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The development of a swarm intelligent simulation tool for sugarcane transport logistics systems.McDonald, Brendon Clyde. 14 November 2013 (has links)
Transport logistics systems typically evolve as networks over time, which may result
in system rigidity and cause changes to become expensive and time consuming. In
this study a logistics model, named TranSwarm, was developed to simulate sugarcane
harvesting, transport and mill-yard activities for a mill supply area. The aim was to
simulate produce flow, and allow individual working entities to make decisions,
driven by rules and protocols, based on their micro-environments. Noodsberg mill
was selected as a case study because of low current levels of synchronization. Growers
were assumed to operate independent harvesting and transport systems causing
inconsistent convergences at the mill. This diverse and fragmented system provided a
suitable environment to construct a model that would consider interactions between
individual growers and their respective transport systems. Ideally, by assessing the
micro-decisions of individuals and how they influence the larger holistic supply chain,
TranSwarm quantifies the impacts of different types of transport practices, such as
staggering shift changes, transport scheduling, core sampling and consortium-based
logistics. TranSwarm is visual, mechanistic and represents key entities, such as roads,
farm groupings and the mill. The system uses discrete events to create a dynamic and
stochastic environment from which observations and conclusions can be drawn. This
approach potentially allows stakeholders to identify key components and interactions
that may jeopardize overall efficiency and to use the system to test new working
protocols and logistics rules for improving the supply chain. / Thesis (M.Sc.)-University of KwaZulu-Natal, 2008.
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Simulation modelling of sugarcane harvest-to-crush delays.January 1998 (has links)
Long delays between harvesting and crushing of sugarcane lead to excessive deterioration in the
quality of sugarcane. The aim of this project was to develop a computer based model of sugarcane
harvesting and delivery systems that could be used to investigate methods of reducing harvest-to crush
delays. A literature review was conducted and simulation modelling was chosen as the most
appropriate modelling technique for the situation of sugarcane harvesting and delivery and the
purposes of this project. The Arena modelling system was chosen as the simulation software with
which to construct the model.
A model was developed on the scale of a particular sugar mill and the area of farms supplying it
with cane. The Sezela mill on the south coast of KwaZulu-Natal, South Africa was chosen as a
case study on which to develop and test the model. The model integrated a harvesting and
transport section which represented all the individual farms or combinations of farms in the area
with a millyard section.
After the model had been verified and validated, it was used to investigate the effect of a number
of different scenarios of harvesting and delivery systems and schedules on harvest-to-crush delays
in the Sezela mill area. The results of the experimental runs performed with the model indicated
that the most significant decreases in harvest-to-crush delays could be brought about by matching
harvesting, delivery and milling cycles as closely as possible. It was also evident that burn-to-cut
delays where daily burning is not practised constitute a large proportion of overall harvest-to crush
delays. The model proved to be useful in making comparisons between systems and in
providing a holistic view of the problem of harvest-to-crush delays. Recommendations for future
developments of the model include adding a mechanical harvesting component and making the
model more easily applicable to other mill areas. / Thesis (M.Sc.Eng.)-University of Natal, 1998.
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