Technical Papers
Jun 12, 2018

Detecting the End of Nitrification in Small and Decentralized Wastewater Treatment Systems Using Low-Resource Real-Time Control Methods

Publication: Journal of Environmental Engineering
Volume 144, Issue 8

Abstract

There is increasing demand on operators of small-scale wastewater treatment plants (WWTPs) to improve biological nutrient removal and energy efficiency while being subject to unique challenges, including reduced resources. Automated monitoring and control strategies of WWTPs can provide the necessary tools to improve plant performance and energy efficiency. However, online sensors for key parameters such as ammonium can require excessive maintenance, are unreliable unless frequently maintained, and often are not affordable. In addition, control techniques such as machine learning may not be financially or technically compatible within the constraints of small-scale WWTPs. This study analyzes the use of low-cost, reliable surrogate sensors in association with inexpensive and robust programmable logistic controllers to improve WWTP performance and energy efficiency through automation. The paper presents three novel methodologies for control of batch WWTPs using pH and oxidation reduction potential (ORP) trends. Applying and optimizing these methodologies enabled an average reduction in cycle time and energy consumption of 60 and 43%, respectively, when compared to the fixed-time treatment cycle and an average effluent ammonium concentration of 1.9  mg/L. The automated system proposed has significant potential to enhance the performance of small-scale WWTPs in terms of environmental compliance and energy consumption.

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Acknowledgments

The authors wish to acknowledge the support received from the Irish Research Council, Molloy Environmental Systems (EPSPG/2011/53) and Enterprise Ireland (IP/2010/0084).

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Go to Journal of Environmental Engineering
Journal of Environmental Engineering
Volume 144Issue 8August 2018

History

Received: Jun 29, 2017
Accepted: Feb 13, 2018
Published online: Jun 12, 2018
Published in print: Aug 1, 2018
Discussion open until: Nov 12, 2018

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Authors

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Ph.D. Candidate, Civil Engineering, College of Engineering and Informatics, National Univ. of Ireland–Galway, Alice Perry Engineering Bldg., University Rd., Galway H91 HX31, Ireland; Molloy Environmental Systems, Coleraine, Clara Rd., Tullamore, Co. Offaly R35 D956, Ireland (corresponding author). Email: [email protected]
E. Clifford [email protected]
Senior Lecturer, Civil Engineering, College of Engineering and Informatics, Ryan Institute, National Univ. of Ireland–Galway, Room 1035, Alice Perry Engineering Bldg., University Rd., Galway H91 HX31, Ireland. Email: [email protected]

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