In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to provide more favorable assistance to port planning and traffic management, the accuracy of port ship traffic volume prediction is very important. In this paper, genetic algorithm and wavelet analysis and neural network are used to construct the genetic wavelet neural network model prediction model, and BP neural network prediction model is established. The ship volume of Jiujiang Port is used as experimental data to simulate and analyze. The results show that the prediction accuracy of the genetic wavelet neural network prediction model is significantly higher than that of the BP neural network prediction model. It is proved that the genetic wav...
Stock market is a highly volatile domain. Actually, it has always been a challenge to researchers ov...
Real-time traffic flow forecasting is the core of Intelligent Transportation System (ITS), and the f...
A wavelet neural network with time delay is proposed based on nonlinear autoregressive model with ex...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
Water transportation is an important part of comprehensive transportation and plays a critical role ...
This paper discusses the distribution regularity of ship arrival and departure and the method of pre...
AbstractFor better accurate forecasting of port throughput, a back propagation neural network model ...
This paper takes the time series of short-term traffic flow as research object. The delay time and e...
Research on sediment flux from river to the sea is a frontier topic in Earth science worldwide. This...
The sedimentation problem is one of the critical issues affecting the long-term use of rivers, and t...
Abstract—In order to improve the performance of network traffic prediction model, a novel network tr...
Railway freight transportation is an important part of the national economy. The accurate forecast o...
Network traffic flow prediction model is fundamental to the network performance evaluation and the d...
Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic con...
In recent years, more and more people choose to travel by bus to save time and economic costs, but t...
Stock market is a highly volatile domain. Actually, it has always been a challenge to researchers ov...
Real-time traffic flow forecasting is the core of Intelligent Transportation System (ITS), and the f...
A wavelet neural network with time delay is proposed based on nonlinear autoregressive model with ex...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
Water transportation is an important part of comprehensive transportation and plays a critical role ...
This paper discusses the distribution regularity of ship arrival and departure and the method of pre...
AbstractFor better accurate forecasting of port throughput, a back propagation neural network model ...
This paper takes the time series of short-term traffic flow as research object. The delay time and e...
Research on sediment flux from river to the sea is a frontier topic in Earth science worldwide. This...
The sedimentation problem is one of the critical issues affecting the long-term use of rivers, and t...
Abstract—In order to improve the performance of network traffic prediction model, a novel network tr...
Railway freight transportation is an important part of the national economy. The accurate forecast o...
Network traffic flow prediction model is fundamental to the network performance evaluation and the d...
Ship position prediction is the key to inland river and sea navigation warning. Maritime traffic con...
In recent years, more and more people choose to travel by bus to save time and economic costs, but t...
Stock market is a highly volatile domain. Actually, it has always been a challenge to researchers ov...
Real-time traffic flow forecasting is the core of Intelligent Transportation System (ITS), and the f...
A wavelet neural network with time delay is proposed based on nonlinear autoregressive model with ex...