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[58350] Artykuł:

Assessment of the Effect of Wastewater Quantity and Quality, and Sludge Parameters on Predictive Abilities of Non-Linear Models for Activated Sludge Settleability Predictions

Czasopismo: Polish Journal of Environmental Studies   Tom: Vol. 26, Zeszyt: No. 1, Strony: 315-322
ISSN:  1230-1485
Opublikowano: 2017
 
  Autorzy / Redaktorzy / Twórcy
Imię i nazwisko Wydział Katedra Do oświadczenia
nr 3
Grupa
przynależności
Dyscyplina
naukowa
Procent
udziału
Liczba
punktów
do oceny pracownika
Liczba
punktów wg
kryteriów ewaluacji
Bartosz Szeląg orcid logo WiŚGiEKatedra Geotechniki, Geomatyki i Gospodarki Odpadami*Niezaliczony do "N"Inżynieria środowiska, górnictwo i energetyka507.50.00  
Jarosław Gawdzik orcid logo WiŚGiEKatedra Technologii Wody i ŚciekówNiezaliczony do "N"Inżynieria środowiska, górnictwo i energetyka507.50.00  

Grupa MNiSW:  Publikacja w czasopismach wymienionych w wykazie ministra MNiSzW (część A)
Punkty MNiSW: 15


Pełny tekstPełny tekst     DOI LogoDOI    
Słowa kluczowe:

opadalność osadu czynnego  SVM  k-NN  MARS 


Keywords:

activated sludge settleability  SVM  k-NN  MARS methods 



Abstract:

This paper discusses the possibility of applying the three “black-box” methods to sludge settleability predictions. Additionally, the impact of the load of biogenic compounds and parameters of activated sludge on predictive abilities of the devised mathematical models is analysed in the paper. To conduct analyses we relied on the results of measurements of wastewater quantity and quality, and of the bioreactor operational parameters, taken on continuous basis at the Sitkówka-Nowiny treatment plant in 2012-16. The analyses conducted for the study indicate that the lowest values of errors in activated sludge settleability predictions for the wastewater treatment plant of concern were obtained for input data on the load of biogenic compounds at the inflow, microorganism culture environment, and activated sludge concentration.



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