DETERMINATION OF RAW MATERIAL PURCHASING FREQUENCY AND SCHEDULE CONSIDERING FLUCTUATING FOREIGN EXCHANGE RATE, CONTRACTED PRICE, AND DELIVERY LEAD TIME
This research presents problem on determination of optimal raw material purchasing frequency and schedule considering fluctuating foreign exchange rate, contracted price, and delivery lead time. This problem happens in companies in Indonesia which make transactions with different currency, and ha...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/72573 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | This research presents problem on determination of optimal raw material
purchasing frequency and schedule considering fluctuating foreign exchange rate,
contracted price, and delivery lead time. This problem happens in companies in
Indonesia which make transactions with different currency, and have quantity
contract with supplier, such as PT XYZ, because every transactions in Indonesia
has to use Indonesian Rupiah (IDR) as rule issued by Bank Indonesia No.
17/3/PBI/2015. The aim of this research is to give optimal purchasing frequency
and schedule minimizing total cost of inventory. Purchasing quantity is based on
total demand between consecutive schedules. Contributions of this research are on
improvement of inventory model in terms of application of fluctuating foreign
exchange rate, new contracted price, lead time, and algorithm to obtain discrete
optimal purchasing schedule.
There are three steps needed to solve the problem; forecasting foreign exchange
rate (Rp/$), forecasting new contracted price ($/kg) from supplier, and solving the
inventory model. Forecasting foreign exchange rate (Rp/$) is solved using
Artificial Neural Network (ANN) method with Design of Experiment on number
of input nodes and hidden nodes. Forecasting new contracted price ($/kg) is
solved by time series forecasting method, ARIMA as it gives better performance
than Geometric Brownian Motion in this case. ARIMA model that fits the data is
ARIMA (1,1,0) with coefficient 0,8026. These forecasts are used as input in
inventory model to obtain optimal raw material purchasing decisions. The model
is solved with analytic and numeric method. Performance of model is tested with
actual purchasing from PT XYZ on March 2017 case. The result shows the
differences of frequency and schedule between the model and the actual condition
with 0,41% saving. Sensitivity analysis shows that the developed model and
algorithm is not sensitive to the changing of holding cost fraction and ordering
cost but sensitive to demand and exchange rate (Rp/$) mean value.
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