Abstract

In recent years, the infrastructure of Wireless Internet of Sensor Networks (WIoSNs) has been more complicated owing to developments in the internet and devices’ connectivity. To effectively prepare, control, hold and optimize wireless sensor networks, a better assessment needs to be conducted. The field of artificial intelligence has made a great deal of progress with deep learning systems and these techniques have been used for data analysis. This study investigates the methodology of Real Time Sequential Deep Extreme Learning Machine (RTS-DELM) implemented to wireless Internet of Things (IoT) enabled sensor networks for the detection of any intrusion activity. Data fusion is a well-known methodology that can be beneficial for the improvement of data accuracy, as well as for the maximizing of wireless sensor networks lifespan. We also suggested an approach that not only makes the casting of parallel data fusion network but also render their computations more effective. By using the Real Time Sequential Deep Extreme Learning Machine (RTS-DELM) methodology, an excessive degree of reliability with a minimal error rate of any intrusion activity in wireless sensor networks is accomplished. Simulation results show that wireless sensor networks are optimized effectively to monitor and detect any malicious or intrusion activity through this proposed approach. Eventually, threats and a more general outlook are explored.

Highlights

  • Today’s network environments have become more and more heterogeneous, and we must configure network flow and monitor a larger variety of devices [1]

  • This study investigates the methodology of Real Time Sequential Deep Extreme Learning Machine (RTS-DELM) implemented to wireless Internet of Things (IoT) enabled sensor networks for the detection of any intrusion activity

  • (c) Simulation results have shown that the suggested fused data based Real-Time Deep Extreme Learning Machine (RTS-DELM) framework is better as compare to other algorithms in terms of accuracy and miss rate such as support vector machine [48], selforganization map [49], artificial neural network-based intrusion detection system [50], discriminative multinomial naïve bayes [51] and Generative adversarial networks (GANs) [52]

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Summary

Introduction

Today’s network environments have become more and more heterogeneous, and we must configure network flow and monitor a larger variety of devices [1]. The Real-Time Deep Extreme Learning Machine (RTS-DELM) approach would be used to make wireless sensor networks more stable and perform better. By collecting and tracking network status and initialization data in addition to packet and flow size data, the centralized controller has an overall assessment of the network For these purposes, it is necessary and effective to incorporate Wireless Sensor Networks (WSNs) machine learning techniques. Using machine-learning algorithms, Wireless Sensor Networks (WSNs) technology enables the application of advanced system integration (for example, setup and resource allocation) in real-time on the network [18]. In the training and testing of intrusion detection in Wireless Sensor Networks (WSNs) optimization with real-time deep extreme learning machine, a fused dataset (NSL-KDD and KDD CUP 99) with 47840 data samples are analyzed, so that every instance has specific and varied features.

Related Work
Proposed System Model
Results and Discussion
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