PENGEMBANGAN MODEL ESTIMASI BIAYA PADA DESAIN BERBANTUAN KOMPUTER MENGGUNAKAN PEMBELAJARAN MESIN
CV CSM (Cipta Sinergi Manufacturing) is a company focused on machining products manufacturing such as mechanical spare part, moulding, dies, and other manufactured products. The production used Make-to-Order (MTO) system to accommodate custom production and low volumes. In designing product, the...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/72119 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | CV CSM (Cipta Sinergi Manufacturing) is a company focused on machining
products manufacturing such as mechanical spare part, moulding, dies, and other
manufactured products. The production used Make-to-Order (MTO) system to
accommodate custom production and low volumes. In designing product, the
company estimates the design costs using the percentage of the cost of goods sold
(COGS) of the product so that the results obtained are considered inconsistent and
less representative than the design complexity. Therefore, the purpose of this study
is to design a model that can be used to estimate costs based on the level of
complexity.
This research uses machine learning which refers to the CRISP-DM methodology
for estimating design costs. The three algorithms used are random forest, multiple
linier regression, dan extreme gradient boosting. The best algorithm is selected by
implementing each model with the available dataset. In this case, the model that
has the best performance in estimating costs is a random forest algorithm with an
average R
score of 0.90 in the test set and 0.89 in the training set. It also has MAPE
(Maximum Absolute Percentage Error) performance of 35% in the test set and 25%
in the training set.
Based on the best machine learning model, then a design cost estimation software
is developed using the Python programming language that can be run using Google
Collaborator. By using the software, a validation test was carried out by estimating
costs using data from the CV CSM and obtained the average error value of 24.83%.
This value indicates that the model produced by the perangkat lunak prototype
considered valid and can be implemented practically in the industry.
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