Performance optimization modelling of a horizontal roughing filter for the treatment of mixed greywater
Date
2021-12-01
Authors
Mtsweni, Sphesihle
Journal Title
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Abstract
The growing demand of development of appropriate and relevant wastewater treatment technology
is drastically increasing in rural and urban communities in many parts of the world including South
Africa. This is largely exacerbated by the escalation of water demand and decreasing potable water
availability. As a result, advanced research related to the development and optimization of water
treatment technologies is becoming an urgent necessity including research focusing on wastewater
recycling and reclamation. Meanwhile, horizontal roughing filter (HRF) technology is one such
physical water pre-treatment system that can effectively and efficiently treat wastewater and thus
reduce the reliance on potable water use. Therefore, this study aimed at modelling HRF in order
to investigate the option of domestic greywater reuse for delivering desired water quality for nonpotable applications.
The overall aim of the study was modelling the HRF in order to improve its performance and
several objectives were investigated in this study. The first one was the characterization of
biological and physico-chemical strength of greywater originated from kitchen, bath and laundry
sources. The second objective investigated the HRF performance/efficiency after treating various
domestic greywater pollutants. The third objective investigated the controlling factors affecting
the performance and optimization of the HRF during its operation. This was investigated based on
design of experiments (DOE) and response surface methodology (RSM). Based on the artificial
neural network (ANN), the first objective investigated the filter duration in a HRF using ANN
modelling for high level of contaminants in domestic greywater. Secondly, the ANN models
applicable to a HRF were investigated and used for the prediction of greywater quality variables
from the output stream of the HRF based on experimental data obtained from the operation of the
HRF equipment.
The first step in water treatment processes requires quality analysis in order to understand the
constituent of water pollutants. Therefore, the experimental analysis of biological and physicochemical contents in greywater sources was conducted in this study. The next aspect involved
treatment of mixed domestic greywater using a three compartment HRF unit which was fixed at a
low filtration rate of 0.3 m/h. The effect of operating parameters on the HRF performance was
studied factorial design and optimization. The factorial design application in HRF defines performance based on derivation of right factor settings for the effective operation of HRF. The
aspect of ANN was undertaken to investigate the applicability, effectiveness and predictive ability
of ANN within a HRF equipment. The use of ANN in HRF can serve as a monitoring tool in terms
of performance and also as an indicator of any quality deviation that might be occurring during the
filter operation.
The key findings were obtained on qualitative analysis of domestic greywater originating from a
peri-urban community for the quantification of biological and physico-chemical contaminants.
The significant quality difference was recorded in greywater sources and the kitchen greywater
source recorded the highest load of pollutants compared to the laundry and bathing sources at
p<0.05 significant level. Furthermore, the quality difference was evident in greywater sources in
terms of daily households’ social conditions, activities and practices. Also, the analysis of
microbes in domestic greywater recorded high values of Escherichia coli (E. coli) and total
coliform contamination which poses health related risks in domestic greywater reuse. Therefore,
further treatment of domestic greywater prior to reuse remained necessary. The effectiveness of
HRF was evident in removing biological and physico-chemical pollution load in domestic
greywater at 0.3 m/h filtration rate. An average of 90% turbidity removal was obtained with 86%
removal of conductivity and 84% of total solids and more than 50-70% removal of chemical
oxygen demand (COD) within the HRF system. The E. coli and total coliforms were totally
removed in the three compartment HRF. Based on DOE analysis, the significant factors identified
were flowrate, gravel media, filter bed height and filter length and most significant contributing
factor identified was filtration rate. Furthermore, the optimization of the HRF resulted in a high
efficiency of 76% for the removal of turbidity.
Results on ANN modelling for the prediction of turbidity of the effluent stream from the HRF
showed good learning abilities of the ANN and the optimal ANN structure obtained was 4-7-1
structure using the trainlm algorithm. The mean square error (MSE) value below 10% was obtained
after training and the R correlation coefficient >0.9 was obtained in training, testing, validation
and all data sets. For the prediction of COD, the optimal ANN architecture was 3-10-1 which was
obtained with trainlm training algorithm. A satisfactory mean absolute percentage error (MAPE),
low mean absolute error (MAE) and high R correlation coefficients close to 1 for the training and
testing sets were also recoded for this ANN model for the prediction of COD. The other objective was the investigation of filter duration in HRF using ANN and a 4-8-2 optimal structure was
obtained with the trainlm algorithm which outperformed other training algorithms for the
prediction of filter duration along with turbidity. Also, a high R correlation coefficient and low
MSE value was obtained for this optimal ANN model for the predicted filter duration. For this
model, satisfactory R correlation values for training, testing, validation and all data were close to
1.
Results on feedforward multi-input multi-output (MIMO) ANN showed good accuracy in
predicting multioutput parameters of domestic greywater effluent from the HRF. The optimal
ANN architecture obtained through a trial-and-error approach for MIMO ANN was 7-15-4. During
training, different structures of ANN were investigated through varying training functions, neurons
and combination of physico-chemical parameters and learning functions. For the optimal ANN
model, the MSE of 0.001 was finally obtained based on the training data set. Furthermore, the R
correlation values above 0.9 for training, testing, validation and all data sets were obtained. The
optimal ANN model also showed good prediction and satisfactory accuracy when a new set of
sample data was presented to the network.
Therefore, based on the objectives and findings of this study, the pollution load in domestic
greywater characteristics can contain a number of pollutants and can significantly vary with
greywater sources. It is also important to note that the HRF significantly showed effectiveness in
treating physical pollutants and large amounts of chemical and biological pollutants. From the
findings and based on the HRF, it was also noted that the chemical pollutants can be significantly
removed using a combination of physical and chemical treatment processes in order to remove
more pollutants. This was observed by a high removal of physical pollutants such as turbidity,
conductivity and solids while domestic greywater biodegradability ratio was lower than 0.5.
Furthermore, for the DOE/RSM techniques, it was also observed that the effective filter
performance of the HRF is a function of multi-design parameters such as filtration rate, filter
length, gravel media and bed height and multi factor optimization was useful in this research work.
Finally, the ANN showed effective characteristics and accuracy in the HRF equipment for the
prediction of multi-output variables of the effluent greywater from the HRF following mixed
domestic greywater pre-treatment.
Description
Submitted in fulfillment of the requirements for the degree of Doctor of Engineering in Chemical Engineering,
Durban University of Technology, Durban, South Africa, 2021.
Keywords
Wastewater treatment technology, Horizontal roughing filter (HRF), Greywater
Citation
DOI
https://doi.org/10.51415/10321/3727