Sludge volume index and suspended solids estimation of mature aerobic granular sludge by quantitative image analysis and chemometric tools

•Quantitative image analysis was used to evaluate mature aerobic granular sludge.•SVI and suspended solids were predicted using multilinear regression.•Quantitative image analysis proved to be useful for process monitoring. Aerobic granular sludge (AGS) is considered a promising technology for waste...

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Veröffentlicht in:Separation and purification technology 2020-03, Vol.234, p.116049, Article 116049
Hauptverfasser: Leal, Cristiano, Val del Río, Angeles, Mesquita, Daniela P., Amaral, António L., Castro, Paula M.L., Ferreira, Eugénio C.
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Sprache:eng
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Zusammenfassung:•Quantitative image analysis was used to evaluate mature aerobic granular sludge.•SVI and suspended solids were predicted using multilinear regression.•Quantitative image analysis proved to be useful for process monitoring. Aerobic granular sludge (AGS) is considered a promising technology for wastewater treatment. Furthermore, it is recognized that the stability of the process is related to the balanced growth of the suspended (floccular) and granular fractions. Therefore, the development of adequate techniques to monitor this balance is of interest. In this work the sludge volume index (SVI), volatile suspended solids (VSS) and total suspended solids (TSS) of mature AGS were successfully predicted with multilinear regression (MLR) models using data obtained from quantitative image analysis (QIA) of both fractions (suspended and granular). Relevant predictions were obtained for the SVI (R2 of 0.975), granules TSS (R2 of 0.985), flocs TSS (R2 of 0.971), granules VSS (R2 of 0.984) and flocs VSS (R2 of 0.986). The estimation of the granular fraction ratio from the predicted TSS and VSS was also successful (R2 of 0.985). The predictions help to avoid instability episodes of the AGS system, such as changes in biomass morphology, structure and settling properties.
ISSN:1383-5866
1873-3794
DOI:10.1016/j.seppur.2019.116049