Concurrent Pump Scheduling and Storage Level Optimization Using Meta-models and Evolutionary Algorithms

Procedia Engineering(2017)

Cited 32|Views0
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Abstract
In spite of the growing computational power offered by the commodity hardware, fast pump scheduling of complex water distribu- tion systems is still a challenge. In this paper, the Artificial Neural Network (ANN) meta-modeling technique has been employed with a Genetic Algorithm (GA) for simultaneously optimizing the pump operation and the tank levels at the ends of the cycle. The generalized GA+ANN algorithm has been tested on a real system in the UK. Comparing to the existing operation, the daily cost is reduced by about 10 − 15%, while the number of pump switches are kept below 4 switches-per-day. In addition, tank levels are optimized ensure a periodic behavior, which results in a predictable and stable performance over repeated cycles.
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Key words
Pump Scheduling,Meta-Modeling,Graphics Processing Unit,Artificial Neural Network,Genetic Algorithm
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