基于梯度增强回归多元人工鱼群的智能环境下物联网无线传感器网络数据采集

S. S, Reham R. Mostafa, M. Bannany, A. Khedr
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引用次数: 1

摘要

新兴的基于物联网(IoT)的无线传感器网络(WSN)由小型传感器节点组成,用于监测和收集环境条件数据,并通过互联网传输给其他传感器。无线传感器网络的主要问题是能量约束,它降低了无线传感器网络的有效功能和寿命。为此,提出了一种梯度增强折棒回归多元人工鱼群优化数据采集技术(GEBRMAFSODC)。GEBRMAFSODC技术的主要目标是以较小的延迟和数据丢失来执行节能的数据收集。智慧城市提高了包括公共交通服务在内的不同应用的效率。该方法在搜索空间中随机初始化资源效率最优路径和人工鱼种群(即传感器节点)。对于每个节点,适应度的测量依赖于多变量函数,即能量、带宽和距离。将梯度增强断棒回归应用于适应度估计,对资源进行分析,寻找最优结果。选择高效的相邻节点,通过最优路径将采集到的数据传输到汇聚节点。汇聚节点作为数据收集器,具有较好的资源传感器节点,延迟较小。利用Warrigal Dataset在NS2模拟器上进行仿真,通过能耗、数据采集延迟、吞吐量、基于数据量的数据损失率等参数对性能进行分析。实验结果表明,所提出的GEBRMAFSODC技术性能优越,与其他相关方法相比,其传输率、吞吐量分别提高了10%、48%,损耗、延迟和能耗分别降低了53%、37%和27%。
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Gradient Enhanced Regressive Multivariate Artificial Fish Swarm Optimized Data Collection for IoT-Enabled WSN in Smart Environments
The emerging Internet of Things (IoT)-based Wireless Sensor Networks (WSN) consist of small size of sensor nodes for monitoring and collecting data from environmental conditions and it transmits to other sensors through the internet. The major issues in WSN are energy constraints that degrade the efficient functioning and lifetime of WSN. Therefore, a novel technique called Gradient Enhanced Broken-stick Regressive Multivariate Artificial Fish Swarm Optimized Data Collection (GEBRMAFSODC) is introduced. The main objective of the GEBRMAFSODC technique for performing energy-efficient data collection with lesser delay , data loss. Smart cities improve effectiveness of different applications including public transport services. By applying this method, the resource efficient optimal path and the population of artificial fishes (i.e. sensor nodes) is randomly initialized in the search space. For each node, fitness is measured depend on multivariate function namely energy, bandwidth, and distance. The Gradient Enhanced Broken-stick Regression is applied to fitness estimation for analyzing the resources and finding the optimal results. Efficient neighboring nodes are selected to transmit the collected data to sink node via best path. Sink node perform as a data collector with better resource sensor nodes through lesser delay. Simulation is conducted in NS2 simulator using Warrigal Dataset and the performance is analyzed by various parameters namely energy consumption, data collection delay, throughput, and data loss rate based on number of data. The observed result shows the superior performance of the proposed GEBRMAFSODC technique with a higher delivery ratio, throughput by 10%, 48% and lesser loss, delay, and energy consumption by 53%, 37%, and 27% as compared to other related methods respectively.
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