PENGEMBANGAN MODEL ESTIMASI BIAYA PADA DESAIN BERBANTUAN KOMPUTER SOLIDWORKS MENGGUNAKAN PEMBELAJARAN MESIN
CSM (Cipta Sinergi Manufacturing) CV is a company engaged in the field of machinery products manufacturing with orders such as molding, dies, spare parts, and other products using a make-to-order strategy. One of the activities carried out at CV CSM is the estimation of CAD (Computer Aided Design...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/77833 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | CSM (Cipta Sinergi Manufacturing) CV is a company engaged in the field of
machinery products manufacturing with orders such as molding, dies, spare parts,
and other products using a make-to-order strategy. One of the activities carried out
at CV CSM is the estimation of CAD (Computer Aided Design) costs for custom
order products. In the process of product designing using CAD, the company
estimates design costs through the approach of a percentage of the cost of goods
manufactured (COGM) and adjustments based on drafter's modifications. This
results in inconsistent and less representative values of design complexity. In
response, this research is conducted to design a cost estimation model based on the
complexity level of product designs, defined as the number of feature uses at the
part, assembly, and drawing levels.
This research designs a scheme and data acquisition method through the
Solidworks API (Application Programming Interface) to calculate the number of
features used in CAD documents. Meanwhile, the cost estimation model in this
study is developed using machine learning techniques and refers to the CRISP-DM
methodology engineering standards. Four algorithms are utilized: random forest,
extreme gradient boosting, multi-linear regression, and k-nearest neighbors. The
random forest algorithm, in particular, exhibits the best performance metrics
compared to other algorithms, with an R2
of 0.97 on testing data and a Maximum
Absolute Percentage Error (MAPE) of 25% on testing data.
Based on the best machine learning model, a prototype software for design cost
estimation is developed using the Python programming language and the Tkinter
library. The resulting model is then used to predict new datasets not used in the
model development process, yielding an average error rate of 23.414%. This value
signifies that the developed model is capable of accurately predicting design costs
in the industry.
|
---|