A Validation Framework for Bulk Distribution Logistics Simulation Models

<i>Background</i>: Simulation of business processes allows decision-makers to explore the implications and trade-offs of alternative approaches, policies and configurations. Trust in the simulation as a stand-in proxy of the real system depends on the validation of the computer model as...

Full description

Saved in:
Bibliographic Details
Main Authors: Andres Guiguet, Dirk Pons
Format: Article
Language:English
Published: MDPI AG 2024-12-01
Series:Logistics
Subjects:
Online Access:https://www.mdpi.com/2305-6290/9/1/3
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850064637879386112
author Andres Guiguet
Dirk Pons
author_facet Andres Guiguet
Dirk Pons
author_sort Andres Guiguet
collection DOAJ
description <i>Background</i>: Simulation of business processes allows decision-makers to explore the implications and trade-offs of alternative approaches, policies and configurations. Trust in the simulation as a stand-in proxy of the real system depends on the validation of the computer model as well as on that of the data used to run it and judge its behaviour. Though validation frameworks exist, they provide little guidance for validation in the context of data-poor endeavours, such as those where observations as sourced from historical records were acquired for purposes other than the simulation itself. As simulation of complex business systems as logistic distribution networks can only rely on this type of data, there is a need to address this void and provide guidance for practitioners and fostering the conversation among academics. This paper presents a high-level development and validation framework applicable to simulation in data-poor environments for modelling the process of bulk distribution of commodities. <i>Method</i>: Traditionally accepted approaches were synthesised so as to develop an into a flexible three-stage modelling and validation approach to guide the process and improve the transparency of adapting available data sources for the simulation itself. The framework suggests the development of parallel paths for the development of computer and data models which, in the last stage, are merged into a phenomenological model resulting from the combination of both. The framework was applied to a case study involving the distribution of bulk commodities over a country-wide network to show its feasibility. <i>Results</i>: The method was flexible, inclusive of other frameworks, and suggested considerations to be made during the acquisition and preparation of data to be used for the modelling and exploration of uncharted scenarios. <i>Conclusions</i>: This work provides an integrative, transparent, and straightforward method for validating exploratory-type simulation models for endeavours in which observations cannot be acquired through direct experimentation on the target system.
format Article
id doaj-art-fd186d2acfc04aa38be5c77e88eba702
institution DOAJ
issn 2305-6290
language English
publishDate 2024-12-01
publisher MDPI AG
record_format Article
series Logistics
spelling doaj-art-fd186d2acfc04aa38be5c77e88eba7022025-08-20T02:49:15ZengMDPI AGLogistics2305-62902024-12-0191310.3390/logistics9010003A Validation Framework for Bulk Distribution Logistics Simulation ModelsAndres Guiguet0Dirk Pons1Department of Mechanical Engineering, University of Canterbury, Christchurch 8041, New ZealandDepartment of Mechanical Engineering, University of Canterbury, Christchurch 8041, New Zealand<i>Background</i>: Simulation of business processes allows decision-makers to explore the implications and trade-offs of alternative approaches, policies and configurations. Trust in the simulation as a stand-in proxy of the real system depends on the validation of the computer model as well as on that of the data used to run it and judge its behaviour. Though validation frameworks exist, they provide little guidance for validation in the context of data-poor endeavours, such as those where observations as sourced from historical records were acquired for purposes other than the simulation itself. As simulation of complex business systems as logistic distribution networks can only rely on this type of data, there is a need to address this void and provide guidance for practitioners and fostering the conversation among academics. This paper presents a high-level development and validation framework applicable to simulation in data-poor environments for modelling the process of bulk distribution of commodities. <i>Method</i>: Traditionally accepted approaches were synthesised so as to develop an into a flexible three-stage modelling and validation approach to guide the process and improve the transparency of adapting available data sources for the simulation itself. The framework suggests the development of parallel paths for the development of computer and data models which, in the last stage, are merged into a phenomenological model resulting from the combination of both. The framework was applied to a case study involving the distribution of bulk commodities over a country-wide network to show its feasibility. <i>Results</i>: The method was flexible, inclusive of other frameworks, and suggested considerations to be made during the acquisition and preparation of data to be used for the modelling and exploration of uncharted scenarios. <i>Conclusions</i>: This work provides an integrative, transparent, and straightforward method for validating exploratory-type simulation models for endeavours in which observations cannot be acquired through direct experimentation on the target system.https://www.mdpi.com/2305-6290/9/1/3operations researchlogisticsdiscrete event simulationvalidationdata-poor modelling environments
spellingShingle Andres Guiguet
Dirk Pons
A Validation Framework for Bulk Distribution Logistics Simulation Models
Logistics
operations research
logistics
discrete event simulation
validation
data-poor modelling environments
title A Validation Framework for Bulk Distribution Logistics Simulation Models
title_full A Validation Framework for Bulk Distribution Logistics Simulation Models
title_fullStr A Validation Framework for Bulk Distribution Logistics Simulation Models
title_full_unstemmed A Validation Framework for Bulk Distribution Logistics Simulation Models
title_short A Validation Framework for Bulk Distribution Logistics Simulation Models
title_sort validation framework for bulk distribution logistics simulation models
topic operations research
logistics
discrete event simulation
validation
data-poor modelling environments
url https://www.mdpi.com/2305-6290/9/1/3
work_keys_str_mv AT andresguiguet avalidationframeworkforbulkdistributionlogisticssimulationmodels
AT dirkpons avalidationframeworkforbulkdistributionlogisticssimulationmodels
AT andresguiguet validationframeworkforbulkdistributionlogisticssimulationmodels
AT dirkpons validationframeworkforbulkdistributionlogisticssimulationmodels