Article ID Journal Published Year Pages File Type
385124 Expert Systems with Applications 2011 12 Pages PDF
Abstract

This paper is devoted to investigating inventory control problems under nonstationary and uncertain demand. A belief-rule-based inventory control (BRB-IC) method is developed, which can be applied in situations where demand and demand-forecast-error (DFE) do not follow certain stochastic distribution and forecasting demand is given in single-point or interval styles. The method can assist decision-making through a belief-rule structure that can be constructed, initialized and adjusted using both manager’s knowledge and operational data. An extended optimal base stock (EOBS) policy is proved for initializing the belief-rule-base (BRB), and a BRB-IC inference approach with interval inputs is proposed. A numerical example and a case study are examined to demonstrate potential applications of the BRB-IC method. These studies show that the belief-rule-based expert system is flexible and valid for inventory control. The case study also shows that the BRB-IC method can compensate DFE by training BRB using historical demand data for generating reliable ordering policy.

► This paper is devoted to investigating inventory control problems under nonstationary and uncertain demand. ► We propose a belief-rule-based inventory control (BRB-IC) method. ► The belief-rule structure can be constructed, initialized and adjusted using both manager’s knowledge and operational data. ► An extended optimal base stock (EOBS) policy is proved for initializing the belief-rule-base.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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