Time series network traffic analysis and forecasting are important for fundamental to many decision-making processes, also to understand network performance, reliability and security, as well as to identify potential problems. This paper provides the latest work on London South Bank University (LSBU) network data traffic analysis by adapting nonlinear autoregressive exogenous model (NARX) based on Levenberg-Marquardt backpropagation algorithm. This technique can analyse and predict data usage in its current and future states, as well as visualise the hourly, daily, weekly, monthly, and quarterly activities with less computation requirement. Results and analysis proved the accuracy of the prediction techniques
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The technology of computing and network communication is undergoing rapid development, leading to in...
In a wireless network environment accurate and timely estimation or prediction of network traffic ha...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
This research work focuses on looking into the educational network data traffic with the view to und...
A time-series data analysis and prediction tool for learning the network traffic usage data is very ...
An artificial neural network (ANN) can improve forecasts through pattern recognition of historical d...
This paper presents an approach for predicting daily network traffic using artificial neural network...
Access to information is now growing in line with the increasing demand for data traffic. One part o...
An application of time series prediction, to traffic forecasting in ATM networks, using neural nets ...
The main aim of the intelligent transportation systems is the ability to accurately predict traffic...
Network traffic prediction (NTP) represents an essential component in planning large-scale networks ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The technology of computing and network communication is undergoing rapid development, leading to in...
In a wireless network environment accurate and timely estimation or prediction of network traffic ha...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
This research work focuses on looking into the educational network data traffic with the view to und...
A time-series data analysis and prediction tool for learning the network traffic usage data is very ...
An artificial neural network (ANN) can improve forecasts through pattern recognition of historical d...
This paper presents an approach for predicting daily network traffic using artificial neural network...
Access to information is now growing in line with the increasing demand for data traffic. One part o...
An application of time series prediction, to traffic forecasting in ATM networks, using neural nets ...
The main aim of the intelligent transportation systems is the ability to accurately predict traffic...
Network traffic prediction (NTP) represents an essential component in planning large-scale networks ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The technology of computing and network communication is undergoing rapid development, leading to in...
In a wireless network environment accurate and timely estimation or prediction of network traffic ha...