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Articles

Run-time optimisation of sewer remote control systems using genetic algorithms and multi-criteria decision analysis: CSO and energy consumption reduction

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Pages 62-79 | Received 30 Jan 2019, Accepted 17 May 2020, Published online: 29 May 2020
 

ABSTRACT

A new approach for sewer regulation with remote-control systems in case of intense meteorological events is presented. A run-time multi-objective decision method was developed and applied to a case study with the aim of minimising water overflow and electric energy consumption of the upstream water collection system of a wastewater treatment plant. Strategy optimisation makes use of genetic algorithms and short-time predictions of water flows into the sewer system. The ability to efficiently optimise the system controllable parameters even for lags as short as 30 guarantees flexibility, prompt adaptation to changing conditions and reliability. With respect to a conventional approach, energy savings up to 32% can be reached using the proposed run-time optimisation at the price of increasing the total combined sewer overflow of approx. 10%. With respect to the basic system layout, installing an additional buffer tank for most intense rain events can guarantee a 7% reduction of the water outflow and a 36% reduction of the energy consumption. The sensitivity analysis, performed on different layouts, shows no evidence for preferring time horizons for water discharge predictions longer than 90 min.

Acknowledgements

This work was realised within the projects OPTISEW ‘Optimization method for sewer remote-control systems through Genetic Algorithms’ and IRMA ‘Innovative Risk-Management Approach’.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Notes

1 Data refer to an undisclosed location and were provided for research purposes only.

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