NILGApr 19, 2020

A supervised active learning method for identifying critical nodes in Wireless Sensor Network

arXiv:2004.08885v41 citations
AI Analysis

This addresses energy efficiency and computational costs in wireless sensor networks, but it appears incremental as it builds on existing active learning and clustering techniques.

The paper tackles the computational overhead of identifying critical nodes in wireless sensor networks by proposing an active learning method that reduces data requirements and increases accuracy, showing flexibility for large-scale environments like 5G and IoT.

Energy Efficiency of a wireless sensor network (WSN) relies on its main characteristics, including hop-number, user's location, allocated power, and relay. Identifying nodes, which have more impact on these characteristics, is, however, subject to a substantial computational overhead and energy consumption. In this paper, we proposed an active learning approach to address the computational overhead of identifying critical nodes in a WSN. The proposed approach can overcome biasing in identifying non-critical nodes and needs much less effort in fine-tuning to adapt to the dynamic nature of WSN. This method benefits from the cooperation of clustering and classification modules to iteratively decrease the required number of data in a typical supervised learning scenario and to increase the accuracy in the presence of uninformative examples, i.e., non-critical nodes. Experiments show that the proposed method has more flexibility, compared to the state-of-the-art, to be employed in large scale WSN environments, the fifth-generation mobile networks (5G), and massively distributed IoT (i.e., sensor networks), where it can prolong the network lifetime.

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