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Publikacje
Pomoc (F2)
[122850] Artykuł:

Parameters of Concrete Modified with Micronized Chalcedonite

Czasopismo: Materials   Tom: 16, Zeszyt: 9
ISSN:  1996-1944
Opublikowano: Maj 2023
 
  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
Anna Kotwa orcid logo WBiAKatedra Technologii i Organizacji Budownictwa *****Niespoza "N" jednostkiInżynieria lądowa, geodezja i transport5087.50.00  
Piotr Ramiączek orcid logo WBiAKatedra Inżynierii KomunikacyjnejTakzaliczony do "N"Inżynieria lądowa, geodezja i transport1017.50140.00  
Paulina Bąk-Patyna orcid logo WBiAKatedra Inżynierii KomunikacyjnejNiedoktorant szkoły doktorskiejInżynieria lądowa, geodezja i transport2035.00.00  
Robert Kowalik orcid logo WiŚGiEKatedra Inżynierii SanitarnejNiedoktorant szkoły doktorskiejInżynieria środowiska, górnictwo i energetyka20140.00.00  

Grupa MNiSW:  Publikacja w czasopismach wymienionych w wykazie ministra MNiSzW (część A)
Punkty MNiSW: 140


Pełny tekstPełny tekst    
Keywords:

additive  cement  absorbability  capillary rise  chalcedonite dust  compressive strength 



Abstract:

The processes that affect sediment quality in drainage systems show high dynamics and complexity. However, relatively little information is available on the influence of both catchment characteristics and meteorological conditions on sediment chemical properties, as those issues have not been widely explored in research studies. This paper reports the results of investigations into the content of selected heavy metals (Ni, Mn, Co, Zn, Cu, Pb, and Fe) and polycyclic aromatic hydrocarbons (PAHs) in sediments from the stormwater drainage systems of four catchments located in the city of Kielce, Poland. The influence of selected physico-geographical catchment characteristics and atmospheric conditions on pollutant concentrations in the sediments was also analyzed. Based on the results obtained, statistical models for forecasting the quality of stormwater sediments were developed using artificial neural networks (multilayer perceptron neural networks). The analyses showed varied impacts of catchment characteristics and atmospheric conditions on the chemical composition of sediments. The concentration of heavy metals in sediments was far more affected by catchment characteristics (land use, length of the drainage system) than atmospheric conditions. Conversely, the content of PAHs in sediments was predominantly affected by atmospheric conditions prevailing in the catchment. The multilayer perceptron models developed for this study had satisfactory predictive abilities; the mean absolute error of the forecast (Ni, Mn, Zn, Cu, and Pb) did not exceed 21%. Hence, the models show great potential, as they could be applied to, for example, spatial planning for which environmental aspects (i.e., sediment quality in the stormwater drainage systems) are accounted.