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Machine Learning Models for Detectin...
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Fasnacht, Angela Maria.
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Machine Learning Models for Detecting Pesticides in Chlorinated Drinking Water Distribution Systems.
Record Type:
Electronic resources : Monograph/item
Title/Author:
Machine Learning Models for Detecting Pesticides in Chlorinated Drinking Water Distribution Systems./
Author:
Fasnacht, Angela Maria.
Published:
Ann Arbor : ProQuest Dissertations & Theses, : 2023,
Description:
293 p.
Notes:
Source: Dissertations Abstracts International, Volume: 85-04, Section: A.
Contained By:
Dissertations Abstracts International85-04A.
Subject:
Water resources management. -
Online resource:
https://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=30688571
ISBN:
9798380609470
Machine Learning Models for Detecting Pesticides in Chlorinated Drinking Water Distribution Systems.
Fasnacht, Angela Maria.
Machine Learning Models for Detecting Pesticides in Chlorinated Drinking Water Distribution Systems.
- Ann Arbor : ProQuest Dissertations & Theses, 2023 - 293 p.
Source: Dissertations Abstracts International, Volume: 85-04, Section: A.
Thesis (Ph.D.)--Drexel University, 2023.
This item must not be sold to any third party vendors.
This dissertation encompasses anomaly detection, pesticide kinetics, and optimized machine learning models. It demonstrates the potential of machine learning techniques in predicting the occurrence of pesticides in chlorinated drinking water distribution systems. By using data from online sensors that capture water quality parameters from a prototype drinking water system, in which pesticides such as glyphosate, Dicamba, and Aldicarb were introduced, regression models were successfully created that were capable of identifying anomalies associated with pesticide presence or their byproducts in an aqueous environment rich in chlorine. In total, six regression algorithms-Decision Tree Regressor (DTR), Support Vector Regression (SVR), KNN Regressor (KNNR), Random Forest Regressor (RFR), Gradient Boosting Regressor (GBR), and Ada Boost Regressor (ABR)-were created and assessed as prediction models for leveraging historical data to uncover patterns between input features and target variables, to predict pesticide presence in the piped system ultimately. This thesis project employed data preprocessing, division into training and testing subsets, feature selection, and hyperparameter tuning methods to enhance model accuracy and efficiency. For example, the evaluation of the six regression models was assessed through metrics such as R-squared (R2 ), root mean square error (RMSE), and mean absolute error (MAE). The random forest regression (RFR) and gradient boosting regressor (GBR) algorithms demonstrate promising R2 scores for predicting glyphosate and Aldicarb. For Dicamba, meticulous hyperparameter tuning resulted in the RFR algorithm achieving an impressive R2 score of 0.87, closely followed by KNNR and GBR with R2 scores of 0.86, underscoring the critical role of hyperparameter tuning in optimizing the predictive capabilities of regression algorithms. By effectively integrating machine learning techniques with water quality data, this dissertation also offers valuable insights into water quality assessment, emphasizing the potential for early detection of pesticide contamination within drinking water distribution systems. In addition to machine learning, early logistic regression detection was used to develop a model for identifying potential pesticide events. While the models developed in this dissertation have the potential to contribute significantly to the field of innovative contamination detection, promoting public health, and advancing sustainability, it is essential to acknowledge the limitation of the datasets used to develop the models and the interpretability of results of the models, to assess their potential benefits and shortcomings.
ISBN: 9798380609470Subjects--Topical Terms:
794747
Water resources management.
Subjects--Index Terms:
Drinking water
Machine Learning Models for Detecting Pesticides in Chlorinated Drinking Water Distribution Systems.
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This dissertation encompasses anomaly detection, pesticide kinetics, and optimized machine learning models. It demonstrates the potential of machine learning techniques in predicting the occurrence of pesticides in chlorinated drinking water distribution systems. By using data from online sensors that capture water quality parameters from a prototype drinking water system, in which pesticides such as glyphosate, Dicamba, and Aldicarb were introduced, regression models were successfully created that were capable of identifying anomalies associated with pesticide presence or their byproducts in an aqueous environment rich in chlorine. In total, six regression algorithms-Decision Tree Regressor (DTR), Support Vector Regression (SVR), KNN Regressor (KNNR), Random Forest Regressor (RFR), Gradient Boosting Regressor (GBR), and Ada Boost Regressor (ABR)-were created and assessed as prediction models for leveraging historical data to uncover patterns between input features and target variables, to predict pesticide presence in the piped system ultimately. This thesis project employed data preprocessing, division into training and testing subsets, feature selection, and hyperparameter tuning methods to enhance model accuracy and efficiency. For example, the evaluation of the six regression models was assessed through metrics such as R-squared (R2 ), root mean square error (RMSE), and mean absolute error (MAE). The random forest regression (RFR) and gradient boosting regressor (GBR) algorithms demonstrate promising R2 scores for predicting glyphosate and Aldicarb. For Dicamba, meticulous hyperparameter tuning resulted in the RFR algorithm achieving an impressive R2 score of 0.87, closely followed by KNNR and GBR with R2 scores of 0.86, underscoring the critical role of hyperparameter tuning in optimizing the predictive capabilities of regression algorithms. By effectively integrating machine learning techniques with water quality data, this dissertation also offers valuable insights into water quality assessment, emphasizing the potential for early detection of pesticide contamination within drinking water distribution systems. In addition to machine learning, early logistic regression detection was used to develop a model for identifying potential pesticide events. While the models developed in this dissertation have the potential to contribute significantly to the field of innovative contamination detection, promoting public health, and advancing sustainability, it is essential to acknowledge the limitation of the datasets used to develop the models and the interpretability of results of the models, to assess their potential benefits and shortcomings.
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https://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=30688571
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