TY - JOUR
T1 - Biokinetic soft-sensing using Thiothrix and Ca. Microthrix bacteria to calibrate secondary settling, aeration and N2O emission digital twins
AU - Bakos, Vince
AU - Qiu, Yuge
AU - Nierychlo, Marta
AU - Nielsen, Per Halkjær
AU - Plósz, Benedek Gy
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/5/1
Y1 - 2025/5/1
N2 - Climate resilience in water resource recovery facilities (WRRFs) necessitates improved adaptation to shock-loading conditions and mitigating greenhouse gas emission. Data-driven learning methods are widely utilised in soft-sensors for decision support and process optimization due to their simplicity and high predictive accuracy. However, unlike for mechanistic models, transferring machine-learning-based insights across systems is largely infeasible, which limits communication and knowledge sharing. To harness the benefits of both approaches, this study introduces a mechanistic online soft-sensor (MOSS) developed to calibrate digital twins of secondary settling tanks (hydraulic shock), aeration systems and nitrous oxide (N2O) greenhouse gas emission. MOSS integrates biokinetic models of filamentous microbial predictors to calibrate digital twins through meta-models (data-driven part), updated using offline settling column tests and amplicon sequencing data for microbial analysis. For the first time, this approach employs multi-filamentous-community predictors for dynamic calibration, i.e., Thiothrix and Ca. Microthrix. The calibration and early-warning capabilities of MOSS are demonstrated using experimental data from a laboratory-scale WRRF.
AB - Climate resilience in water resource recovery facilities (WRRFs) necessitates improved adaptation to shock-loading conditions and mitigating greenhouse gas emission. Data-driven learning methods are widely utilised in soft-sensors for decision support and process optimization due to their simplicity and high predictive accuracy. However, unlike for mechanistic models, transferring machine-learning-based insights across systems is largely infeasible, which limits communication and knowledge sharing. To harness the benefits of both approaches, this study introduces a mechanistic online soft-sensor (MOSS) developed to calibrate digital twins of secondary settling tanks (hydraulic shock), aeration systems and nitrous oxide (N2O) greenhouse gas emission. MOSS integrates biokinetic models of filamentous microbial predictors to calibrate digital twins through meta-models (data-driven part), updated using offline settling column tests and amplicon sequencing data for microbial analysis. For the first time, this approach employs multi-filamentous-community predictors for dynamic calibration, i.e., Thiothrix and Ca. Microthrix. The calibration and early-warning capabilities of MOSS are demonstrated using experimental data from a laboratory-scale WRRF.
KW - Activated sludge settling velocity
KW - Aeration alpha factor
KW - Biokinetic models as soft-sensors
KW - Dynamic calibration using meta modelling
KW - Nitrous oxide emission
KW - Thiothrix and Ca. Microthrix filamentous bacteria
UR - http://www.scopus.com/inward/record.url?scp=85216196214&partnerID=8YFLogxK
U2 - 10.1016/j.watres.2025.123164
DO - 10.1016/j.watres.2025.123164
M3 - Journal article
AN - SCOPUS:85216196214
SN - 0043-1354
VL - 275
JO - Water Research
JF - Water Research
M1 - 123164
ER -