Limousine service management: Capacity planning with predictive analytics and optimization
The limousine service in luxury hotels is an integral component of the whole customer journey in the hospitality industry. One of the largest hotels in Singapore manages a fleet of both in-house and outsourced vehicles around the clock, serving 9,000 trips per month on average. The need for vehicles...
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sg-smu-ink.lkcsb_research-80432024-02-19T05:08:58Z Limousine service management: Capacity planning with predictive analytics and optimization LIU, Peng CHEN, Ying TEO, Chung-Piaw The limousine service in luxury hotels is an integral component of the whole customer journey in the hospitality industry. One of the largest hotels in Singapore manages a fleet of both in-house and outsourced vehicles around the clock, serving 9,000 trips per month on average. The need for vehicles may scale up rapidly, especially during special events and festive periods in the country. The excess demand is met by having additional outsourced vehicles on standby, incurring millions of dollars of additional expenses per year for the hotel. Determining the required number of limousines by hour of the day is a challenging service capacity planning problem. In this paper, a recent transformational journey to manage this problem for the hotel is introduced, having driven up to S$3.2 million of savings per year while improving the service level. The approach builds on widely available open-source statistical and spreadsheet optimization tools, along with robotic process automation, to optimize the schedule of the hotel's fleet of limousines and drivers and to support decision making for planners and controllers to cultivate sustained business value. 2021-07-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/lkcsb_research/7044 info:doi/10.1287/inte.2021.1079 https://ink.library.smu.edu.sg/context/lkcsb_research/article/8043/viewcontent/2009.05422.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection Lee Kong Chian School Of Business eng Institutional Knowledge at Singapore Management University demand forecasting scheduling process automation hospitality Finance and Financial Management Operations and Supply Chain Management |
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demand forecasting scheduling process automation hospitality Finance and Financial Management Operations and Supply Chain Management LIU, Peng CHEN, Ying TEO, Chung-Piaw Limousine service management: Capacity planning with predictive analytics and optimization |
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The limousine service in luxury hotels is an integral component of the whole customer journey in the hospitality industry. One of the largest hotels in Singapore manages a fleet of both in-house and outsourced vehicles around the clock, serving 9,000 trips per month on average. The need for vehicles may scale up rapidly, especially during special events and festive periods in the country. The excess demand is met by having additional outsourced vehicles on standby, incurring millions of dollars of additional expenses per year for the hotel. Determining the required number of limousines by hour of the day is a challenging service capacity planning problem. In this paper, a recent transformational journey to manage this problem for the hotel is introduced, having driven up to S$3.2 million of savings per year while improving the service level. The approach builds on widely available open-source statistical and spreadsheet optimization tools, along with robotic process automation, to optimize the schedule of the hotel's fleet of limousines and drivers and to support decision making for planners and controllers to cultivate sustained business value. |
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LIU, Peng CHEN, Ying TEO, Chung-Piaw |
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LIU, Peng CHEN, Ying TEO, Chung-Piaw |
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LIU, Peng |
title |
Limousine service management: Capacity planning with predictive analytics and optimization |
title_short |
Limousine service management: Capacity planning with predictive analytics and optimization |
title_full |
Limousine service management: Capacity planning with predictive analytics and optimization |
title_fullStr |
Limousine service management: Capacity planning with predictive analytics and optimization |
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Limousine service management: Capacity planning with predictive analytics and optimization |
title_sort |
limousine service management: capacity planning with predictive analytics and optimization |
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Institutional Knowledge at Singapore Management University |
publishDate |
2021 |
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https://ink.library.smu.edu.sg/lkcsb_research/7044 https://ink.library.smu.edu.sg/context/lkcsb_research/article/8043/viewcontent/2009.05422.pdf |
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