Yayın:
Machine Learning-Based Water Level Forecast in a Dam Reservoir: A Case Study of Karaçomak Dam in the Kızılırmak Basin, Türkiye

dc.contributor.authorGüneş Şen, Senem
dc.date.accessioned2026-01-05T22:42:05Z
dc.date.issued2025-09-18
dc.description.abstractReliable dam reservoir operation is crucial for the sustainable management of water resources under climate change-induced uncertainties. This study evaluates four machine learning algorithms—linear regression, decision tree, random forest, and XGBoost—for forecasting daily water levels in a dam reservoir in the Western Black Sea Region of Türkiye. A dataset of 5964 daily hydro-meteorological observations spanning 17 years (2008–2024) was used, and model performances were assessed using MAE, RMSE, and R2 metrics after hyperparameter optimization and cross-validation. The linear regression model showed weak predictive capability (R2 = 0.574; RMSE = 2.898 hm3), while the decision tree model achieved good accuracy but limited generalization (R2 = 0.983; RMSE = 0.590 hm3). In contrast, ensemble models delivered superior accuracy. Random forest produced balanced results (R2 = 0.983; RMSE = 0.585 hm3; MAE = 0.046 hm3), while XGBoost achieved comparable accuracy (R2 = 0.983) with a slightly lower RMSE (0.580 hm3). Statistical tests (p > 0.05) confirmed no significant differences between predicted and observed values. These findings demonstrate the reliability of ensemble learning methods for dam reservoir water level forecasting and suggest that random forest and XGBoost can be integrated into decision support systems to improve water allocation among agricultural, urban, and ecological demands.
dc.description.urihttps://doi.org/10.3390/su17188378
dc.identifier.doi10.3390/su17188378
dc.identifier.eissn2071-1050
dc.identifier.openairedoi_________::e1b1815bc61896ebc1b9bdefbcfcd605
dc.identifier.orcid0000-0001-5566-6676
dc.identifier.scopus2-s2.0-105017154419
dc.identifier.startpage8378
dc.identifier.urihttps://hdl.handle.net/20.500.12597/43306
dc.identifier.volume17
dc.identifier.wos001582223200001
dc.language.isoeng
dc.publisherMDPI AG
dc.relation.ispartofSustainability
dc.rightsOPEN
dc.titleMachine Learning-Based Water Level Forecast in a Dam Reservoir: A Case Study of Karaçomak Dam in the Kızılırmak Basin, Türkiye
dc.typeArticle
dspace.entity.typePublication
local.api.response{"authors":[{"fullName":"Senem Güneş Şen","name":"Senem","surname":"Güneş Şen","rank":1,"pid":{"id":{"scheme":"orcid_pending","value":"0000-0001-5566-6676"},"provenance":null}}],"openAccessColor":"gold","publiclyFunded":false,"type":"publication","language":{"code":"eng","label":"English"},"countries":null,"subjects":null,"mainTitle":"Machine Learning-Based Water Level Forecast in a Dam Reservoir: A Case Study of Karaçomak Dam in the Kızılırmak Basin, Türkiye","subTitle":null,"descriptions":["<jats:p>Reliable dam reservoir operation is crucial for the sustainable management of water resources under climate change-induced uncertainties. This study evaluates four machine learning algorithms—linear regression, decision tree, random forest, and XGBoost—for forecasting daily water levels in a dam reservoir in the Western Black Sea Region of Türkiye. A dataset of 5964 daily hydro-meteorological observations spanning 17 years (2008–2024) was used, and model performances were assessed using MAE, RMSE, and R2 metrics after hyperparameter optimization and cross-validation. The linear regression model showed weak predictive capability (R2 = 0.574; RMSE = 2.898 hm3), while the decision tree model achieved good accuracy but limited generalization (R2 = 0.983; RMSE = 0.590 hm3). In contrast, ensemble models delivered superior accuracy. Random forest produced balanced results (R2 = 0.983; RMSE = 0.585 hm3; MAE = 0.046 hm3), while XGBoost achieved comparable accuracy (R2 = 0.983) with a slightly lower RMSE (0.580 hm3). Statistical tests (p &gt; 0.05) confirmed no significant differences between predicted and observed values. These findings demonstrate the reliability of ensemble learning methods for dam reservoir water level forecasting and suggest that random forest and XGBoost can be integrated into decision support systems to improve water allocation among agricultural, urban, and ecological demands.</jats:p>"],"publicationDate":"2025-09-18","publisher":"MDPI AG","embargoEndDate":null,"sources":["Crossref"],"formats":null,"contributors":null,"coverages":null,"bestAccessRight":{"code":"c_abf2","label":"OPEN","scheme":"http://vocabularies.coar-repositories.org/documentation/access_rights/"},"container":{"name":"Sustainability","issnPrinted":null,"issnOnline":"2071-1050","issnLinking":null,"ep":null,"iss":null,"sp":"8378","vol":"17","edition":null,"conferencePlace":null,"conferenceDate":null},"documentationUrls":null,"codeRepositoryUrl":null,"programmingLanguage":null,"contactPeople":null,"contactGroups":null,"tools":null,"size":null,"version":null,"geoLocations":null,"id":"doi_________::e1b1815bc61896ebc1b9bdefbcfcd605","originalIds":["su17188378","10.3390/su17188378","50|doiboost____|e1b1815bc61896ebc1b9bdefbcfcd605"],"pids":[{"scheme":"doi","value":"10.3390/su17188378"}],"dateOfCollection":null,"lastUpdateTimeStamp":null,"indicators":{"citationImpact":{"citationCount":1,"influence":2.5658373e-9,"popularity":3.6360213e-9,"impulse":1,"citationClass":"C5","influenceClass":"C5","impulseClass":"C5","popularityClass":"C5"}},"instances":[{"pids":[{"scheme":"doi","value":"10.3390/su17188378"}],"license":"CC BY","type":"Article","urls":["https://doi.org/10.3390/su17188378"],"publicationDate":"2025-09-18","refereed":"peerReviewed"}],"isGreen":false,"isInDiamondJournal":false}
local.import.sourceOpenAire
local.indexed.atWOS
local.indexed.atScopus

Dosyalar

Koleksiyonlar