Artificial intelligence algorithms for passenger forecasting at Changi Airport

Explanatory Variables can be provided to best forecast Changi Airport Arrival Passenger Frequencies. These explanatory variables can be Econometric: (GDP/Oil Price/ CPI etc) or they can be other causal time series data like Google Trend Query Frequencies. Explanatory variables that are identified as...

Full description

Saved in:
Bibliographic Details
Main Author: Chan, Li Long
Other Authors: Sameer Alam
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2020
Subjects:
Online Access:https://hdl.handle.net/10356/141138
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-141138
record_format dspace
spelling sg-ntu-dr.10356-1411382023-03-04T19:39:17Z Artificial intelligence algorithms for passenger forecasting at Changi Airport Chan, Li Long Sameer Alam School of Mechanical and Aerospace Engineering sameeralam@ntu.edu.sg Business::Management::Forecasting Engineering::Aeronautical engineering Explanatory Variables can be provided to best forecast Changi Airport Arrival Passenger Frequencies. These explanatory variables can be Econometric: (GDP/Oil Price/ CPI etc) or they can be other causal time series data like Google Trend Query Frequencies. Explanatory variables that are identified as causal can then be used in a Regression Model for forecasting future Arrival Passenger Frequencies. In this Final Year Project, 2 Datasets (Econometric Variables and Google Trend Queries) are used for forecasting Changi Airport Arrival Passenger Frequencies. 27 Econometric Variables and 688 Google Trend Queries were found to be Linearly Granger Causal to Arrival Passenger Frequencies. A further new type of Granger Causality test named Neural Granger Causality, shows consistency in identifying possible non-linear causal explanatory variables (Econometric and Google Trends). 3 types of regression models were compared against each other: Linear Regression, SARIMAX and Neural Networks. The best forecasting model is the Neural Network Forecasting model with Google Trend Queries as explanatory variables. It achieved an R^2 value of 0.89. Neural Network models were also found to possess a “variance-accuracy trade-off” characteristic in the forecasting results and this is highly likely due to the randomised weights initialization at the start of the training. Bachelor of Engineering (Aerospace Engineering) 2020-06-04T06:08:23Z 2020-06-04T06:08:23Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/141138 en B028 application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Business::Management::Forecasting
Engineering::Aeronautical engineering
spellingShingle Business::Management::Forecasting
Engineering::Aeronautical engineering
Chan, Li Long
Artificial intelligence algorithms for passenger forecasting at Changi Airport
description Explanatory Variables can be provided to best forecast Changi Airport Arrival Passenger Frequencies. These explanatory variables can be Econometric: (GDP/Oil Price/ CPI etc) or they can be other causal time series data like Google Trend Query Frequencies. Explanatory variables that are identified as causal can then be used in a Regression Model for forecasting future Arrival Passenger Frequencies. In this Final Year Project, 2 Datasets (Econometric Variables and Google Trend Queries) are used for forecasting Changi Airport Arrival Passenger Frequencies. 27 Econometric Variables and 688 Google Trend Queries were found to be Linearly Granger Causal to Arrival Passenger Frequencies. A further new type of Granger Causality test named Neural Granger Causality, shows consistency in identifying possible non-linear causal explanatory variables (Econometric and Google Trends). 3 types of regression models were compared against each other: Linear Regression, SARIMAX and Neural Networks. The best forecasting model is the Neural Network Forecasting model with Google Trend Queries as explanatory variables. It achieved an R^2 value of 0.89. Neural Network models were also found to possess a “variance-accuracy trade-off” characteristic in the forecasting results and this is highly likely due to the randomised weights initialization at the start of the training.
author2 Sameer Alam
author_facet Sameer Alam
Chan, Li Long
format Final Year Project
author Chan, Li Long
author_sort Chan, Li Long
title Artificial intelligence algorithms for passenger forecasting at Changi Airport
title_short Artificial intelligence algorithms for passenger forecasting at Changi Airport
title_full Artificial intelligence algorithms for passenger forecasting at Changi Airport
title_fullStr Artificial intelligence algorithms for passenger forecasting at Changi Airport
title_full_unstemmed Artificial intelligence algorithms for passenger forecasting at Changi Airport
title_sort artificial intelligence algorithms for passenger forecasting at changi airport
publisher Nanyang Technological University
publishDate 2020
url https://hdl.handle.net/10356/141138
_version_ 1759854272842825728