基于深度Maxout网络的无线传感器网络移动Sink放置能量预测

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chamandeep Kaur, S. M. Hassen, Mawahib Sharafeldin Adam Boush, Harishchander Anandaram
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引用次数: 1

摘要

在无线传感器网络(WSN)中,通常使用许多具有成本效益且能量受限的传感器节点。在典型的无线传感器网络中,单个基站(BS)从整个网络收集信息,这会导致延迟、网络故障和拥塞等问题。过高的能量消耗比例以及能量洞限制会显著降低系统的整体性能和网络寿命,这是由于靠近BS的传感器节点消耗更多的能量。为了解决这个问题,确定移动汇聚节点的最佳位置至关重要,这样可以最大限度地减少功耗,从而延长网络的使用寿命。在这项工作中,设计并开发了一种有效的策略,使用基于深度学习的能量预测和邻接单元评分模型,考虑距离、估计能量和公平性等因素来检测移动sink的位置。此外,利用深度最大输出网络(Deep Maxout Network, DMN)确定了预测能量。基于邻接小区评分+深度Maxout网络的最小距离为137.364,最大剩余能量为30.903,最大标准化公平性为64.426,最大网络持续时间为60,最大标准化吞吐量为60.613。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Prediction for Mobile Sink Placement by Deep Maxout Network in WSN
In a Wireless Sensor Network (WSN), Numerous cost-effective and energy-constrained sensor nodes are typically used. In a typical Wireless Sensor Network, a single Base Station (BS) gathers information from the whole network, which contributes to concerns including latency, network failure, and congestion. The overwhelming proportion of energy consumption, as well as the energy hole limitation, significantly degrades the overall system performance and network lifetime, which is owing to the sensor nodes that are near the BS consuming more energy. To tackle this problem, it’s essential to determine the perfect spot for mobile sink nodes, which minimizes the power consumed and so increases the network's lifespan. In this work, an effective strategy is designed and developed to detect the location of a mobile sink considering factors such as distance, estimated energy, and fairness, using Deep learning-based energy prediction with an adjacency cell score model. In addition, the predicted energy is determined by employing the Deep Maxout Network (DMN). However, a Minimum distance of 137.364, maximal residual energy of 30.903, maximum standardized fairness of 64.426, maximum network duration of 60, and maximum standardized throughput of 60.613 was obtained using the proposed adjacency-based cell score + Deep Maxout Network.
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来源期刊
Journal of Advances in Information Technology
Journal of Advances in Information Technology Computer Science-Information Systems
CiteScore
4.20
自引率
20.00%
发文量
46
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