Comas et al., 2008 - Google Patents
Risk assessment modelling of microbiology-related solids separation problems in activated sludge systemsComas et al., 2008
View PDF- Document ID
- 3878126927860021040
- Author
- Comas J
- Rodríguez-Roda I
- Gernaey K
- Rosen C
- Jeppsson U
- Poch M
- Publication year
- Publication venue
- Environmental Modelling & Software
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Snippet
This paper proposes a risk assessment model for settling problems of microbiological origin in activated sludge systems (filamentous bulking, foaming and rising sludge). The aim of the model is not to diagnose microbiology-related solids separation problems with absolute …
- 239000010802 sludge 0 title abstract description 99
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