TY - JOUR
T1 - A Probabilistic Multiperiod Simulation–Optimization Approach for Dynamic Coastal Aquifer Management
AU - Al-Maktoumi, Ali
AU - Rajabi, Mohammad Mahdi
AU - Zekri, Slim
AU - Triki, Chefi
N1 - Funding Information:
The authors would like to acknowledge the financial support of Sultan Qaboos University through the grant EG/DVC/WRC/14/2 and to DR/RG/17. Authors also appreciate the support of the Public Authority of Water, and the Ministry of Regional Municipalities and Water Resources in Oman for providing data and information for the study. The authors wish to thank Editor-in-Chief, Professor George Tsakiris, Associate Editor and two anonymous reviewers for their valuable comments which helped to improve the final manuscript.
Funding Information:
The authors would like to acknowledge the financial support of Sultan Qaboos University through the grant EG/DVC/WRC/14/2 and to DR/RG/17. Authors also appreciate the support of the Public Authority of Water, and the Ministry of Regional Municipalities and Water Resources in Oman for providing data and information for the study. The authors wish to thank Editor-in-Chief, Professor George Tsakiris, Associate Editor and two anonymous reviewers for their valuable comments which helped to improve the final manuscript.
Publisher Copyright:
© 2021, The Author(s), under exclusive licence to Springer Nature B.V.
PY - 2021/9
Y1 - 2021/9
N2 - Combined simulation–optimization (CSO) schemes are common in the literature to solve different groundwater management problems, and CSO is particularly well-established in the coastal aquifer management literature. However, with a few exceptions, nearly all previous studies have employed the CSO approach to derive static groundwater management plans that remain unchanged during the entire management period, consequently overlooking the possible positive impacts of dynamic strategies. Dynamic strategies involve division of the planning time interval into several subintervals or periods, and adoption of revised decisions during each period based on the most recent knowledge of the groundwater system and its associated uncertainties. Problem structuring and computational challenges seem to be the main factors preventing the widespread implementation of dynamic strategies in groundwater applications. The objective of this study is to address these challenges by introducing a novel probabilistic Multiperiod CSO approach for dynamic groundwater management. This includes reformulation of the groundwater management problem so that it can be adapted to the multiperiod CSO approach, and subsequent employment of polynomial chaos expansion-based stochastic dynamic programming to obtain optimal dynamic strategies. The proposed approach is employed to provide sustainable solutions for a coastal aquifer storage and recovery facility in Oman, considering the effect of natural recharge uncertainty. It is revealed that the proposed dynamic approach results in an improved performance by taking advantage of system variations, allowing for increased groundwater abstraction, injection and hence monetary benefit compared to the commonly used static optimization approach.
AB - Combined simulation–optimization (CSO) schemes are common in the literature to solve different groundwater management problems, and CSO is particularly well-established in the coastal aquifer management literature. However, with a few exceptions, nearly all previous studies have employed the CSO approach to derive static groundwater management plans that remain unchanged during the entire management period, consequently overlooking the possible positive impacts of dynamic strategies. Dynamic strategies involve division of the planning time interval into several subintervals or periods, and adoption of revised decisions during each period based on the most recent knowledge of the groundwater system and its associated uncertainties. Problem structuring and computational challenges seem to be the main factors preventing the widespread implementation of dynamic strategies in groundwater applications. The objective of this study is to address these challenges by introducing a novel probabilistic Multiperiod CSO approach for dynamic groundwater management. This includes reformulation of the groundwater management problem so that it can be adapted to the multiperiod CSO approach, and subsequent employment of polynomial chaos expansion-based stochastic dynamic programming to obtain optimal dynamic strategies. The proposed approach is employed to provide sustainable solutions for a coastal aquifer storage and recovery facility in Oman, considering the effect of natural recharge uncertainty. It is revealed that the proposed dynamic approach results in an improved performance by taking advantage of system variations, allowing for increased groundwater abstraction, injection and hence monetary benefit compared to the commonly used static optimization approach.
KW - Coastal aquifer
KW - Combined simulation–optimization
KW - Multiperiod management
KW - Polynomial chaos expansion
KW - Stochastic dynamic programming
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U2 - 10.1007/s11269-021-02828-0
DO - 10.1007/s11269-021-02828-0
M3 - Article
AN - SCOPUS:85111533655
SN - 0920-4741
VL - 35
SP - 3447
EP - 3462
JO - Water Resources Management
JF - Water Resources Management
IS - 11
ER -