Identifying the Impact of Incomplete Datasets on Process Cycle Time Prediction in an Aerospace Assembly Line


Autoria(s): Allen, David; Murphy, Adrian; Butterfield, Joseph; Cowan, Stephen; Matthew, Mullan
Data(s)

01/09/2016

Resumo

Supply Chain Simulation (SCS) is applied to acquire information to support outsourcing decisions but obtaining enough detail in key parameters can often be a barrier to making well informed decisions.<br/>One aspect of SCS that has been relatively unexplored is the impact of inaccurate data around delays within the SC. The impact of the magnitude and variability of process cycle time on typical performance indicators in a SC context is studied. <br/>System cycle time, WIP levels and throughput are more sensitive to the magnitude of deterministic deviations in process cycle time than variable deviations. Manufacturing costs are not very sensitive to these deviations.<br/>Future opportunities include investigating the impact of process failure or product defects, including logistics and transportation between SC members and using alternative costing methodologies.<br/>

Identificador

http://pure.qub.ac.uk/portal/en/publications/identifying-the-impact-of-incomplete-datasets-on-process-cycle-time-prediction-in-an-aerospace-assembly-line(d11ca0ea-9767-4af8-8e0d-1c29d2e8cdcd).html

http://ulsites.ul.ie/imc33/imc33-programme

Idioma(s)

eng

Direitos

info:eu-repo/semantics/restrictedAccess

Fonte

Allen , D , Murphy , A , Butterfield , J , Cowan , S & Matthew , M 2016 , Identifying the Impact of Incomplete Datasets on Process Cycle Time Prediction in an Aerospace Assembly Line . in International Manufacturing Conference (IMC33) . International Manufacturing Conference , Limerick , Ireland , 31-1 September .

Palavras-Chave #Supply Chain Simulation, Incomplete Datasets, Variable Cycle Times
Tipo

contributionToPeriodical