Production Planning at a Chocolate Company: A Two-Phase Approach by Aggregation

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Date

2020

Authors

Zehra Düzgit
Ayşe Beyza Kuzuoğlu
Hazal Kalelioğlu
Hazal Kolay
Merve Başak Güler
Senem Akyol
Ayhan Özgür Toy

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Volume Title

Publisher

Springer Science and Business Media Deutschland GmbH

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Green Open Access

No

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Abstract

There are some factors to be considered while developing production planning policy of chocolate and chocolate-based products. One of these factors is that chocolate is a perishable food therefore it has limited shelf life. Another factor is that, its demand is not always easy to forecast. Holidays mothers’ day teachers’ day valentines’ day and new year are examples of the peak periods. For these special days demand generally follows a seasonal demand pattern where seasonality may also contain trend for some specific product types. Moreover there are two religious holidays (Ramadan Feast and Feast of Sacrifice) in Turkey whose dates shift each year. This phenomenon makes forecasts challenging. Underestimating demand causes loss of customer goodwill lost customers and market share whereas overestimating demand causes excess inventory to keep in stock and risk of fat blooming. Accurate forecasting is critical since it provides a fundamental input for the production plan. The study is conducted in a chocolate company in Turkey. The company does not implement a systematic planning method for chocolate production instead the planning is based on past experiences with respect to experts’ opinions. The objective of this study is to determine the optimal production and ending inventory levels for the period of 2018 so as to minimize total production and inventory holding cost subject to production inventory and capacity related restrictions. A two-phase optimization method is adopted as a solution method. Firstly a mathematical model is developed for the monthly aggregate production planning on product group basis. In order to solve the problem monthly demand for product groups are forecasted based on the sales data of the previous two years. Secondly a mathematical model for weekly disaggregate production planning is developed for each end item using the outputs of the aggregate planning as input. The disaggregate production plan gives the weekly planned production and inventory levels for end items for year 2018 with minimum deviation from the aggregate plan. Although the proposed solution model is implemented for year 2018 it can be used for the coming years by updating some parameters. © 2022 Elsevier B.V. All rights reserved.

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Keywords

Aggregate Production Planning, Demand Forecasting, Disaggregate Production Planning, Production Planning, Seasonality, Shelf Life, Aggregates, Competition, Forecasting, Planning, Production Control, Aggregate Production Planning, Demand Forecasting, Disaggregate Production Planning, Inventory Levels, Production And Inventory, Production Planning, Production Plans, Seasonality, Shelf Life, Sales, Aggregates, Competition, Forecasting, Planning, Production control, Aggregate production planning, Demand forecasting, Disaggregate production planning, Inventory levels, Production and inventory, Production Planning, Production plans, Seasonality, Shelf life, Sales, Disaggregate Production Planning, Demand Forecasting, Production Planning, Aggregate Production Planning, Shelf Life, Seasonality, Aggregates, Demand Forecasting, Competition, Aggregate Production Planning, Production And İnventory, Seasonality, Production Control, Inventory Levels, Sales, Disaggregate Production Planning, Planning, Production Plans, Production Planning, Shelf Life, Forecasting

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Source

19th International Symposium for Production Research ISPR 2019

Volume

Issue

Start Page

169

End Page

181
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