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GPS Tracking and Level Analysis of River Water Flow

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Intelligent Data Engineering and Analytics

Abstract

The global challenge that people face in the present situation is Water Resources Management (WRM). This paper supports the creation of an application for the better analysis of the water resources in the country without any faulty information misleading the records. This was thought so that the people can themselves know the situation of the water availability in their area and use water precisely. The Central Water Commission (CWC) can now keep a constant record of the water availability by itself without any intermediary. It is important for us to evaluate the water flow in different areas.

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Correspondence to Pasham Akshatha Sai .

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Sai, P.A., Celestia, T.H., Nischitha, K. (2021). GPS Tracking and Level Analysis of River Water Flow. In: Satapathy, S., Zhang, YD., Bhateja, V., Majhi, R. (eds) Intelligent Data Engineering and Analytics. Advances in Intelligent Systems and Computing, vol 1177. Springer, Singapore. https://doi.org/10.1007/978-981-15-5679-1_48

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