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Optimisation of key performance measures in air cargo demand management

Optimisation of key performance measures in air cargo demand management
Optimisation of key performance measures in air cargo demand management
This article sought to facilitate the optimisation of key performance measures utilised for demand management in air cargo operations. The focus was on the Revenue Management team at Virgin Atlantic Cargo and a fuzzy group decision-making method was used. Utilising intelligent fuzzy multi-criteria methods, the authors generated a ranking order of ten key outcome-based performance indicators for Virgin Atlantic air cargo Revenue Management. The result of this industry-driven study showed that for Air Cargo Revenue Management, ‘Network Optimisation’ represents a critical outcome-based performance indicator. This collaborative study contributes to existing logistics management literature, especially in the area of Revenue Management, and it seeks to enhance Revenue Management practice. It also provides a platform for Air Cargo operators seeking to improve reliability values for their key performance indicators as a means of enhancing operational monitoring power
1-9
May, Alexander
93c97e43-16f7-43ba-b689-8bb896127ad9
Anslow, Adrian
c4cbd2fe-0f3a-40f6-baf7-6b54228649c9
Ojiako, Udechukwu
ba4aa342-5408-48d7-b71d-8197388bbb80
Wu, Y.
e279101b-b392-45c4-b894-187e2ded6a5c
Marshall, A.
93aa95a2-c707-4807-8eaa-1de3b994b616
Chipulu, M.
12545803-0d1f-4a37-b2d2-f0d21165205e
May, Alexander
93c97e43-16f7-43ba-b689-8bb896127ad9
Anslow, Adrian
c4cbd2fe-0f3a-40f6-baf7-6b54228649c9
Ojiako, Udechukwu
ba4aa342-5408-48d7-b71d-8197388bbb80
Wu, Y.
e279101b-b392-45c4-b894-187e2ded6a5c
Marshall, A.
93aa95a2-c707-4807-8eaa-1de3b994b616
Chipulu, M.
12545803-0d1f-4a37-b2d2-f0d21165205e

May, Alexander, Anslow, Adrian, Ojiako, Udechukwu, Wu, Y., Marshall, A. and Chipulu, M. (2014) Optimisation of key performance measures in air cargo demand management. Journal of Transport and Supply Chain Management, 8 (1), 1-9. (doi:10.4102/jtscm.v8i1.125).

Record type: Article

Abstract

This article sought to facilitate the optimisation of key performance measures utilised for demand management in air cargo operations. The focus was on the Revenue Management team at Virgin Atlantic Cargo and a fuzzy group decision-making method was used. Utilising intelligent fuzzy multi-criteria methods, the authors generated a ranking order of ten key outcome-based performance indicators for Virgin Atlantic air cargo Revenue Management. The result of this industry-driven study showed that for Air Cargo Revenue Management, ‘Network Optimisation’ represents a critical outcome-based performance indicator. This collaborative study contributes to existing logistics management literature, especially in the area of Revenue Management, and it seeks to enhance Revenue Management practice. It also provides a platform for Air Cargo operators seeking to improve reliability values for their key performance indicators as a means of enhancing operational monitoring power

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More information

Published date: 9 April 2014
Organisations: Southampton Business School

Identifiers

Local EPrints ID: 372079
URI: http://eprints.soton.ac.uk/id/eprint/372079
PURE UUID: 31d14861-3f66-414c-aca8-bfa797cf98f3
ORCID for A. Marshall: ORCID iD orcid.org/0000-0002-9789-8042
ORCID for M. Chipulu: ORCID iD orcid.org/0000-0002-0139-6188

Catalogue record

Date deposited: 28 Nov 2014 11:21
Last modified: 15 Mar 2024 03:33

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Contributors

Author: Alexander May
Author: Adrian Anslow
Author: Udechukwu Ojiako
Author: Y. Wu ORCID iD
Author: A. Marshall ORCID iD
Author: M. Chipulu ORCID iD

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