Assessment of Airport Taxi Dispatching Based on Psychological Account Principle Decision Model — A Case Study of Shanghai pudong Airport


Assessment of Airport Taxi Dispatching Based on Psychological Account Principle Decision Model — A Case Study of Shanghai pudong Airport


Zhong Zheng1*, Yanlin Li2, Qing Xu3, Yun Tang1, Hao Zhang1

1College of Electrical Engineering & New Energy, China Three Gorges University, Yichang, 443002, China. 2College of Science, China Three Gorges University, Yichang, 443002, China. 3College of Foreign Languages, China Three Gorges University, Yichang, 443002, China.


International Journal of Service Science and Management

In this paper, a decision model based on psychological account principle and a queuing theory model based on (M/ M/1) system are established to solve the problem of providing more reasonable choices for airport taxi drivers. Combined with reverse test method, control variable method and other methods to analyze the problem. Taking Shanghai pudong airport as an example, the error coefficient of critical decision value is calculated to be around 0.13, and the model is reasonable. It is concluded that weather has great influence on decision making and seasonal change has little influence on decision making.


Keywords: Psychological account principle; Reverse test; Control variable method

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How to cite this article:
Zhong Zheng, Yanlin Li, Qing Xu, Yun Tang, Hao Zhang. Assessment of Airport Taxi Dispatching Based on Psychological Account Principle Decision Model — A Case Study of Shanghai pudong Airport. International Journal of Service Science and Management, 2020; 3:8. DOI:10.28933/ijssm-2020-02-1005


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