PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN
PT X is a make-to-order (MTO) machining product manufacturing company. PT X needs to estimate each order’s lead time in order to estimate the cost at an early stage of the order cycle, due to the unique nature of orders in the MTO industry. These time and cost estimations would then be used to ne...
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id-itb.:743902023-07-12T13:18:40ZPENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN Ahmad Thoriq, Dimas Indonesia Final Project Artificial neural network, machine learning, machining time estimation, CNC machining INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/74390 PT X is a make-to-order (MTO) machining product manufacturing company. PT X needs to estimate each order’s lead time in order to estimate the cost at an early stage of the order cycle, due to the unique nature of orders in the MTO industry. These time and cost estimations would then be used to negotiate their proposed fee to the customer. PT X currently utilizes CAM software to estimate their CNC machining time, which turns out to produce a recognizable figure of deviation from the actual CNC machining time. This research aims to develop a CNC machining time estimation method using a machine learning approach, an artificial neural network model, to utilize the abundant machining data available in PT X. The development of the CNC machining time estimation model uses an Artificial Neural Network (ANN) model as the proposed model and a Multiple Linear Regression model for benchmarking purpose. The model development adopts a popular cross-industry standard for data mining projects, the CRISP-DM framework. The ANN model proved to be superior in accuracy and reliability against the benchmark model, thus being deployed in the proposed software prototype during the implementation test. The test result using 62 rows of testing data shows that the proposed ANN model is capable of estimating unseen data in PT X quite accurately, recording RMSE of 196.35 seconds with 147,49 seconds of absolute error standard deviation. This level of performance is equal to reducing 72% of the RMSE produced by the current method of estimation in PT X during the implementation test. Several machining parameters such as cut length and stepover showed to be significant towards the CNC machining time. text |
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PT X is a make-to-order (MTO) machining product manufacturing company. PT X
needs to estimate each order’s lead time in order to estimate the cost at an early
stage of the order cycle, due to the unique nature of orders in the MTO industry.
These time and cost estimations would then be used to negotiate their proposed fee
to the customer. PT X currently utilizes CAM software to estimate their CNC
machining time, which turns out to produce a recognizable figure of deviation from
the actual CNC machining time.
This research aims to develop a CNC machining time estimation method using a
machine learning approach, an artificial neural network model, to utilize the
abundant machining data available in PT X. The development of the CNC
machining time estimation model uses an Artificial Neural Network (ANN) model
as the proposed model and a Multiple Linear Regression model for benchmarking
purpose. The model development adopts a popular cross-industry standard for
data mining projects, the CRISP-DM framework.
The ANN model proved to be superior in accuracy and reliability against the
benchmark model, thus being deployed in the proposed software prototype during
the implementation test. The test result using 62 rows of testing data shows that the
proposed ANN model is capable of estimating unseen data in PT X quite accurately,
recording RMSE of 196.35 seconds with 147,49 seconds of absolute error standard
deviation. This level of performance is equal to reducing 72% of the RMSE
produced by the current method of estimation in PT X during the implementation
test. Several machining parameters such as cut length and stepover showed to be
significant towards the CNC machining time.
|
format |
Final Project |
author |
Ahmad Thoriq, Dimas |
spellingShingle |
Ahmad Thoriq, Dimas PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
author_facet |
Ahmad Thoriq, Dimas |
author_sort |
Ahmad Thoriq, Dimas |
title |
PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
title_short |
PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
title_full |
PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
title_fullStr |
PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
title_full_unstemmed |
PENGEMBANGAN MODEL ESTIMASI WAKTU PERMESINAN CNC MENGGUNAKAN JARINGAN SARAF TIRUAN |
title_sort |
pengembangan model estimasi waktu permesinan cnc menggunakan jaringan saraf tiruan |
url |
https://digilib.itb.ac.id/gdl/view/74390 |
_version_ |
1822007382602940416 |