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Performance improvement of wastewater treatment processes by application of machine learning.
Icke, O; van Es, D M; de Koning, M F; Wuister, J J G; Ng, J; Phua, K M; Koh, Y K K; Chan, W J; Tao, G.
Afiliação
  • Icke O; Aquasuite, Royal HaskoningDHV, Laan 1914 35, 3818 EX Amersfoort, The Netherlands E-mail: otto.icke@rhdhv.com.
  • van Es DM; Aquasuite, Royal HaskoningDHV, Laan 1914 35, 3818 EX Amersfoort, The Netherlands E-mail: otto.icke@rhdhv.com.
  • de Koning MF; Aquasuite, Royal HaskoningDHV, Laan 1914 35, 3818 EX Amersfoort, The Netherlands E-mail: otto.icke@rhdhv.com.
  • Wuister JJG; Aquasuite, Royal HaskoningDHV, Laan 1914 35, 3818 EX Amersfoort, The Netherlands E-mail: otto.icke@rhdhv.com.
  • Ng J; PUB, Singapore's National Water Agency, 40 Scotts Rd, Singapore 228231, Singapore.
  • Phua KM; PUB, Singapore's National Water Agency, 40 Scotts Rd, Singapore 228231, Singapore.
  • Koh YKK; PUB, Singapore's National Water Agency, 40 Scotts Rd, Singapore 228231, Singapore.
  • Chan WJ; PUB, Singapore's National Water Agency, 40 Scotts Rd, Singapore 228231, Singapore.
  • Tao G; PUB, Singapore's National Water Agency, 40 Scotts Rd, Singapore 228231, Singapore.
Water Sci Technol ; 82(12): 2671-2680, 2020 Dec.
Article em En | MEDLINE | ID: mdl-33341761
Improving wastewater treatment processes is becoming increasingly important, due to more stringent effluent quality requirements, the need to reduce energy consumption and chemical dosing. This can be achieved by applying artificial intelligence. Machine learning is implemented in two domains: (1) predictive control and (2) advanced analytics. This is currently being piloted at the integrated validation plant of PUB, Singapore's National Water Agency. (1) Primarily, predictive control is applied for optimised nutrient removal. This is obtained by application of a self-learning feedforward algorithm, which uses load prediction and machine learning, fine-tuned with feedback on ammonium effluent. Operational results with predictive control show that the load prediction has an accuracy of ≈88%. It is also shown that an up to ≈15% reduction of aeration amount is achieved compared to conventional control. It is proven that this load prediction-based control leads to stable operation and meeting effluent quality requirements as an autopilot system. (2) Additionally, advanced analytics are being developed for operational support. This is obtained by application of quantile regression neural network modelling for anomaly detection. Preliminary results illustrate the ability to autodetect process and instrument anomalies. These can be used as early warnings to deliver data-driven operational support to process operators.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Inteligência Artificial / Purificação da Água Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Inteligência Artificial / Purificação da Água Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article