Modeling Multi-objective Pareto-optimal Reservoir Operation Policies Using State-of-the-art Modeling Techniques

被引:0
作者
Aadhityaa Mohanavelu
Bankaru-Swamy Soundharajan
Ozgur Kisi
机构
[1] Amrita School of Engineering,Department of Civil Engineering
[2] Amrita Vishwa Vidyapeetham,Civil Engineering Department
[3] Ilia State University,undefined
来源
Water Resources Management | 2022年 / 36卷
关键词
Reservoir operations; Multi-objective optimization; Pareto-optimal solutions; Reservoir performance;
D O I
暂无
中图分类号
学科分类号
摘要
A novel challenge faced by water scientists and water managers today is the efficient management of the available water resources for meeting crucial demands such as drinking water supply, irrigation and hydro-power generation. Optimal operation of reservoirs is of paramount importance for better management of scarce water resources under competing multiple demands such as irrigation, water supply etc., with decreasing reliability of these systems under climate change. This study compares six different state-of-the-art modeling techniques namely; Deterministic Dynamic Programming (DDP), Stochastic Dynamic Programming (SDP), Implicit Stochastic Optimization (ISO), Fitted Q-Iteration (FQI), Sampling Stochastic Dynamic Programming (SSDP), and Model Predictive Control (MPC), in developing pareto-optimal reservoir operation solutions considering two competing operational objectives of irrigation and flood control for the Pong reservoir located in Beas River, India. Set of pareto-optimal (approximate) solutions were derived using the above-mentioned six methods based on different convex combinations of the two objectives and finally the performances of the resulting sets of pareto-optimal solutions were compared. Additionally, key reservoir performance indices including resilience, reliability, vulnerability and sustainability were estimated to study the performance of the current operation of the reservoir. Modeling results indicate that the optimal-operational solution developed by DDP attains the best performance followed by the MPC and FQI. The performance of the Pong reservoir operation assessed by comparing different performance indices suggests that there is high vulnerability (~ 0.65) and low resilience (~ 0.10) in current operations and the development of pareto-optimal operation solutions using multiple state-of-the-art modeling techniques might be crucial for making better reservoir operation decisions.
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页码:3107 / 3128
页数:21
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共 222 条
  • [1] Adeloye AJ(2019)Height–area–storage functional models for evaporation-loss inclusion in reservoir-planning analysis Water 11 1413-27
  • [2] Wuni IY(2011)Reservoir operation using multi-objective evolutionary algorithms-a review Asian J Sci Res 4 16-925
  • [3] Dau QV(2018)Assessing environmental flows of coordinated operation of dams and weirs in the Geum River basin under climate change scenarios Sci Total Environ 643 912-334
  • [4] Soundharajan B-S(2019)Optimization of water-supply and hydropower reservoir operation using the charged system search algorithm Hydrology 6 5-510
  • [5] Kasiviswanathan KS(2005)Dynamic programming and suboptimal control: A survey from ADP to MPC Eur J Control 11 310-234
  • [6] Adeyemo JA(2014)Planning the optimal operation of a multioutlet water reservoir with water quality and quantity targets J Water Resour Plan Manag 140 496-191
  • [7] Ahn JM(2009)Implicit stochastic optimization for deriving reservoir operating rules in semiarid Brazil Pesqui Operacional 29 223-416
  • [8] Kwon HG(2019)Efficient implementation of sampling stochastic dynamic programming algorithm for multireservoir management in the hydropower sector J Water Resour Plan Manag 145 05019005-86
  • [9] Yang DS(2014)Computational complexity measures for many-objective optimization problems Procedia Comput Sci 36 185-38
  • [10] Kim YS(2020)On the representation of water reservoir storage and operations in large-scale hydrological models: implications on model parameterization and climate change impact assessments Hydrol Earth Syst Sci 24 397-67