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Chloramine demand estimation using surrogate chemical and microbiological parameters

Chloramine demand estimation using surrogate chemical and microbiological parameters
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摘要 A model is developed to enable estimation of chloramine demand in full scale drinking water supplies based on chemical and microbiological factors that affect chloramine decay rate via nonlinear regression analysis method.The model is based on organic character(specific ultraviolet absorbance(SUVA)) of the water samples and a laboratory measure of the microbiological(Fm) decay of chloramine.The applicability of the model for estimation of chloramine residual(and hence chloramine demand) was tested on several waters from different water treatment plants in Australia through statistical test analysis between the experimental and predicted data.Results showed that the model was able to simulate and estimate chloramine demand at various times in real drinking water systems.To elucidate the loss of chloramine over the wide variation of water quality used in this study,the model incorporates both the fast and slow chloramine decay pathways.The significance of estimated fast and slow decay rate constants as the kinetic parameters of the model for three water sources in Australia was discussed.It was found that with the same water source,the kinetic parameters remain the same.This modelling approach has the potential to be used by water treatment operators as a decision support tool in order to manage chloramine disinfection. A model is developed to enable estimation of chloramine demand in full scale drinking water supplies based on chemical and microbiological factors that affect chloramine decay rate via nonlinear regression analysis method.The model is based on organic character(specific ultraviolet absorbance(SUVA)) of the water samples and a laboratory measure of the microbiological(Fm) decay of chloramine.The applicability of the model for estimation of chloramine residual(and hence chloramine demand) was tested on several waters from different water treatment plants in Australia through statistical test analysis between the experimental and predicted data.Results showed that the model was able to simulate and estimate chloramine demand at various times in real drinking water systems.To elucidate the loss of chloramine over the wide variation of water quality used in this study,the model incorporates both the fast and slow chloramine decay pathways.The significance of estimated fast and slow decay rate constants as the kinetic parameters of the model for three water sources in Australia was discussed.It was found that with the same water source,the kinetic parameters remain the same.This modelling approach has the potential to be used by water treatment operators as a decision support tool in order to manage chloramine disinfection.
出处 《Journal of Environmental Sciences》 SCIE EI CAS CSCD 2017年第7期1-7,共7页 环境科学学报(英文版)
基金 supported under Australian Research Council's Linkage Projects funding scheme(LP110100459) the provision of in-kind and financial support from the Australian Water Quality Centre(SA Water),Water Corporation(Western Australia)
关键词 Chloramine demand Drinking water treatment plants Modelling Chloramine demand Drinking water treatment plants Modelling
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