Forecasting for airline network revenue management : revenue and competitive impacts

Includes bibliographical references (p. 137-138)

Bibliographic Details
Main Author: Zickus, Jeffrey S.
Other Authors: Massachusetts Institute of Technology. Flight Transportation Laboratory
Format: Technical Report
Published: Cambridge, Mass. : Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, Flight Transportation Laboratory, [1998] 2012
Subjects:
Online Access:http://hdl.handle.net/1721.1/68154
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author Zickus, Jeffrey S.
author2 Massachusetts Institute of Technology. Flight Transportation Laboratory
author_facet Massachusetts Institute of Technology. Flight Transportation Laboratory
Zickus, Jeffrey S.
author_sort Zickus, Jeffrey S.
collection MIT
description Includes bibliographical references (p. 137-138)
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institution Massachusetts Institute of Technology
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spelling mit-1721.1/681542019-04-10T23:33:01Z Forecasting for airline network revenue management : revenue and competitive impacts Zickus, Jeffrey S. Massachusetts Institute of Technology. Flight Transportation Laboratory Airlines Revenue management Management Includes bibliographical references (p. 137-138) Airline revenue management entails protecting enough seats for late-booking, high-fare passengers while still selling seats which would have otherwise gone empty at discounted fares to earlier-booking customers. In the evolution of revenue management to network origin-destination control, previous research has shown that revenue gains of some seat optimization algorithms can be much lower than others. One possible reason is the process by which demand estimates are generated; namely, forecasting and detruncation. Forecasting is used to estimate passenger demand based on historical flight data, while detruncation makes projections of what demand would have been in cases where the historical data has been constrained by a capacity limitation. This thesis explores the question of the interaction between forecasting methods, detruncation methods, and seat optimization algorithms on a simulated airline network, using the Passenger Origin-Destination Simulator (PODS) revenue management simulation tool, which models a network environment with two competing airlines. Changes in the forecasting and detruncation methods in combination with the seat optimization algorithms were tested in order to see what revenue impacts resulted. Additionally, passenger loads, forecasts, and fare class availability were examined to understand the reasons behind the observed revenue results. The simulations showed that seat optimizers which had relatively poor performance using a standard forecasting and detruncation method had substantial revenue increases when different forecasting and detruncation combinations were implemented. The results also indicate that the better combination of forecasting and detruncation causes higher revenues for all seat optimization methods tested, as a better passenger mix is realized due to higher levels of detruncation and more accurate forecasts. However, the sensitivity of the seat optimizers to the forecasting and detruncation methods remains mixed. Inferior detruncation (or forecasting) methods on a network can offset the revenue gains resulting from improvement to origin-destination control from leg-based control for some seat optimization algorithms. 2012-01-06T22:51:37Z 2012-01-06T22:51:37Z 1998 Technical Report 663476228 http://hdl.handle.net/1721.1/68154 FTL report (Massachusetts Institute of Technology. Flight Transportation Laboratory) ; R98-4 138 p application/pdf Cambridge, Mass. : Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, Flight Transportation Laboratory, [1998]
spellingShingle Airlines
Revenue management
Management
Zickus, Jeffrey S.
Forecasting for airline network revenue management : revenue and competitive impacts
title Forecasting for airline network revenue management : revenue and competitive impacts
title_full Forecasting for airline network revenue management : revenue and competitive impacts
title_fullStr Forecasting for airline network revenue management : revenue and competitive impacts
title_full_unstemmed Forecasting for airline network revenue management : revenue and competitive impacts
title_short Forecasting for airline network revenue management : revenue and competitive impacts
title_sort forecasting for airline network revenue management revenue and competitive impacts
topic Airlines
Revenue management
Management
url http://hdl.handle.net/1721.1/68154
work_keys_str_mv AT zickusjeffreys forecastingforairlinenetworkrevenuemanagementrevenueandcompetitiveimpacts