Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks

With increasing evidence of climate change affecting the quality of water resources, there is the need to assess the potential impacts of future climate change scenarios on water systems to ensure their long-term sustainability. The study assesses the uncertainty in the hydrological responses of the...

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Main Authors: Anna Sperotto, Josè Luis Molina, Silvia Torresan, Andrea Critto, Manuel Pulido-Velazquez, Antonio Marcomini
Format: Article
Language:English
Published: MDPI AG 2019-08-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/11/17/4764
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spelling doaj-bb789ed6015240d5b32f6cae8d87242b2020-11-25T01:31:18ZengMDPI AGSustainability2071-10502019-08-011117476410.3390/su11174764su11174764Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian NetworksAnna Sperotto0Josè Luis Molina1Silvia Torresan2Andrea Critto3Manuel Pulido-Velazquez4Antonio Marcomini5Fondazione Centro Euro-Mediterraneo sui Cambiamenti Climatici (Fondazione CMCC), c/o via Augusto Imperatore 16, 73100 Lecce, ItalyHigh Polytechnic School of Engineering, University of Salamanca, Av. de los Hornos Caleros, 50, 05003 Ávila, SpainFondazione Centro Euro-Mediterraneo sui Cambiamenti Climatici (Fondazione CMCC), c/o via Augusto Imperatore 16, 73100 Lecce, ItalyFondazione Centro Euro-Mediterraneo sui Cambiamenti Climatici (Fondazione CMCC), c/o via Augusto Imperatore 16, 73100 Lecce, ItalyResearch Institute of Water and Environmental Engineering (IIAMA), Universitat Politècnica de València, 46022 València, SpainFondazione Centro Euro-Mediterraneo sui Cambiamenti Climatici (Fondazione CMCC), c/o via Augusto Imperatore 16, 73100 Lecce, ItalyWith increasing evidence of climate change affecting the quality of water resources, there is the need to assess the potential impacts of future climate change scenarios on water systems to ensure their long-term sustainability. The study assesses the uncertainty in the hydrological responses of the Zero river basin (northern Italy) generated by the adoption of an ensemble of climate projections from 10 different combinations of a global climate model (GCM)&#8722;regional climate model (RCM) under two emission scenarios (representative concentration pathways (RCPs) 4.5 and 8.5). Bayesian networks (BNs) are used to analyze the projected changes in nutrient loadings (NO<sub>3</sub>, NH<sub>4</sub>, PO<sub>4</sub>) in mid- (2041&#8722;2070) and long-term (2071&#8722;2100) periods with respect to the baseline (1983&#8722;2012). BN outputs show good confidence that, across considered scenarios and periods, nutrient loadings will increase, especially during autumn and winter seasons. Most models agree in projecting a high probability of an increase in nutrient loadings with respect to current conditions. In summer and spring, instead, the large variability between different GCM&#8722;RCM results makes it impossible to identify a univocal direction of change. Results suggest that adaptive water resource planning should be based on multi-model ensemble approaches as they are particularly useful for narrowing the spectrum of plausible impacts and uncertainties on water resources.https://www.mdpi.com/2071-1050/11/17/4764water qualityclimate changeBayesian networksuncertaintymulti-models
collection DOAJ
language English
format Article
sources DOAJ
author Anna Sperotto
Josè Luis Molina
Silvia Torresan
Andrea Critto
Manuel Pulido-Velazquez
Antonio Marcomini
spellingShingle Anna Sperotto
Josè Luis Molina
Silvia Torresan
Andrea Critto
Manuel Pulido-Velazquez
Antonio Marcomini
Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
Sustainability
water quality
climate change
Bayesian networks
uncertainty
multi-models
author_facet Anna Sperotto
Josè Luis Molina
Silvia Torresan
Andrea Critto
Manuel Pulido-Velazquez
Antonio Marcomini
author_sort Anna Sperotto
title Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
title_short Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
title_full Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
title_fullStr Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
title_full_unstemmed Water Quality Sustainability Evaluation under Uncertainty: A Multi-Scenario Analysis Based on Bayesian Networks
title_sort water quality sustainability evaluation under uncertainty: a multi-scenario analysis based on bayesian networks
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2019-08-01
description With increasing evidence of climate change affecting the quality of water resources, there is the need to assess the potential impacts of future climate change scenarios on water systems to ensure their long-term sustainability. The study assesses the uncertainty in the hydrological responses of the Zero river basin (northern Italy) generated by the adoption of an ensemble of climate projections from 10 different combinations of a global climate model (GCM)&#8722;regional climate model (RCM) under two emission scenarios (representative concentration pathways (RCPs) 4.5 and 8.5). Bayesian networks (BNs) are used to analyze the projected changes in nutrient loadings (NO<sub>3</sub>, NH<sub>4</sub>, PO<sub>4</sub>) in mid- (2041&#8722;2070) and long-term (2071&#8722;2100) periods with respect to the baseline (1983&#8722;2012). BN outputs show good confidence that, across considered scenarios and periods, nutrient loadings will increase, especially during autumn and winter seasons. Most models agree in projecting a high probability of an increase in nutrient loadings with respect to current conditions. In summer and spring, instead, the large variability between different GCM&#8722;RCM results makes it impossible to identify a univocal direction of change. Results suggest that adaptive water resource planning should be based on multi-model ensemble approaches as they are particularly useful for narrowing the spectrum of plausible impacts and uncertainties on water resources.
topic water quality
climate change
Bayesian networks
uncertainty
multi-models
url https://www.mdpi.com/2071-1050/11/17/4764
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