| dc.description.abstract |
Namekara Mining Company Limited in Manafwa district is among the leading producer of
vermiculite in the world and it’s also the leading producer in Uganda and East Africa. However,
when vermiculite is being processed especially during the winnowing process, vermiculite is lost
in the waste due to suboptimal operational parameters of the winnowers which results into
inefficient separation of vermiculite from waste of magnetite and grit thus resulting into increased
operational costs, inefficient resource utilization, Challenges in achieving sustainability goals and
waste stockpile growth.
My research aims to address this by utilizing statistical tools in Minitab software like Design of
Experiments (DOE) and Response Surface Methodology (RSM)to analyze the relationship
between the parameters and the recovery rates and to also come up with optimal parameters so as
to maximize recovery of vermiculite.
The first chapter comprises of the introduction, which clearly shows the background, the research
gap, problem statement, purpose of the study, the objectives of the study, scope of the study,
justification of the study. The second chapter comprises of the literature review of the operational
parameters that influence vermiculite recovery, studies that have been made about optimization of
these parameters and how optimization is important and also how Minitab is an effective statistical
software for optimization and the respective research gaps. The third chapter comprises of the
methodology that this study seeks to apply. It elaborates how the operational parameters will be
got, and how the data will be entered into Minitab so as to know the number of experiments that
will be carried and then how the recovery rates will be measured using a smaller winnower and
entered into the software to acquire the relationship between the operational parameters and the
recovery rates, and then how Response Surface Methodology(RSM)will be used to acquire the
optimal parameters and then how these parameters will be scaled up to the large winnower
parameters and then how a sensitivity analysis will be carried out after to validate the optimized
parameters. The fourth chapter includes the results and discussions of every specific objective.
Chapter five involves the conclusion, challenges, and recommendations. |
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