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http://yadda.icm.edu.pl:80/baztech/element/bwmeta1.element.baztech-bed2cd38-3aee-4c8e-9a55-5028c51511e1

Czasopismo

Archives of Transport

Tytuł artykułu

Evaluating the impact of long cargo dwell time on port performance: an evaluation model of Douala International Terminal in Cameroon

Autorzy Aminatou, M.  Jaqi, Y.  Okyere, S. 
Treść / Zawartość
Warianty tytułu
Języki publikacji EN
Abstrakty
EN Create as part of the concession agreement signed by the Container Terminal 28 June 2004 with the port of Douala international terminal (DIT) Company aims to manage, operate and develop the Port’s container handling activity in Douala. This paper investigates the main factors explaining long container dwell times in Douala Port. Using original and extensive data on container imports in the Port of Douala, it seeks to provide a basic understanding of why containers stay on average more than two weeks in port space while long dwell times are widely recognized as a critical hindrance to economic development. It also demonstrates the interrelationships that exist between logistics performance of consignees, operational performance of port operators and efficiency of customs clearance operations. Shipment level analysis is used to identify the main determinants of long cargo dwell times and the impact of shipment characteristics such as fiscal regime, density of value, bulking and packaging type, last port of call, and region of origin or commodity group on cargo dwell time in ports is tested. External factors, such as performance of clearing and forwarding agents, shippers and shipping line strategies, also play an important role in the determination of long dwell times.
Słowa kluczowe
PL ładunek   czas oczekiwania   nadbrzeże   port   wydajność portu   terminal  
EN cargo   dwell time   quay   port   port performance   terminal operations  
Wydawca Warsaw University of Technology, Faculty of Transport
Czasopismo Archives of Transport
Rocznik 2018
Tom Vol. 46, iss. 2
Strony 7--20
Opis fizyczny Bibliogr. 24 poz., rys., tab.
Twórcy
autor Aminatou, M.
autor Jaqi, Y.
autor Okyere, S.
  • Wuhan University of Technology, School of Transportation, Wuhan, China, stephen.okyere@yahoo.com
  • Kumasi Technical University, Department of Procurement and SCM, Kumasi, Ghana
Bibliografia
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Uwagi
PL
Kolekcja BazTech
Identyfikator YADDA bwmeta1.element.baztech-bed2cd38-3aee-4c8e-9a55-5028c51511e1
Identyfikatory
DOI 10.5604/01.3001.0012.2098