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Environmental monitoring with the help of Internet of Things (loT) and machine learning

Citation

Abstract

In recent day situation, the non-stop increase in air and noise pollution can be an enormous direful downside for our country. It has become an obligatory to manage and ttingly monitor true so, the speci ed steps to manage true may be undertaken. According to World Health Organization (WHO), 60dB is that the sound level hu- man will tolerate while not gradual loss of hearing. Around 11.7% of the population in Asian country have lost their hearing thanks to pollution says the Department of Environment (DoE) study, that was conducted in 2017 and for pollution it a ects the human body's metabolic process and cardiac systems, and additionally a ects the eyes and di erent body organs.. Pollution additionally causes various diseases like cancer that have an e ect on di erent body organs. Therefore, in our project, an IoT primarily based technique exploitation Raspberry Pi is employed to observe and check live the Air quality and also the noise pollution of a neighborhood, are projected. System uses air sensors to sense presence of harmful gases/compounds within the air and perpetually transmit this information to micro controller. Ad- ditionally system keeps measuring excessive sound level and reports it to the web server over IoT. We tend to additionally need to predict the pollution level of sound and harmful gases so it may be prevented more.This permits authorities to observe pollution in several areas and take action against it. For taking action, we've to research it and that we can analyze it by Machine learning algorithms.

Description

Cataloged from PDF version of thesis.
Includes bibliographical references (pages 35-37).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2020.

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Thesis