Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network

The paper herein presents green p-median problem (GMP) which uses the adaptive type-2 neural network for the processing of environmental and sociological parameters including costs of logistics operators and demonstrates the influence of these parameters on planning the location for the city logisti...

Full description

Bibliographic Details
Main Authors: Dragan Pamučar, Ljubislav Vasin, Predrag Atanasković, Milica Miličić
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2016/6972818
id doaj-177f1bc7b5ec4156ac1b95bf6a9f1636
record_format Article
spelling doaj-177f1bc7b5ec4156ac1b95bf6a9f16362020-11-24T21:58:16ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732016-01-01201610.1155/2016/69728186972818Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy NetworkDragan Pamučar0Ljubislav Vasin1Predrag Atanasković2Milica Miličić3Department of Logistics, University of Defence in Belgrade, Pavla Jurisica Sturma 33, 11000 Belgrade, SerbiaDepartment of Logistics, University of Defence in Belgrade, Pavla Jurisica Sturma 33, 11000 Belgrade, SerbiaFaculty of Technical Science, University of Novi Sad, Dositeja Obradovića 6, 21 000 Novi Sad, SerbiaFaculty of Technical Science, University of Novi Sad, Dositeja Obradovića 6, 21 000 Novi Sad, SerbiaThe paper herein presents green p-median problem (GMP) which uses the adaptive type-2 neural network for the processing of environmental and sociological parameters including costs of logistics operators and demonstrates the influence of these parameters on planning the location for the city logistics terminal (CLT) within the discrete network. CLT shows direct effects on increment of traffic volume especially in urban areas, which further results in negative environmental effects such as air pollution and noise as well as increased number of urban populations suffering from bronchitis, asthma, and similar respiratory infections. By applying the green p-median model (GMM), negative effects on environment and health in urban areas caused by delivery vehicles may be reduced to minimum. This model creates real possibilities for making the proper investment decisions so as profitable investments may be realized in the field of transport infrastructure. The paper herein also includes testing of GMM in real conditions on four CLT locations in Belgrade City zone.http://dx.doi.org/10.1155/2016/6972818
collection DOAJ
language English
format Article
sources DOAJ
author Dragan Pamučar
Ljubislav Vasin
Predrag Atanasković
Milica Miličić
spellingShingle Dragan Pamučar
Ljubislav Vasin
Predrag Atanasković
Milica Miličić
Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
Computational Intelligence and Neuroscience
author_facet Dragan Pamučar
Ljubislav Vasin
Predrag Atanasković
Milica Miličić
author_sort Dragan Pamučar
title Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
title_short Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
title_full Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
title_fullStr Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
title_full_unstemmed Planning the City Logistics Terminal Location by Applying the Green p-Median Model and Type-2 Neurofuzzy Network
title_sort planning the city logistics terminal location by applying the green p-median model and type-2 neurofuzzy network
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2016-01-01
description The paper herein presents green p-median problem (GMP) which uses the adaptive type-2 neural network for the processing of environmental and sociological parameters including costs of logistics operators and demonstrates the influence of these parameters on planning the location for the city logistics terminal (CLT) within the discrete network. CLT shows direct effects on increment of traffic volume especially in urban areas, which further results in negative environmental effects such as air pollution and noise as well as increased number of urban populations suffering from bronchitis, asthma, and similar respiratory infections. By applying the green p-median model (GMM), negative effects on environment and health in urban areas caused by delivery vehicles may be reduced to minimum. This model creates real possibilities for making the proper investment decisions so as profitable investments may be realized in the field of transport infrastructure. The paper herein also includes testing of GMM in real conditions on four CLT locations in Belgrade City zone.
url http://dx.doi.org/10.1155/2016/6972818
work_keys_str_mv AT draganpamucar planningthecitylogisticsterminallocationbyapplyingthegreenpmedianmodelandtype2neurofuzzynetwork
AT ljubislavvasin planningthecitylogisticsterminallocationbyapplyingthegreenpmedianmodelandtype2neurofuzzynetwork
AT predragatanaskovic planningthecitylogisticsterminallocationbyapplyingthegreenpmedianmodelandtype2neurofuzzynetwork
AT milicamilicic planningthecitylogisticsterminallocationbyapplyingthegreenpmedianmodelandtype2neurofuzzynetwork
_version_ 1725852766088200192