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1.5.2 Anticipating Future Demand

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India has becoming the most populated country around the world in the near decade. So, urbanization is expected to grow to 50% by 2030. Therefore, urban planning agencies need to consider potential demands to control and track the use of energy in today’s society. In industry and workplaces, we witness routine sanitization campaigns, daily sweeping in households, and intensified handwashing. It is estimated that a family of five needs 100 to 200 liters of water per day just to wash their hands. This would result in the development of about 200 liters of wastewater each day that would raise water demand and waste water generation from human habitation by 20% to 25%.

The aim of the architecture is to provide numerous APIs as well as visual web services with public smart city information via data [13]. In this particular instance, the system design can make it easy to transmit sensor data to a back-end system and be incorporated into the “standard” city monitoring system.

Machine Learning Paradigm for Internet of Things Applications

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