Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
385124 | Expert Systems with Applications | 2011 | 12 Pages |
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.