A novel evolutionary meta-heuristic for the multi-objective optimization of real-world water distribution networks

A novel evolutionary meta-heuristic for the multi-objective optimization of real-world water distribution networks

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Article ID: iaor2007838
Country: United Kingdom
Volume: 38
Issue: 3
Start Page Number: 319
End Page Number: 336
Publication Date: Apr 2006
Journal: Engineering Optimization
Authors: ,
Keywords: engineering, optimization, networks, heuristics
Abstract:

Genetic algorithms are currently one of the state-of-the-art meta-heuristic techniques for the optimization of large engineering systems such as the design and rehabilitation of water distribution networks. They are capable of finding near-optimal cost solutions to these problems given certain cost and hydraulic parameters. Recently, multi-objective genetic algorithms have become prevalent in the water industry due to the conflicting nature of these hydraulic and cost objectives. The Pareto-front of solutions can aid decision makers in the water industry as it provides a set of design solutions which can be examined by experienced engineers. However, multi-objective genetic algorithms tend to require a large number of objective function evaluations to arrive at an acceptable Pareto-front. This article investigates a novel hybrid cellular automaton and genetic approach to multi-objective optimization (known as CAMOGA). The proposed method is applied to two large, real-world networks taken from the UK water industry. The results show that the proposed cellular automaton approach can provide a good approximation of the Pareto-front with very few network simulations, and that CAMOGA outperforms the standard multi-objective genetic algorithm in terms of efficiency in discovering similar Pareto-fronts.

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