Programme OS1k IWRM and water
allocation abstract 721
The Use of Multi-objective Optimization for Reservoir’s System
Operation with an Evolutionary Algorithm: The case of the Metropolitan Region of Fortaleza, Brazil
Author(s): Francisco Venícius Fernandes Barros, Luiz Sérgio Vasconcelos do Nascimento, Eduardo Sávio Passos Rodrigues
Martins, Dirceu Silveira Reis Junior
Researcher of Fundação Cearense de
Meteorologia e Recursos Hídricos-FUNCEME (luizsergiovn@gmail.com), Researcher of FUNCEME
(venicius@gmail.com), President of FUNCEME (esm9@secrel.com.br, Researcher of FUNCEME
(dirceu.reis@gmail.com, phone: +55 85 3101-10
Keyword(s): reservoir operation, multi-objective optimization, evolutionary algorithms
Article:
Poster:
Session: OS1k IWRM and water
allocation
Abstract The Metropolitan Region of Fortaleza, with its 2.5
million inhabitants, is located in the state of Ceara, a semi-arid region of Brazil, and obtains water for domestic and
industrial purposes through the use of a complex system of reservoirs, which are linked by canals and water pump
stations, bringing water from different basins within the state. The system consists of 5 reservoirs, 5 pumping stations,
and a long canal (102 km) that diverts water from the Jaguaribe River basin, a large and agricultural basin in which
the largest reservoirs of the State, with inter-annual storage capacity, are located. The system is operated to meet
domestic and industrial demands of the Metropolitan Region of Fortaleza. Current operating policy employed by the
water management agency of the state, responsible for the system operation, is based on a relatively simple set of
rules bused upon current water storage in each reservoir. This paper focuses on the optimization of the reservoir’s
system operation, based upon a multi-objective approach, to derive new operating policies for the system. The
multi-objective optimization procedure employs goals that are often considered in the water management process,
namely, minimizing both the pumping cost and the amount of water losses through evaporation. The latter is justified
by the extremely large potential evaporation rate observed in the region and the relatively different area-volume
curves of these reservoirs. The paper develops and employs a new multi-objective version, based on the Pareto
dominance concept, of the single-objective evolutionary algorithm Honey-Bee Mating Optimization (HBMO) and
the Multi-objective Particle Swarm Optimization (MOPSO). Results based on a 25 year-validation period show that
the use of a new operation policy derived in this study, based on a possible solution of the Pareto front, provides an
economy of up to 8% in pumping costs (minimum cost) and a reduction of water losses through evaporation of 16%
at most (minimum evaporation loss). Moreover, the methodology provides an approximation of the Pareto front of
both objectives, which permits water managers to think more deeply about the value of water that is evaporated and
the costs of trying to avoid these losses.