MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU

As the COVID-19 epidemy sweeps by, PT Garuda Maintenance Facility Aero Asia Tbk (GMF) was experiencing a net loss of $328 million and $127 million in 2020 and 2021 respectively. This was due to the incorrect amount of order that subsequently resulted in inventory circulation dropping the in value...

Full description

Saved in:
Bibliographic Details
Main Author: Kafa Atriantio, Marchiano
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/77509
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:77509
spelling id-itb.:775092023-09-07T15:50:09ZMODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU Kafa Atriantio, Marchiano Indonesia Final Project LSTM, GRU, Material planning, EOQ, Forecasting, FSN. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/77509 As the COVID-19 epidemy sweeps by, PT Garuda Maintenance Facility Aero Asia Tbk (GMF) was experiencing a net loss of $328 million and $127 million in 2020 and 2021 respectively. This was due to the incorrect amount of order that subsequently resulted in inventory circulation dropping the in value below one. In accordance to the aforementioned case, this research intends to develop an effective forecasting model to help expendable material planning for Boeing 737- 800 in GMF’s inventory. The research methods used in this paper involves classification of materials based on Fast, Slow, Non-Moving (FSN) analysis technique, material demand data pattern recognition through data decomposition, and implementation of Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) neural network model to forecast material demand. Evaluation is done with Mean Squared Error (MSE), and order method with Economic Order Quantity (EOQ) which will be utilized to determine the optimal order quantity. Research results reveal that as many as 26 materials are fast moving, and all material shows a scrambled data pattern with trends, seasonal and residual. From the tested forecasting method, LSTM is used for 5 materials, GRU for 14 materials, and Moving Average (MA) method for 7 materials. Evaluation results shows that EOQ method provides lower cost compared to actual order method. The implications from the research shows that using the suggested order method can decrease cost of material acquisition by 41% compared to actual ordering method. In other words, forecasting method with LSTM and GRU in material planning can have significant effects on material planning and cost management. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description As the COVID-19 epidemy sweeps by, PT Garuda Maintenance Facility Aero Asia Tbk (GMF) was experiencing a net loss of $328 million and $127 million in 2020 and 2021 respectively. This was due to the incorrect amount of order that subsequently resulted in inventory circulation dropping the in value below one. In accordance to the aforementioned case, this research intends to develop an effective forecasting model to help expendable material planning for Boeing 737- 800 in GMF’s inventory. The research methods used in this paper involves classification of materials based on Fast, Slow, Non-Moving (FSN) analysis technique, material demand data pattern recognition through data decomposition, and implementation of Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) neural network model to forecast material demand. Evaluation is done with Mean Squared Error (MSE), and order method with Economic Order Quantity (EOQ) which will be utilized to determine the optimal order quantity. Research results reveal that as many as 26 materials are fast moving, and all material shows a scrambled data pattern with trends, seasonal and residual. From the tested forecasting method, LSTM is used for 5 materials, GRU for 14 materials, and Moving Average (MA) method for 7 materials. Evaluation results shows that EOQ method provides lower cost compared to actual order method. The implications from the research shows that using the suggested order method can decrease cost of material acquisition by 41% compared to actual ordering method. In other words, forecasting method with LSTM and GRU in material planning can have significant effects on material planning and cost management.
format Final Project
author Kafa Atriantio, Marchiano
spellingShingle Kafa Atriantio, Marchiano
MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
author_facet Kafa Atriantio, Marchiano
author_sort Kafa Atriantio, Marchiano
title MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
title_short MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
title_full MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
title_fullStr MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
title_full_unstemmed MODEL PERAMALAN UNTUK PERENCANAAN PERSEDIAAN MATERIAL PESAWAT B737-800 DI PT GARUDA MAINTENANCE FACILITY AERO ASIA TBK MENGGUNAKAN LSTM DAN GRU
title_sort model peramalan untuk perencanaan persediaan material pesawat b737-800 di pt garuda maintenance facility aero asia tbk menggunakan lstm dan gru
url https://digilib.itb.ac.id/gdl/view/77509
_version_ 1822008294327189504