Advancing Hydrological Prediction With Hybrid Quantum Neural Networks: A Comparative Study for Mile Mughan Dam

dc.contributor.author Abdi, Erfan
dc.contributor.author Sattari, Mohammad Taghi
dc.contributor.author Samadianfard, Saeed
dc.contributor.author Ahmad, Sajjad
dc.date.accessioned 2026-01-25T16:31:41Z
dc.date.available 2026-01-25T16:31:41Z
dc.date.issued 2025
dc.description Samadianfard, Saeed/0000-0002-6876-7182; Sattari, Mohammad Taghi/0000-0002-5139-2118; Abdi, Erfan/0009-0002-4265-3803 en_US
dc.description.abstract Predicting dam inflow is critical for human life safety, water resource management, and hydroelectric power generation. While machine learning (ML) models address complex, nonlinear hydrological problems, quantum machine learning (QML) offers greater potential to overcome classical computational limits. This study compares a hybrid quantum neural network (HQNN) with the following two classical models: bidirectional CNN-LSTM and support vector regression (SVR). These models were evaluated to predict monthly inflow to the Mile Mughan Dam, a transboundary hydroelectric and irrigation dam located on the Aras River between Azerbaijan and Iran, using a 14-year dataset (2010-2023) under two scenarios. In total, 70% of data was used for training and 30% for testing. The first scenario encompassed meteorological variables plus three months of inflow lags, and the second included inflow lags only. Model performance was assessed using Coefficient of Determination (R2), Root Mean Squared Error (RMSE), Nash-Sutcliffe efficiency (NSE), Mean Absolute Percentage Error (MAPE), and graphical plots. HQNN showed superior performance across all metrics. In Scenario 1, HQNN achieved R2 = 0.915, RMSE = 37.318 MCM, NSE = 0.908, MAPE = 8.343%; CNN-BiLSTM had R2 = 0.867, RMSE = 46.506 MCM, NSE = 0.858, MAPE = 10.795%; SVR had R2 = 0.846, RMSE = 52.372 MCM, NSE = 0.821, MAPE = 12.772%. In Scenario 2, HQNN maintained strong performance (R2 = 0.855, RMSE = 48.56 MCM, NSE = 0.845, MAPE = 9.979%) and outperformed CNN-BiLSTM (R2 = 0.810, RMSE = 56.126 MCM, NSE = 0.793, MAPE = 11.456%) and SVR (R2 = 0.801, RMSE = 60.336 MCM, NSE = 0.761, MAPE = 12.901%). In Scenario 1 and Scenario 2, HQNN increased the prediction accuracy by 19.76% and 13.47%, respectively, compared to the CNN-BiLSTM model. These results confirm HQNN's reliability in both multivariate and univariate modeling. en_US
dc.identifier.doi 10.3390/w17243592
dc.identifier.issn 2073-4441
dc.identifier.scopus 2-s2.0-105025804960
dc.identifier.uri https://doi.org/10.3390/w17243592
dc.identifier.uri https://hdl.handle.net/11147/18870
dc.language.iso en en_US
dc.publisher MDPI en_US
dc.relation.ispartof Water en_US
dc.rights info:eu-repo/semantics/openAccess en_US
dc.subject Quantum Machine Learning en_US
dc.subject Hybrid Quantum Neural Network en_US
dc.subject Hydrological Prediction en_US
dc.subject Dam Inflow Prediction en_US
dc.subject Ensemble Predicting en_US
dc.subject Convolutional Neural Network-Bidirectional LSTM en_US
dc.title Advancing Hydrological Prediction With Hybrid Quantum Neural Networks: A Comparative Study for Mile Mughan Dam en_US
dc.type Article en_US
dspace.entity.type Publication
gdc.author.id Samadianfard, Saeed/0000-0002-6876-7182
gdc.author.id Sattari, Mohammad Taghi/0000-0002-5139-2118
gdc.author.id Abdi, Erfan/0009-0002-4265-3803
gdc.author.scopusid 59162384100
gdc.author.scopusid 25655379600
gdc.author.scopusid 55308113100
gdc.author.scopusid 9640056400
gdc.author.wosid Samadianfard, Saeed/Abf-1097-2021
gdc.author.wosid Sattari, Mohammad Taghi/Aai-3212-2020
gdc.author.wosid Ahmad, Sajjad/G-2629-2015
gdc.collaboration.industrial false
gdc.description.department İzmir Institute of Technology en_US
gdc.description.departmenttemp [Abdi, Erfan; Sattari, Mohammad Taghi; Samadianfard, Saeed] Univ Tabriz, Fac Agr, Dept Water Engn, Tabriz 5166616471, Iran; [Abdi, Erfan; Sattari, Mohammad Taghi; Samadianfard, Saeed] Khazar Univ, Water Sci & Hydroinformat Res Ctr, Mahsati Str 41, AZ-1096 Baku, Azerbaijan; [Sattari, Mohammad Taghi] Ankara Univ, Dept Agr Engn, TR-06100 Ankara, Turkiye; [Samadianfard, Saeed] Izmir Inst Technol, Dept Environm Engn, TR-35433 Izmir, Turkiye; [Ahmad, Sajjad] Univ Nevada Las Vegas, Dept Civil & Environm Engn & Construct, Las Vegas, NV 89154 USA en_US
gdc.description.issue 24 en_US
gdc.description.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı en_US
gdc.description.scopusquality Q2
gdc.description.volume 17 en_US
gdc.description.woscitationindex Science Citation Index Expanded
gdc.description.wosquality Q2
gdc.identifier.openalex W4417461853
gdc.identifier.wos WOS:001646200000001
gdc.index.type WoS
gdc.index.type Scopus
gdc.openalex.collaboration International
gdc.opencitations.count 0
gdc.plumx.scopuscites 0
gdc.wos.citedcount 0
relation.isOrgUnitOfPublication.latestForDiscovery 9af2b05f-28ac-4003-8abe-a4dfe192da5e

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