Javascript must be enabled to continue!
Research on Network Traffic Protocol Classification Based on CNN-LSTM Model
View through CrossRef
Network traffic analysis is essential for network security and performance optimization, yet classifying network traffic protocols remains a challenge. This study improves the classification and prediction of unknown network traffic protocols. By collecting and analyzing extensive traffic data we examine the correlation between traffic characteristics and protocol types.We introduce a CNN-LSTM model that integrates Convolutional Neural Networks (CNN) for local perception and weight sharing, and Long Short-Term Memory (LSTM) networks for temporal sequence modeling, which improves the accuracy of protocol classification. Experiments show that the CNN-LSTM model outperforms other models in terms of accuracy and F1 score. With feature selection, the accuracy reaches 0.981; while with raw features, both accuracy and F1 score reach 0.956. In contrast, standalone LSTM and CNN models show weaker performance and are more sensitive to changes in the number of features.This study validates the effectiveness of the CNN-LSTM model for network traffic protocol classification, and provides insights for future research. Future studies may explore ways to optimize the model structure and feature processing to cope with more complex network environment and traffic data.
Academic Frontiers Publishing Group
Title: Research on Network Traffic Protocol Classification Based on CNN-LSTM Model
Description:
Network traffic analysis is essential for network security and performance optimization, yet classifying network traffic protocols remains a challenge.
This study improves the classification and prediction of unknown network traffic protocols.
By collecting and analyzing extensive traffic data we examine the correlation between traffic characteristics and protocol types.
We introduce a CNN-LSTM model that integrates Convolutional Neural Networks (CNN) for local perception and weight sharing, and Long Short-Term Memory (LSTM) networks for temporal sequence modeling, which improves the accuracy of protocol classification.
Experiments show that the CNN-LSTM model outperforms other models in terms of accuracy and F1 score.
With feature selection, the accuracy reaches 0.
981; while with raw features, both accuracy and F1 score reach 0.
956.
In contrast, standalone LSTM and CNN models show weaker performance and are more sensitive to changes in the number of features.
This study validates the effectiveness of the CNN-LSTM model for network traffic protocol classification, and provides insights for future research.
Future studies may explore ways to optimize the model structure and feature processing to cope with more complex network environment and traffic data.
Related Results
Traffic Prediction in 5G Networks Using Machine Learning
Traffic Prediction in 5G Networks Using Machine Learning
The advent of 5G technology promises a paradigm shift in the realm of
telecommunications, offering unprecedented speeds and connectivity. However, the
...
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
The increasing complexity of urban transportation systems and the growing volume of vehicles have made traffic congestion a persistent challenge in modern cities. Efficient traffic...
A Traffic Flow Prediction Method Based on Blockchain and Federated Learning
A Traffic Flow Prediction Method Based on Blockchain and Federated Learning
Abstract
Traffic flow prediction is the an important issue in the field of intelligent transportation, and real-time and accurate traffic flow prediction plays a crucial ro...
Prediction of COVID-19 Data Using an ARIMA-LSTM Hybrid Forecast Model
Prediction of COVID-19 Data Using an ARIMA-LSTM Hybrid Forecast Model
The purpose of this study is to study the spread of COVID-19, establish a predictive model, and provide guidance for its prevention and control. Considering the high complexity of ...
Combination Approach of LSTM and CNN in Solar Energy Production Prediction
Combination Approach of LSTM and CNN in Solar Energy Production Prediction
Introduction: The growing demand for cleaner energy alternatives has led to a significant increase in solar photovoltaic (PV) installations. However, the integration of solar energ...
Network Traffic Prediction Performance Using
LSTM
Network Traffic Prediction Performance Using
LSTM
As networks expand to support various applications involving text, audio,
video, and images, data traffic increases correspondingly. Traffic classification, which identifies the or...
Trustworthy Deep Learning for Encrypted Traffic Classification
Trustworthy Deep Learning for Encrypted Traffic Classification
Abstract
Network traffic classification refers to the identification of collected network traffic data of various applications, which is widely used in research fields such...
High-precision blood glucose prediction and hypoglycemia warning based on the LSTM-GRU model
High-precision blood glucose prediction and hypoglycemia warning based on the LSTM-GRU model
Objective: The performance of blood glucose prediction and hypoglycemia warning based on the LSTM-GRU (Long Short Term Memory - Gated Recurrent Unit) model was evaluated. Methods: ...

