Discusses the development and evaluation of a forecasting model for inventory management in an advanced technology batch production environment. Traditional forecasting and inventory management do not adequately address issues relating to a short life cycle and to non‐seasonal products with a relatively long lead time. Limited historical data (fewer than 100 observations) is also a problem in predicting short‐term dynamic or unstable time series. A Bayesian dynamic linear time series model is proposed as an alternative technique for forecasting demand in a dynamically changing environment. Provides details of the important characteristics and development process of the forecasting model. A case study is then presented to illustrate the application of the model based on data from a multinational company in Singapore. It also compares the Bayesian dynamic linear time series model with a classical forecasting model (auto‐regressive integrated moving average (ARIMA) model).
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1 September 2000
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Integrated Manufacturing Systems
Case Report|
September 01 2000
Forecasting demand and inventory management using Bayesian time series Available to Purchase
T.A. Spedding;
T.A. Spedding
University of Greenwich, Chatham Maritime, Kent, UK
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K.K. Chan
K.K. Chan
Nanyang Technological University, Singapore
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Publisher: Emerald Publishing
Online ISSN: 1758-583X
Print ISSN: 0957-6061
© MCB UP Limited
2000
Integrated Manufacturing Systems (2000) 11 (5): 331–339.
Citation
Spedding T, Chan K (2000), "Forecasting demand and inventory management using Bayesian time series". Integrated Manufacturing Systems, Vol. 11 No. 5 pp. 331–339, doi: https://doi.org/10.1108/09576060010335609
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