DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY

Demand prediction is crucial activity for production planning. Research on fashion demand prediction often aims to predict aggregate demand of a product family. This research tries to predict more detail product level which considering color variance. Demand prediction model for fashion industry is...

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Main Author: Apriana, Karina
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/51555
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:51555
spelling id-itb.:515552020-09-29T11:13:51ZDEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY Apriana, Karina Indonesia Theses Fashion industry, demand prediction, Artificial Neural Network (ANN), policy planning, hybrid MTO/MTS, product life cycle, markov decision process (MDP). INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/51555 Demand prediction is crucial activity for production planning. Research on fashion demand prediction often aims to predict aggregate demand of a product family. This research tries to predict more detail product level which considering color variance. Demand prediction model for fashion industry is developed based on artificial neural network (ANN). Temperature, special days, store sales, location, discount percentage, price, population, style, materials, average of Indonesian expenses for fashion product, income, and e-commerce user trend are among variables that is used in the model. The result showed a good accuracy and can be applied as a new product prediction. In this research, the result that is obtained from ANN is being a basic for MTO/MTS policy planning. Researches on hybrid MTO/MTS production planning often tries to decide order acceptance or rejection because they focus in MTS or MTO perspective. This research developed model to determine MTO or MTS production policy in a period without certain perspective. Policy MTO/MTS is applied in 4PL company who manage fashion industry. Markov decision process (MDP) model is developed to obtain optimal policy considering product life cycle. The optimal policy showed decision to make for an observed state. The decision varies for particular inventory level, MTO order, and life cycle stage by considering lead time, minimum order quantity, and maximum amount of MTO order allowed in the system 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 Demand prediction is crucial activity for production planning. Research on fashion demand prediction often aims to predict aggregate demand of a product family. This research tries to predict more detail product level which considering color variance. Demand prediction model for fashion industry is developed based on artificial neural network (ANN). Temperature, special days, store sales, location, discount percentage, price, population, style, materials, average of Indonesian expenses for fashion product, income, and e-commerce user trend are among variables that is used in the model. The result showed a good accuracy and can be applied as a new product prediction. In this research, the result that is obtained from ANN is being a basic for MTO/MTS policy planning. Researches on hybrid MTO/MTS production planning often tries to decide order acceptance or rejection because they focus in MTS or MTO perspective. This research developed model to determine MTO or MTS production policy in a period without certain perspective. Policy MTO/MTS is applied in 4PL company who manage fashion industry. Markov decision process (MDP) model is developed to obtain optimal policy considering product life cycle. The optimal policy showed decision to make for an observed state. The decision varies for particular inventory level, MTO order, and life cycle stage by considering lead time, minimum order quantity, and maximum amount of MTO order allowed in the system
format Theses
author Apriana, Karina
spellingShingle Apriana, Karina
DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
author_facet Apriana, Karina
author_sort Apriana, Karina
title DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
title_short DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
title_full DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
title_fullStr DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
title_full_unstemmed DEMAND PREDICTION AND POLICY MAKE-TO-ORDER/MAKE-TO-STOCK MODEL DEVELOPMENT CONSIDERING PRODUCT LIFE CYCLE IN FASHION INDUSTRY
title_sort demand prediction and policy make-to-order/make-to-stock model development considering product life cycle in fashion industry
url https://digilib.itb.ac.id/gdl/view/51555
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