Pengembangan Model Multi-Objective Tata Letak Fasilitas Dinamis Dengan Ketidakpastian Produksi pada Sistem Manufaktur Berbasis Zona
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Date
2023Author
Tarigan, Ukurta
Advisor(s)
Sinulingga, Sukaria
Sutarman
Sembiring, Meilita Tryana
Metadata
Show full item recordAbstract
Dynamic Facility Layout Planning (DFLP) is related to manufacturing facility planning to be
able to respond to changes (changeability) in the form of alignment of departments, zones,
workstations and machines by considering dynamic parameters and drivers. There are 3 main
gaps according to 7 studies and 3 studies in the literature review that consider environmental
dynamics only considering demand and production resources. scheduler dynamics and
production strategy execution order; as well as the dynamics of rules such as Safety,
management and government regulations and standardization. The dynamic model
development carried out by previous research only applies to continuous layouts which are
widely applied to chemical process-based industries, while the zone-based manufacturing
industry tends to apply its facility layout based on a discrete approach so that this dynamic
model is not suitable for application in the manufacturing industry. Previous studies have also
developed a mathematical model for zone-based manufacturing industries, but the costs of
material handling and re-layout which should be contradictory, in this research are combined
so that they do not accommodate the reality of the system that should be. This study develop
a DFLP -based dynamic layout model which is a gap in dynamic layout research. The zone
based DFLP system is analyzed more comprehensively so as to obtain a model that needs to
consider the dynamic aspects of demand, process sequence dynamics and resources. It is
necessary to consider dynamic performance measures in the form of changeability
parameters. The model was developed in the form of multiple objectives to minimize material
handling costs and re-layout costs. The model was tested on 3 cases consisting of dummy
data, the aircraft industry from the literature and the car manufacturing industry. Model
performance shows that the model produces 100 Pareto optima. This result is said to be good
because it has high diversity and does not produce infeasibility with near optimum results.
The model is able to provide layout recommendations dynamically with dynamic measures
that are more adaptive and flexibility for all cases at the expense of robustness tested by t test
with results reject H0 for the car manufacturing industry.