Hybrid ResNet-1D-BiGRU with Multi-Head Attention for Cyberattack Detection in Industrial IoT Environments

arXiv cs.CV / 4/9/2026

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Key Points

  • 本研究は、Industrial IoT向けの侵入検知に向けてResNet-1DとBiGRUにMulti-Head Attention(MHA)を組み合わせたハイブリッド深層学習モデルを提案している。
  • SMOTEによりクラス不均衡を緩和し、EdgeHoTsetで高精度(98.71%)かつ低損失と極めて短い推論遅延(0.0001秒/インスタンス)を実現している。
  • CICIoV2024でも99.99%精度、F1スコア良好、FPR 0%を含む性能が報告され、汎化性能と実時間性の両面で有効性が示されている。
  • 提案手法は既存手法より全指標・複数データセットで優位であり、IIoTのリアルタイム侵入検知に適した堅牢性を持つと結論づけている。

Abstract

This study introduces a hybrid deep learning model for intrusion detection in Industrial IoT (IIoT) systems, combining ResNet-1D, BiGRU, and Multi-Head Attention (MHA) for effective spatial-temporal feature extraction and attention-based feature weighting. To address class imbalance, SMOTE was applied during training on the EdgeHoTset dataset. The model achieved 98.71% accuracy, a loss of 0.0417%, and low inference latency (0.0001 sec /instance), demonstrating strong real-time capability. To assess generalizability, the model was also tested on the CICIoV2024 dataset, where it reached 99.99% accuracy and F1-score, with a loss of 0.0028, 0 % FPR, and 0.00014 sec/instance inference time. Across all metrics and datasets, the proposed model outperformed existing methods, confirming its robustness and effectiveness for real-time IoT intrusion detection.