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Journal Article

District metered area design through multicriteria and multiobjective optimization

Brentan B., Carpitella Silvia, Izquierdo J., Luvizotto E., Meirelles G.

: Mathematical Methods in the Applied Sciences vol.45, 6 (2022), p. 3254-3271

: decision making, district metered areas, fuzzy AHP, graph theory, k-means algorithm, metaheuristic, multiobjective optimization, TOPSIS, water distribution systems

: 10.1002/mma.7090

: http://library.utia.cas.cz/separaty/2021/MTR/carpitella-0545777.pdf

: https://onlinelibrary.wiley.com/doi/10.1002/mma.7090

(eng): The design of district metered areas (DMA) in potable water supply systems is of paramount importance for water utilities to properly manage their systems. Concomitant to their main objective, namely, to deliver quality water to consumers, the benefits include leakage reduction and prompt reaction in cases of natural or malicious contamination events. Given the structure of a water distribution network (WDN), graph theory is the basis for DMA design, and clustering algorithms can be applied to perform the partitioning. However, such sectorization entails a number of network modifications (installing cut-off valves and metering and control devices) involving costs and operation changes, which have to be carefully studied and optimized. Given the complexity of WDNs, optimization is usually performed using metaheuristic algorithms. In turn, optimization may be single or multiple-objective. In this last case, a large number of solutions, frequently integrating the Pareto front, may be produced. The decision maker has eventually to choose one among them, what may be tough task. Multicriteria decision methods may be applied to support this last step of the decision-making process. In this paper, DMA design is addressed by (i) proposing a modified k-means algorithm for partitioning, (ii) using a multiobjective particle swarm optimization to suitably place partitioning devices, (iii) using fuzzy analytic hierarchy process (FAHP) to weight the four objective functions considered, and (iv) using technique for order of preference by similarity to ideal solution (TOPSIS) to rank the Pareto solutions to support the decision. This joint approach is applied in a case of a well-known WDN of the literature, and the results are discussed.

: JS

: 20306