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Machine Learning Algorithms for Water Quality Management Using Total Dissolved Solids (TDS) Data Analysis
by
Heo, Joonghyeok
, Kim, Cheolhong
, Garcia, Julio
in
Accuracy
/ Algorithms
/ Aquifers
/ Contamination
/ Data analysis
/ Decision trees
/ Drinking water
/ Electronic data processing
/ groundwater
/ Groundwater pollution
/ Health risk assessment
/ Health risks
/ Machine learning
/ Methods
/ Missing data
/ Neural networks
/ Oil shale
/ Petroleum production
/ Public health
/ Remote sensing
/ research projects
/ Rivers
/ Salinity
/ Shale oil
/ Support vector machines
/ Texas
/ Waste disposal
/ water management
/ Water quality
/ Water resources management
/ Water supply
/ World Health Organization
2024
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Machine Learning Algorithms for Water Quality Management Using Total Dissolved Solids (TDS) Data Analysis
by
Heo, Joonghyeok
, Kim, Cheolhong
, Garcia, Julio
in
Accuracy
/ Algorithms
/ Aquifers
/ Contamination
/ Data analysis
/ Decision trees
/ Drinking water
/ Electronic data processing
/ groundwater
/ Groundwater pollution
/ Health risk assessment
/ Health risks
/ Machine learning
/ Methods
/ Missing data
/ Neural networks
/ Oil shale
/ Petroleum production
/ Public health
/ Remote sensing
/ research projects
/ Rivers
/ Salinity
/ Shale oil
/ Support vector machines
/ Texas
/ Waste disposal
/ water management
/ Water quality
/ Water resources management
/ Water supply
/ World Health Organization
2024
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Do you wish to request the book?
Machine Learning Algorithms for Water Quality Management Using Total Dissolved Solids (TDS) Data Analysis
by
Heo, Joonghyeok
, Kim, Cheolhong
, Garcia, Julio
in
Accuracy
/ Algorithms
/ Aquifers
/ Contamination
/ Data analysis
/ Decision trees
/ Drinking water
/ Electronic data processing
/ groundwater
/ Groundwater pollution
/ Health risk assessment
/ Health risks
/ Machine learning
/ Methods
/ Missing data
/ Neural networks
/ Oil shale
/ Petroleum production
/ Public health
/ Remote sensing
/ research projects
/ Rivers
/ Salinity
/ Shale oil
/ Support vector machines
/ Texas
/ Waste disposal
/ water management
/ Water quality
/ Water resources management
/ Water supply
/ World Health Organization
2024
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Machine Learning Algorithms for Water Quality Management Using Total Dissolved Solids (TDS) Data Analysis
Journal Article
Machine Learning Algorithms for Water Quality Management Using Total Dissolved Solids (TDS) Data Analysis
2024
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Overview
Our research project specifically focuses on evaluating groundwater quality in six West Texas counties. We aim to determine whether environmental changes have any impact on the levels of Total Dissolved Solids (TDS) in the water supplied to the public. To achieve this goal, we will be utilizing advanced machine learning algorithms to analyze TDS levels and create geospatial maps for each year between the 1990s and 2010s. To ensure the accuracy of our data, we have gathered information from two trusted sources: the Texas Water Development Board (TWDB) and the Groundwater Database (GWDB). We have analyzed the TDS and other elemental analyses from TWDB–GWDB lab reports and compared them with the quality cutoff set by the World Health Organization (WHO). Our approach involves a thorough examination of the data to identify any emerging patterns. The machine learning algorithm has been successfully trained and tested, producing highly accurate results that effectively predict water quality. Our results have been validated through extensive testing, highlighting the potential of machine learning approaches in the fields of environmental research. Overall, our findings will contribute to the development of more effective policies and regulations in predicting groundwater quality and improving water resource management in Texas. Therefore, this research provides important information for groundwater protection and the development of plans for water resource use in the future.
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