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Federated learning with LSTM for intrusion detection in IoT-based wireless sensor networks: a multi-dataset analysis
by
Salam, Abdu
, Anwar, Raja Waseem
, Abrar, Mohammad
, Ullah, Faizan
in
Access control
/ Algorithms and Analysis of Algorithms
/ Computer Networks and Communications
/ Data privacy
/ Federated learning
/ Internet of Things
/ Intrusion detection
/ IoT
/ LSTM
/ Neural Networks
/ Safety and security measures
/ Security and Privacy
/ Sensors
/ Wireless sensor networks
2025
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Federated learning with LSTM for intrusion detection in IoT-based wireless sensor networks: a multi-dataset analysis
by
Salam, Abdu
, Anwar, Raja Waseem
, Abrar, Mohammad
, Ullah, Faizan
in
Access control
/ Algorithms and Analysis of Algorithms
/ Computer Networks and Communications
/ Data privacy
/ Federated learning
/ Internet of Things
/ Intrusion detection
/ IoT
/ LSTM
/ Neural Networks
/ Safety and security measures
/ Security and Privacy
/ Sensors
/ Wireless sensor networks
2025
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Do you wish to request the book?
Federated learning with LSTM for intrusion detection in IoT-based wireless sensor networks: a multi-dataset analysis
by
Salam, Abdu
, Anwar, Raja Waseem
, Abrar, Mohammad
, Ullah, Faizan
in
Access control
/ Algorithms and Analysis of Algorithms
/ Computer Networks and Communications
/ Data privacy
/ Federated learning
/ Internet of Things
/ Intrusion detection
/ IoT
/ LSTM
/ Neural Networks
/ Safety and security measures
/ Security and Privacy
/ Sensors
/ Wireless sensor networks
2025
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Federated learning with LSTM for intrusion detection in IoT-based wireless sensor networks: a multi-dataset analysis
Journal Article
Federated learning with LSTM for intrusion detection in IoT-based wireless sensor networks: a multi-dataset analysis
2025
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Overview
Intrusion detection in Internet of Things (IoT)-based wireless sensor networks (WSNs) is essential due to their widespread use and inherent vulnerability to security breaches. Traditional centralized intrusion detection systems (IDS) face significant challenges in data privacy, computational efficiency, and scalability, particularly in resource-constrained IoT environments. This study aims to create and assess a federated learning (FL) framework that integrates with long short-term memory (LSTM) networks for efficient intrusion detection in IoT-based WSNs. We design the framework to enhance detection accuracy, minimize false positive rates (FPR), and ensure data privacy, while maintaining system scalability. Using an FL approach, multiple IoT nodes collaboratively train a global LSTM model without exchanging raw data, thereby addressing privacy concerns and improving detection capabilities. The proposed model was tested on three widely used datasets: WSN-DS, CIC-IDS-2017, and UNSW-NB15. The evaluation metrics for its performance included accuracy, F1 score, FPR, and root mean square error (RMSE). We evaluated the performance of the FL-based LSTM model against traditional centralized models, finding significant improvements in intrusion detection. The FL-based LSTM model achieved higher accuracy and a lower FPR across all datasets than centralized models. It effectively managed sequential data in WSNs, ensuring data privacy while maintaining competitive performance, particularly in complex attack scenarios. FL and LSTM networks work well together to make a strong way to find intrusions in IoT-based WSNs, which improves both privacy and detection. This study underscores the potential of FL-based systems to address key challenges in IoT security, including data privacy, scalability, and performance, making the proposed framework suitable for real-world IoT applications.
Publisher
PeerJ. Ltd,PeerJ Inc
Subject
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