Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory

Managing uncertainty is the way to secure stability of the supply chain. Uncertainty within chipping operation and chip transportation causes production loss. In the wood chip supply chain for bioenergy, operational uncertainty mainly appears in the moisture content of the material, chipping product...

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Main Authors: Mika Yoshida, Katsuhiko Takata
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Forests
Subjects:
Online Access:https://www.mdpi.com/1999-4907/10/9/822
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spelling doaj-3939ab7a1730436bae3ea45aeab6de3c2020-11-25T01:09:42ZengMDPI AGForests1999-49072019-09-0110982210.3390/f10090822f10090822Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing TheoryMika Yoshida0Katsuhiko Takata1Institute of Wood Technology, Akita Prefectural University. Kaieizaka 11-1, Noshiro, Akita 016-0876, JapanInstitute of Wood Technology, Akita Prefectural University. Kaieizaka 11-1, Noshiro, Akita 016-0876, JapanManaging uncertainty is the way to secure stability of the supply chain. Uncertainty within chipping operation and chip transportation causes production loss. In the wood chip supply chain for bioenergy, operational uncertainty mainly appears in the moisture content of the material, chipping productivity, and the interval of truck arrival. This study theoretically quantified the loss in wood chip production by applying queuing theory and stochastic modelling. As well as the loss in production, the inefficiency was identified as the idling time of chipper and the queuing time of trucks. The aim of this study is to quantify the influence of three uncertainties on wood chip production. This study simulated the daily chip production using a mobile chipper by applying queuing theory and stochastic modelling of three uncertainties. The result was compared with the result of deterministic simulation which did not consider uncertainty. Uncertainty reduced the production by 14% to 27% compared to the production of deterministic simulation. There were trucks scheduled but not used. The cases using small trucks show the largest daily production amount, but their lead time was the longest. The large truck was sensitive to the moisture content of material because of the balance between payload and volumetric capacity. This simulation method can present a possible loss in production amount and enables to evaluate some ways for the loss compensation quantitatively such as outsourcing or storing buffer. For further development, the data about the interval of truck arrival should be collected from fields and analyzed. We must include the other uncertainties causing technical and operator delays.https://www.mdpi.com/1999-4907/10/9/822interval of truck arrivallead timelogisticsmoisture contentstochastic modellingthroughputwork in process
collection DOAJ
language English
format Article
sources DOAJ
author Mika Yoshida
Katsuhiko Takata
spellingShingle Mika Yoshida
Katsuhiko Takata
Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
Forests
interval of truck arrival
lead time
logistics
moisture content
stochastic modelling
throughput
work in process
author_facet Mika Yoshida
Katsuhiko Takata
author_sort Mika Yoshida
title Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
title_short Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
title_full Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
title_fullStr Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
title_full_unstemmed Uncertainty Simulation of Wood Chipping Operation for Bioenergy Based on Queuing Theory
title_sort uncertainty simulation of wood chipping operation for bioenergy based on queuing theory
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2019-09-01
description Managing uncertainty is the way to secure stability of the supply chain. Uncertainty within chipping operation and chip transportation causes production loss. In the wood chip supply chain for bioenergy, operational uncertainty mainly appears in the moisture content of the material, chipping productivity, and the interval of truck arrival. This study theoretically quantified the loss in wood chip production by applying queuing theory and stochastic modelling. As well as the loss in production, the inefficiency was identified as the idling time of chipper and the queuing time of trucks. The aim of this study is to quantify the influence of three uncertainties on wood chip production. This study simulated the daily chip production using a mobile chipper by applying queuing theory and stochastic modelling of three uncertainties. The result was compared with the result of deterministic simulation which did not consider uncertainty. Uncertainty reduced the production by 14% to 27% compared to the production of deterministic simulation. There were trucks scheduled but not used. The cases using small trucks show the largest daily production amount, but their lead time was the longest. The large truck was sensitive to the moisture content of material because of the balance between payload and volumetric capacity. This simulation method can present a possible loss in production amount and enables to evaluate some ways for the loss compensation quantitatively such as outsourcing or storing buffer. For further development, the data about the interval of truck arrival should be collected from fields and analyzed. We must include the other uncertainties causing technical and operator delays.
topic interval of truck arrival
lead time
logistics
moisture content
stochastic modelling
throughput
work in process
url https://www.mdpi.com/1999-4907/10/9/822
work_keys_str_mv AT mikayoshida uncertaintysimulationofwoodchippingoperationforbioenergybasedonqueuingtheory
AT katsuhikotakata uncertaintysimulationofwoodchippingoperationforbioenergybasedonqueuingtheory
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