Energy Efficient Data Aggregation in Wireless Sensor Networks Using Meta Heuristic Based Feed Forward Back Propagation Neural Network Approach

Navjyot Kaur, Vetrithangam D
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Abstract

Sensor nodes are low-cost, low-power, tiny devices that make up the majority of WSNs, or distributed, self-organizing systems. These sensor nodes are able to exchange, perceive, and interpret data. The sensor nodes are equipped with a wide variety of sensors, such as chemical, touch, motion, temperature, and weather sensors. Because of its adaptability, sensors are used in a variety of applications such as automation, tracking, monitoring, and surveillance. Despite the enormous number of sensor applications, WSNs continue to suffer from common challenges like as low memory, slow processing speed, and short network lifetime. The feed forward back propagation neural network mode (FFBPNN) based on meta heuristics aims to create many paths for effective data aggregation in wireless sensor networks. This model handled the process of identifying and selecting the optimum route path. The distributed sensor nodes are utilized to create the various route paths. In this research paper, data aggregation is done using meta-heuristic firefly algorithm that helped in identifying an optimal route from among the found routes. After selecting the operative ideal route choice, the data aggregation procedure practices a rank-based approach to accomplish lower latency and a better packet delivery ratio(PDR). In addition to throughput, simulation was done to improve and measure performance in terms of packet delivery ratio, energy consumption, and end-to-end latency.
使用基于元启发式的前馈反向传播神经网络方法在无线传感器网络中实现高能效数据聚合
传感器节点是一种低成本、低功耗的微型设备,是 WSN(分布式自组织系统)的主要组成部分。这些传感器节点能够交换、感知和解释数据。传感器节点配备各种传感器,如化学、触摸、运动、温度和天气传感器。由于其适应性强,传感器被广泛应用于自动化、跟踪、监控和监视等领域。尽管传感器的应用数量巨大,但 WSN 仍然面临内存小、处理速度慢和网络寿命短等共同挑战。基于元启发式的前馈反向传播神经网络模式(FFBPNN)旨在为无线传感器网络中的有效数据聚合创建多种路径。该模式处理了识别和选择最佳路由路径的过程。分布式传感器节点被用来创建各种路径。本文使用元启发式萤火虫算法进行数据聚合,该算法有助于从找到的路径中识别出最佳路径。在选出可操作的理想路由选择后,数据聚合程序采用基于等级的方法,以实现更低的延迟和更好的数据包传输率(PDR)。除吞吐量外,还进行了仿真,以改进和衡量数据包交付率、能耗和端到端延迟方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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