Short-term metro passenger flow forecasting is an essential component of intelligent transportation systems (ITS) and can be applied to optimize the passenger flow organization of a station and offer data support for metro passenger flow early warning and system management. LSTM neural networks have recently achieved remarkable recent in the field of natural language processing (NLP) because they are well suited for learning from experience to predict time series. For this purpose, we propose an empirical mode decomposition (EMD)-based long short-term memory (LSTM) neural network model for predicting short-term metro inbound passenger flow. The EMD algorithm decomposes the original sequential passenger flow into several intrinsic mode funct...
Reliable prediction of short-term passenger flow could greatly support metro authorities’ decision p...
The existing short-term traffic flow prediction models fail to provide precise prediction results an...
IEEE 19th International Conference on Intelligent Transportation Systems, Rio de Janeiro, BRESIL, 01...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
The primary objective of this study is to predict the short-term metro passenger flow using the prop...
Rational use of urban underground space (UUS) and public transportation transfer underground can sol...
The short-term forecast of rail transit is one of the most essential issues in urban intelligent tra...
Accurate prediction of short-term passenger flow is vital for real-time operations control and manag...
To solve the problems of current short-term forecasting methods for metro passenger flow, such as un...
This research paper provides a framework for the efficient representation and analysis of both spati...
The COVID-19 pandemic is a significant public health problem globally, which causes difficulty and t...
Accurate metro ridership prediction can guide passengers in efficiently selecting their departure ti...
A crucial component of multimodal transportation networks and long-distance travel chains is the for...
Short-term forecasting of metro transit passenger flows is of great importance to the urban subway s...
This research introduces a hybrid deep learning approach to perform real-time forecasting of passeng...
Reliable prediction of short-term passenger flow could greatly support metro authorities’ decision p...
The existing short-term traffic flow prediction models fail to provide precise prediction results an...
IEEE 19th International Conference on Intelligent Transportation Systems, Rio de Janeiro, BRESIL, 01...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
The primary objective of this study is to predict the short-term metro passenger flow using the prop...
Rational use of urban underground space (UUS) and public transportation transfer underground can sol...
The short-term forecast of rail transit is one of the most essential issues in urban intelligent tra...
Accurate prediction of short-term passenger flow is vital for real-time operations control and manag...
To solve the problems of current short-term forecasting methods for metro passenger flow, such as un...
This research paper provides a framework for the efficient representation and analysis of both spati...
The COVID-19 pandemic is a significant public health problem globally, which causes difficulty and t...
Accurate metro ridership prediction can guide passengers in efficiently selecting their departure ti...
A crucial component of multimodal transportation networks and long-distance travel chains is the for...
Short-term forecasting of metro transit passenger flows is of great importance to the urban subway s...
This research introduces a hybrid deep learning approach to perform real-time forecasting of passeng...
Reliable prediction of short-term passenger flow could greatly support metro authorities’ decision p...
The existing short-term traffic flow prediction models fail to provide precise prediction results an...
IEEE 19th International Conference on Intelligent Transportation Systems, Rio de Janeiro, BRESIL, 01...