Predicting Concentrations of Selected Ions and Total Hardness in Groundwater Using Artificial Neural Networks and Multiple Linear Regression Models

dc.contributor.advisor

Boadu, Fred

dc.contributor.author

Calvert, Matthew Brian

dc.date.accessioned

2021-01-12T22:32:17Z

dc.date.available

2021-01-12T22:32:17Z

dc.date.issued

2020

dc.department

Civil and Environmental Engineering

dc.description.abstract

Assessing the quality of groundwater in a given aquifer can be an expensive and time-consuming process. An effort is made in this thesis to predict several water quality parameters, namely Fe, Cl, SO4, and total hardness (as CaCO3), from the easily measured properties total dissolved solids (TDS) and electrical conductivity (EC). This is achieved by establishing functional relationships between the four quality parameters, TDS, and EC using multiple linear regression (MLR) and artificial neural network (ANN) models. Data for these variables were gathered from five unrelated groundwater quality studies. Results indicate that the ANN models produced more accurate functions than MLR, showcasing the strength of ANN’s in predictive applications. Analysis of the relative importance of each parameter illustrates that total hardness (CaCO3) is most influential in determining TDS, while sulphate is most influential on EC. These results could have a significant impact on the future of groundwater quality assessments.

dc.identifier.uri

https://hdl.handle.net/10161/22223

dc.subject

Water resources management

dc.subject

Artificial intelligence

dc.subject

Hydrologic sciences

dc.title

Predicting Concentrations of Selected Ions and Total Hardness in Groundwater Using Artificial Neural Networks and Multiple Linear Regression Models

dc.type

Master's thesis

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Calvert_duke_0066N_15965.pdf
Size:
1.19 MB
Format:
Adobe Portable Document Format

Collections