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Next–Generation Intrusion Detection for Iot evcs: Integrating cnn, lstm, and gru modelsBog'liq mathematics-12-00571Disclaimer/Publisher’s Note:
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Document Outline - Introduction
- Network Intrusion Detection in IoT-Based Vehicle Charging Stations
- Introduction to IoT in Vehicle Charging Stations
- Network Intrusion Detection Systems (NIDS)
- Challenges in IoT-Based EVCS
- Cybersecurity Threats Specific to EVCS
- Role of NIDS in IoT-Based EVCS
- Technological and Scientific Innovations
- Future Directions and Research Opportunities
- Related Work
- Proposed NIDS Framework for IoT-Based EVCS
- NIDS Framework Theory
- Architectural Overview
- Integration of CNN, LSTM, and GRU
- Data Preprocessing
- Evaluation Metrics
- Implementation Details
- Experimental Results
- Binary Classification Results
- Six-Class Classification Results
- Fifteen-Class Classification Results
- Discussion
- Conclusions
- References
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