Ardana, Putu Doddy Heka and Redana, I Wayan and Yekti, Mawiti Infantri and Simpen, I Nengah (2022) Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approaches. Horizon Research Publishing Corporation.
Text
Similarity Check - Turnitin.pdf Download (3MB) |
||
Text
Universitas Ngurah Rai Mail - Submit Manuscript 1.pdf Download (225kB) |
||
Text
Universitas Ngurah Rai Mail - Revision after Peer Review (ID_14825967)-Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach.pdf Download (166kB) |
||
Text
Universitas Ngurah Rai Mail - Revision after Peer Review (ID_14825967)-Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach 2.pdf Download (339kB) |
||
Text
Universitas Ngurah Rai Mail - Proof Reading before Publication (ID_14825967)-Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach.pdf Download (122kB) |
||
Text
Universitas Ngurah Rai Mail - Proof Reading before Publication (ID_14825967)-Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach 3.pdf Download (131kB) |
||
Text
Universitas Ngurah Rai Mail - Notification of Final Publication.pdf Download (149kB) |
||
Text
Universitas Ngurah Rai Mail - Manuscript Status Update On (ID_ 14825967)_ Current Status – Under Peer Review- Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach.pdf Download (157kB) |
||
Text
Universitas Ngurah Rai Mail - Ask About Manuscript Status.pdf Download (162kB) |
||
Text
Universitas Ngurah Rai Mail - Acceptance Letter & Advice of Payment (ID_14825967)-Groundwater Level Forecasting Using Multiple Linear Regression and Artificial Neural Network Approach.pdf Download (150kB) |
||
Text
Peer_Review_Report-14825967 (2).docx Download (59kB) |
||
Text
Peer_Review_Report-14825967_0207 (2).docx Download (61kB) |
||
Text
HRPUB_Publication_Agreement2022_14825967 (1).pdf Download (175kB) |
||
Text
Cover Letter HRPUB Revision2.doc Download (151kB) |
||
Text
CEA-14825967_checked by referee_0207 (2).doc Download (1MB) |
||
|
Image
Acceptance Letter_14825967.jpg Download (434kB) | Preview |
Abstract
Accurate and reliable groundwater level prediction is a critical component in water resources management. This paper developed two methods to predict forty-six months of groundwater level fluctuation. The approaches of Multiple Linear Regression (MLR) and Artificial Neural Network (ANN) were compared for predicting groundwater levels. MLR and ANN approaches were performed at two monitoring wells, Ubung and Ngurah Rai, in the Denpasar region of Bali, Indonesia, considering all significant inputs of hydrometeorological time series data: barometric pressure, evaporation, temperature, wind, bright sunshine, rainfall, and groundwater level. The model’s performance was assessed statistically and graphically. The ANN-predicted groundwater levels agreed better with the observed groundwater levels than the MLR-predicted groundwater levels at all sites. The results show the ANN performs better than MLR in terms of statistical errors, notably mean square error (MSE) value of 0.6325; root mean square error (RMSE) value of 0.7953; mean absolute error (MAE) value of 0.6122 based on the MLR in the Ubung monitoring well, while ANN models got an MSE value of 0.143; RMSE value of 0.379, and MAE value of 0.311. For the Ngurah Rai monitoring well, the MSE value is of 1.3406, RMSE value of 1.1579, and MAE value of 0.9152 for MLR, while ANN models obtained MSE value of 0.0483, RMSE value of 0.2198, and MAE value of 0.1266.
Item Type: | Other |
---|---|
Subjects: | T Technology > TA Engineering (General). Civil engineering (General) |
Divisions: | Fakultas Sains dan Teknologi > Prodi Teknik Sipil |
Depositing User: | Rees Jati Prakasa |
Date Deposited: | 08 Jun 2023 02:35 |
Last Modified: | 08 Jun 2023 02:35 |
URI: | http://repo.unr.ac.id/id/eprint/794 |
Actions (login required)
View Item |