Treffer: REAL-TIME TRAFFIC ACQUISITION AND FLOW-LEVEL FEATURE EXTRACTION USING A REALTIME-NET FLOW EXTRACTOR (RTNFE)

Title:
REAL-TIME TRAFFIC ACQUISITION AND FLOW-LEVEL FEATURE EXTRACTION USING A REALTIME-NET FLOW EXTRACTOR (RTNFE)
Source:
Lex localis - Journal of Local Self-Government. 23:2131-2143
Publisher Information:
UK Zhende Publishing Limited Company, 2025.
Publication Year:
2025
Document Type:
Fachzeitschrift Article
ISSN:
1855-363X
1581-5374
DOI:
10.52152/801547
Rights:
CC BY NC ND
Accession Number:
edsair.doi...........9ab433a6eb33344f82b1de4c3a8498c0
Database:
OpenAIRE

Weitere Informationen

As cyber threats become more advanced, constantly monitoring network traffic is important for detecting intrusions and stopping them. A new RealTime-NetFlowExtractor (RTNFE) framework was created using Python and combines Scapy, Kafka, and Wireshark through PyShark to read packets in real-time and organize them by flow levels. Because RTNFE has a live-streaming feature and instant buffering, it offers real-time analytics of packets. The features like timestamp, IP addresses of each end, ports, protocol, and counts of bytes and packets, along with flow duration, are all extracted using a parallel, sized sliding window. To simulate real attacks, CICIDS 2018 packets are played back using tcpreplay, which contains both normal and malicious retrieved traffic that is further classified using mathematically modified deep learning technique. Throughput measures the number of packets per second, time to analyze each feature indicates latency, and data concerning packet-to-flow completeness is used for evaluation. According to the outcome, such a system is a good way to perform real-time analytics and can be used in downstream functions such as finding unusual patterns in networks or stopping new attacks.