AbstractA non-linear model is proposed for predicting the rate of passenger flow in a transit system, and its chaotic characteristic is observed. Using wavelets analysis, the passenger flow data for a whole day are decomposed in a multi-scale way to obtain decomposition sequences. Subsequently, a neural network approach is used to predict the sequences. Finally the passenger flow value can be predicted when the predicted sequences are reconstructed. Results show that the present approach is a feasible method for passenger flow prediction
A prediction algorithm for traffic flow prediction of BP neural based on Differential Evolution(DE) ...
Traffic flow prediction is an integral part of an intelligent transportation system and thus fundame...
Buses, as the most commonly used public transport, play a significant role in cities. Predicting bus...
Currently, deep learning has been successfully applied in many fields and achieved amazing results. ...
Accurate forecasting of short-term passenger flow has been one of the most important issues in urban...
To exactly forecast the urban rail transit passenger flow, a multi-level model combining neural netw...
Passenger flow prediction is important for the operation, management, efficiency, and reliability of...
In recent years, more and more people choose to travel by bus to save time and economic costs, but t...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
In order to meet the real-time public travel demands, the bus operators need to adjust the timetable...
Real-time traffic flow forecasting is the core of Intelligent Transportation System (ITS), and the f...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
The prediction and control of passenger flow in scenic spots is very important to the traffic manage...
Predicting short-term passenger flow accurately is of great significance for daily management and fo...
Traffic flow prediction is a basic function of Intelligent Trans-portation System. Due to the comple...
A prediction algorithm for traffic flow prediction of BP neural based on Differential Evolution(DE) ...
Traffic flow prediction is an integral part of an intelligent transportation system and thus fundame...
Buses, as the most commonly used public transport, play a significant role in cities. Predicting bus...
Currently, deep learning has been successfully applied in many fields and achieved amazing results. ...
Accurate forecasting of short-term passenger flow has been one of the most important issues in urban...
To exactly forecast the urban rail transit passenger flow, a multi-level model combining neural netw...
Passenger flow prediction is important for the operation, management, efficiency, and reliability of...
In recent years, more and more people choose to travel by bus to save time and economic costs, but t...
Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Sy...
In order to meet the real-time public travel demands, the bus operators need to adjust the timetable...
Real-time traffic flow forecasting is the core of Intelligent Transportation System (ITS), and the f...
Short-term passenger flow forecasting is a vital component of transportation systems. The forecasti...
The prediction and control of passenger flow in scenic spots is very important to the traffic manage...
Predicting short-term passenger flow accurately is of great significance for daily management and fo...
Traffic flow prediction is a basic function of Intelligent Trans-portation System. Due to the comple...
A prediction algorithm for traffic flow prediction of BP neural based on Differential Evolution(DE) ...
Traffic flow prediction is an integral part of an intelligent transportation system and thus fundame...
Buses, as the most commonly used public transport, play a significant role in cities. Predicting bus...