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An Intelligent Groundwater Management Recommender System

Author name : KHALAF OKAB KHALAF ALSALEM
Publication Date : 2021-11-09
Journal Name : Indian Society for Education and Environment (iSee)

Abstract

Objectives: To explore the area of groundwater that can assist to improve the accessibility of freshwater. Methods : We propose a machine-deep learning model based on a recommender system to manage and classify groundwater. Finding: The main goal of our proposed approach is to classify groundwater into multi-labels, which are drinking water (Excellent or Good) or Irrigation water (Poor or Very Poor) with guarantee a higher accuracy score. The recommender system is applied on the testing dataset and the accuracy of the deep learning technique was 91% and the accuracy of machine leaning technique was 84%.

Keywords

Groundwater Management; Intelligent System; Recommender Systems; Datamining; Machine Learning; Deep Learning

Publication Link

https://doi.org/10.17485/IJST/v14i37.1332

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