| [1]杨心怡, 池亚平, 王志强. 基于多层Sketch的SDN网络流量测量技术研究[J]. 信息安全研究, 2024, 10(9): 840848[2]叶鑫豪, 周纯杰, 朱美潘, 等. DDoS攻击下基于SDN的工业控制系统边云协同信息安全防护方法[J]. 信息安全研究, 2021, 7(9): 861870[3]付钰, 王坤, 段雪源, 等. 面向软件定义网络的异常流量检测研究综述[J]. 通信学报, 2024, 45(3): 208226[4]Kalkan K, Altay L, Gur G, et al. JESS: Joint entropybased DDoS defense scheme in SDN[J]. IEEE Journal on Selected Areas in Communications, 2018, 36(10): 23582372[5]Tang D, Wang X, Yan Y, et al. ADMS: An online attack detection and mitigation system for LDoS attacks via SDN[J]. Computer Communications, 2022, 181: 454471[6]Phan T V, Nguyen T G, Dao N N, et al. DeepGuard: Efficient anomaly detection in SDN with finegrained traffic flow monitoring[J]. IEEE Trans on Network and Service Management, 2020, 17(3): 13491362[7]Assis M V, Carvalho L F, Lloret J, et al. A GRU deep learning system against attacks in software defined networks[J]. Network and Computer Applications, 2021, 177: 113[8]Novaes M P, Carvalho L F, Lloret J, et al. Adversarial deep learning approach detection and defense against DDoS attacks in SDN environments[J]. Future Generation Computer Systems, 2021, 125: 156167[9]Zhang P, He F, Zhang H, et al. Realtime malicious traffic detection with online isolation forest over SDWAN[J]. IEEE Trans on Information Forensics and Security, 2023, 18: 20762090[10]Wang P, Wang Z, Ye F, et al. ByteSGAN: A semisupervised generative adversarial network for encrypted traffic classification in SDN Edge Gateway[J]. Computer Networks, 2021, 200: 108535[11]Liu Z, Mao J, Zeng J, et al. ProvGuard: Detecting SDN control policy manipulation via contextual semantics of provenance graphs[C] Proc of the Network and Distributed System Security (NDSS). San Diego, CA: Internet Society, 2025: 117[12]Elsayed M S, LeKhac N A, Jurcut A D. InSDN: A novel SDN intrusion dataset[J]. IEEE Access, 2020, 8: 165263165284[13]Roy B, Cheung H. A deep learning approach for intrusion detection in Internet of things using bidirectional long shortterm memory recurrent neural network[C] Proc of the 28th Int Telecommunication Networks and Applications Conference (ITNAC). Piscataway, NJ: IEEE, 2018: 16[14]Chen J, Yin S, Cai S, et al. An efficient network intrusion detection model based on temporal convolutional networks[C] Proc of the 21st IEEE Int Conf on Software Quality, Reliability and Security. Piscataway, NJ: IEEE, 2021: 768775[15]Chen J, Lv T, Cai S, et al. A novel detection model for abnormal network traffic based on bidirectional temporal convolutional network[J]. Information and Software Technology, 2023, 157: 107166 |