Title
Forecasting of compound Erlang demand
Abstract
Intermittent demand items dominate service and repair inventories in many industries and they are known to be the source of dramatic inefficiencies in the defence sector. However, research in forecasting such items has been limited. Previous work in this area has been developed upon the assumption of a Bernoulli or a Poisson demand arrival process. Nevertheless, intermittent demand patterns may often deviate from the memory-less assumption. In this work we extend analytically previous important results to model intermittent demand based on a compound Erlang process, and we provide a comprehensive categorisation scheme to be used for forecasting purposes. In a numerical investigation we assess the benefit of departing from the memory-less assumption and we provide insights into how the degree of determinism inherent in the process affects forecast accuracy. Operationalised suggestions are offered to managers and software manufacturers dealing with intermittent demand items.
Year
DOI
Venue
2015
10.1057/jors.2015.27
Journal of the Operational Research Society
Keywords
Field
DocType
demand forecasting,demand categorisation,Erlang process,service logistics
Demand patterns,Arrival process,Demand forecasting,Computer science,Determinism,Erlang (programming language),Operations research,Software,Demand management,Poisson distribution,Operations management
Journal
Volume
Issue
ISSN
66
12
0160-5682
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
Aris A. Syntetos116614.78
M. Zied Babai211812.17
Shuxin Luo300.34