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dc.contributor.advisorΥψηλάντης, Παντελής
dc.contributor.authorΖορμπάς, Φώτιος
dc.contributor.otherZormpas, Fwtios
dc.coverage.spatialΚύπροςel_GR
dc.date.accessioned2019-04-09T08:54:44Z
dc.date.available2019-04-09T08:54:44Z
dc.date.copyright2019-04-09
dc.date.issued2018-06
dc.identifier.otherERM/2018/00016el_GR
dc.identifier.urihttp://hdl.handle.net/11128/3989
dc.description.abstractEnterprise’ main goal is profit maximisation and shareholders benefit. During the past years, the evolution of technologies has led to the introduction of information systems. Consolidation of geographical limits drives the change in the internal, but also in the wider operational environment of the firm. The dynamic environment defines the culture and risk appetite of every organization in it. More specifically firm are turning their preference to dynamics methods that can constantly monitor the market and predict uncertainty. The adoption of the appropriate conditions drives to equilibrium, balancing performance and risk exposure. A substantial contributor to this balance constitutes a portfolio of information technologies such as simulation platforms that in contrast with analytical techniques, face risks in total without assumptions. This Thesis initially will present the theory of risk and simulation and furthermore to present actual data produced by simulation models. While Deterministic theory is based on data consistency, the stochastic behavior of demand is reflecting uncertainty and randomness that are hidden to data. Uncertainty in calculations is associated with variation in predictions. Modern simulation models, using heavy mathematical procedures, are adding the dimension of time in calculation. The importance of simulation is reflected to the ability, that firms gain to predict future conditions without exposing themselves to actual risks. The paper is divided into two thematic sections. The first section (Chapter 1-3), present the basic theory concerning risk and supply chain, while the second section (Chapter 4-7), presents the efficiency of stochastic simulation models, in risk estimation. Key contributors to this effort are the custom models, designed by Arena Simulator Platform.el_GR
dc.format.extent54 σ. 30 εκ.el_GR
dc.languagegrel_GR
dc.language.isoenel_GR
dc.publisherΑνοικτό Πανεπιστήμιο Κύπρουel_GR
dc.rightsinfo:eu-repo/semantics/closedAccessel_GR
dc.subjectΕφοδιαστική αλυσίδαel_GR
dc.subjectSupply chainel_GR
dc.titleEvaluation of risk supply chain models using stochastic simulation modelsel_GR
dc.typeΜεταπτυχιακή Διατριβήel_GR
dc.description.translatedabstract------el_GR
dc.format.typepdfel_GR


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