Give and Take: Federated Transfer Learning for Industrial IoT Network
Intrusion Detection
- URL: http://arxiv.org/abs/2310.07354v1
- Date: Wed, 11 Oct 2023 10:11:54 GMT
- Title: Give and Take: Federated Transfer Learning for Industrial IoT Network
Intrusion Detection
- Authors: Lochana Telugu Rajesh, Tapadhir Das, Raj Mani Shukla, and Shamik
Sengupta
- Abstract summary: We propose a federated transfer learning (FTL) approach to perform IIoT network intrusion detection.
As part of the research, we also propose a combinational neural network as the centerpiece for performing FTL.
Results showcase high performance for the FTL setup between iterations on both the IIoT clients and the server.
- Score: 3.7498611358320733
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rapid growth in Internet of Things (IoT) technology has become an
integral part of today's industries forming the Industrial IoT (IIoT)
initiative, where industries are leveraging IoT to improve communication and
connectivity via emerging solutions like data analytics and cloud computing.
Unfortunately, the rapid use of IoT has made it an attractive target for
cybercriminals. Therefore, protecting these systems is of utmost importance. In
this paper, we propose a federated transfer learning (FTL) approach to perform
IIoT network intrusion detection. As part of the research, we also propose a
combinational neural network as the centerpiece for performing FTL. The
proposed technique splits IoT data between the client and server devices to
generate corresponding models, and the weights of the client models are
combined to update the server model. Results showcase high performance for the
FTL setup between iterations on both the IIoT clients and the server.
Additionally, the proposed FTL setup achieves better overall performance than
contemporary machine learning algorithms at performing network intrusion
detection.
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