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Title Agent-based modeling for demand management of reservoirs considering social and hydrological interactions under uncertainty
Type JournalPaper
Keywords Management scenario; Monte Carlo simulation; Socio-hydrology; Supply and demand
Abstract Water demand management is a topical research activity; this study uses agent-based modeling to simulate the impact of water demand management on a reservoir, integrating social and hydrological environments. The social environment incorporates questionnaires to determine participation rates in four demand reduction scenarios, which comprise (i) drought awareness, (ii) price increases, (iii) education/advertising, and (iv) provision of water-saving facilities. The hydrological environment utilizes the balance equation to calculate the water volume in a reservoir. Agents include the reservoir manager and urban, agricultural, and industrial demands. Monte Carlo simulation also conducted an uncertainty analysis to capture the uncertainty in social and hydrological environments. Maragheh, a city in northwestern Iran with a 60 MCM reservoir, was selected as a case study. The results demonstrate that despite population growth, all scenarios maintain higher reservoir volumes than a baseline scenario without demand management. These scenarios meet water demand and produce a 0.4 to 0.7 MCM annual surplus. Providing water-saving facilities maximizes annual reservoir volume and surplus flow and prevents reservoir depletion even under worst-case uncertainty. Annual volume increases from 16 MCM without demand management to 36 MCM under the most effective scenario.
Researchers Sina Sadeghfam (Fourth Researcher), Mohammadtaghi Aalami (Third Researcher), Yousef Hassanzadeh (Second Researcher), Ali Ehsanitabar (First Researcher)