Applying Machine Learning For Demand Forecasting And Linear Programming For Aggregate Production Planning
Abstract
Demand forecasting is, without a doubt, the most crucial aspect of any company's supply
chain. Especially, the new century of big data gathered from complicated customer
behaviors, as well as severe competition among businesses in the same areas, has prompted
many organizations to invest in improving forecasting precision. After demand forecasting,
aggregate production planning is concerned with determining production, inventory, and
labor levels in order to meet fluctuating demand requirements over a six-month to one-year
planning horizon.
The aim of this thesis was to design a machine learning model to propose sales prediction
and aggregate production planning for AJF Company – a multinational company that
manufactures and sells their main product is Korean food. The research also includes
procedures for improving model output, such as parameter adjustment, feature selection,
and the removal of outlier values. The findings show that the mistake rate and processing
time are both respectable, with plenty of potential for improvement. From that, AW could
improve the demand forecasting accuracy, which leads to better performance for the whole
supply chain of the company