult for farmers to regularly check the amount of moisture in the entire field and irrigate the areas that need it. This Internet of Things project i...
Read more>>One of the top priorities for residences, enterprises, and corporations is security. Strong security measures can prevent unauthorized intrusions. The IoT-based anti-theft system is the ideal choice for protecting both residential buildings and commercial buildings. This IOT-based security system i...
Read more>>A substantial amount of energy is consumed by streetlights. Streetlights frequently stay on even when no one is in the roadway. This IOT-based streetlight monitoring system allows us to effectively track and manage the energy usage of streetlights. In this Internet of Things (IoT) project, street l...
Read more>>