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Prediction of Waste and Dumping Methods in India Using Machine Learning

Pooja sharma, Ravi suthar

Abstract


As Indian government introduced many schemes for cleaning of roads and slum areas. In which the Swachh Bharat Mission is the biggest step of our government in period of last decade. Main Aim of
the mission is to clean Roads, Streets and Construction Sites of Urban and provisional Zones. Here Sustainable or Continuous waste management is a major challenge. With continuous increase in
population the rate of generation of waste is also continuously increasing. This requires a large resources of collection and handling of Municipal solid waste. There are many solution proposed already in effect of increasing efficiency of A Support System for collection of data. The proposed Decision Support System helps in operation, Planning and helps the administration to take correct decisions. Hence the same system can also be used to take care of all dumping Methods and their respective quantity.


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References


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DOI: https://doi.org/10.37628/jvdt.v7i1.1536

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