Learning to detect planning horizons with multi-layered perceptrons : a case study for lot-sizing

H.P. Stehouwer, E.H.L. Aarts, J. Wessels

Research output: Book/ReportReportAcademic

75 Downloads (Pure)

Abstract

We present a neural network approach to the problem of determining lot sizes under demand uncertainty. The situation is considered in which at any decision moment the demand is given for a small finite data horizon into the future and the lot sizes are determined on a rolling-horizon basis. We demonstrate how a properly designed multi-layered perceptron can successfully be learned to detect planning horizons in case of a simple lot-sizing problem with Wagner-Whitin cost structure. We develop a two-stage decision procedure in which in the first stage the multi-layered perceptron estimates a planning horizon within the data horizon. In the second stage a detailed plan for this estimated planning horizon is calculated. We compare the cost performance of this procedure with some of the well-known lot-sizing heuristics for a number of different cost and demand conditions. The main finding is that the proposed approach is quite robust and dominates under the majority of the conditions.
Original languageEnglish
Place of PublicationEindhoven
PublisherTechnische Universiteit Eindhoven
Number of pages19
Publication statusPublished - 1996

Publication series

NameMemorandum COSOR
Volume9618
ISSN (Print)0926-4493

Fingerprint

Dive into the research topics of 'Learning to detect planning horizons with multi-layered perceptrons : a case study for lot-sizing'. Together they form a unique fingerprint.

Cite this