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Modelling and prediction of intermittent demand distributions

Lengu, D

Authors

D Lengu



Contributors

A Syntetos
Supervisor

Abstract

The management of spare part inventories is an issue of strategic concern for most
industrial firms. However, the demand for spare parts is typically intermittent in nature
meaning that orders arrive sporadically and the order sizes may be highly variable. A
number of authors have suggested that compound distributions could be used to model
intermittent demand patterns. There is however a lack of theoretical analysis and relevant
empirical evidence on this issue. In this work, we assess whether compound Poisson
distributions provide a good fit for the demand distributions of spare part items. A
framework that links demand classification and the distributional properties of demand is
proposed and the empirical validity of the framework is assessed by means of
experimentation with real data.
This study also examines a number of different approaches for managing inventory items
with intermittent demand. The literature on inventory management is dominated by the
'frequentist-approach'; this is the term that is being used in this thesis to refer to all the
solutions that rely on frequentist inference in order to obtain the demand distribution. The
frequentist-based approach is characterised by a reliance on a number of assumptions
(including, at a minimum, that the demand distribution and the associated parameters are
known). As demonstrated in this study, such assumptions may pose considerable practical
problems when demand is intermittent. An argument is being made in favour of other
inventory management approaches that rely on fewer, less restrictive, assumptions. The
alternative approaches considered in this study include the bootstrapping-based solution
proposed by Willemain et al. (1994), a new solution based on the work by Efron (1979)
and a new approach that is based on the Bayesian paradigm. A comparison of the stock
control performance of these alternatives suggests that non-frequentist approaches may
perform as well as the frequentist one.

Citation

Lengu, D. Modelling and prediction of intermittent demand distributions. (Thesis). University of Salford

Thesis Type Thesis
Deposit Date Jul 28, 2021
Award Date Sep 1, 2012

This file is under embargo due to copyright reasons.

Contact Library-ThesesRequest@salford.ac.uk to request a copy for personal use.



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