一种新的基于群搜索优化的智能农业云辅助无线传感器网络数据采集方法

Q4 Computer Science
Vuppala Sukanya, Ramachandram S
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引用次数: 0

摘要

–近年来,无线传感器网络(WSN)在智能农业系统中发挥了重要作用。然而,支持无线传感器网络的智能农业(SF)系统需要可靠的通信,以最大限度地减少开销、端到端延迟、延迟等。因此,本工作引入了一个基于无线传感器网络与边缘和云计算平台集成的三层框架,以获取、处理和存储农田中有用的土壤数据。最初,传感器在整个网络区域随机部署,以收集有关不同类型土壤成分的信息。使用基于Levy飞行的K-means聚类算法基于距离对传感器进行聚类,以促进高效通信。塔斯马尼亚魔鬼优化(TDO)算法用于根据节点与边缘服务器之间的距离、剩余能量和邻居数量来选择簇头(CH)。然后,使用基于不同参数的所有成员组搜索优化(AMGSO)算法来识别传输数据的最佳路径。每个边缘服务器在从边缘服务器接收到数据之后,根据一些数据质量标准来评估数据质量(QoD)。此外,服务器之间的负载是平衡的,以克服过载和负载不足的问题。仅在QoD评估中获得较高分数的合法数据就被发送到云服务器进行存档。利用ICRISAT数据集,使用一些指标对拟议工作的效率进行了评估。对于总共250个节点,所提出的模型在能量消耗方面获得的平均改进率为40%,在分组传递率方面获得的改进率为7%,在网络寿命方面获得的改善率为38%,在延迟方面获得的提高率为24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel All Members Group Search Optimization Based Data Acquisition in Cloud Assisted Wireless Sensor Network for Smart Farming
– Recent times, the Wireless Sensor Networks (WSN) has played an important role in smart farming systems. However, WSN-enabled smart farming (SF) systems need reliable communication to minimize overhead, end-to-end delay, latency etc., Hence, this work introduces a 3-tiered framework based on the integration of WSN with the edge and cloud computing platforms to acquire, process and store useful soil data from agricultural lands. Initially, the sensors are deployed randomly throughout the network region to collect information regarding different types of soil components. The sensors are clustered based on distance using the Levy flight based K-means clustering algorithm to promote efficient communication. The Tasmanian devil optimization (TDO) algorithm is used to choose the cluster heads (CHs) based on the distance among the node and edge server, residual energy, and the number of neighbors. Then, the optimal paths to transmit the data are identified using the all members group search optimization (AMGSO) algorithm based on different parameters. Each edge server assesses the quality of the data (QoD) with respect to some data quality criteria after receiving the data from the edge server. Also, the load across the servers are balanced in order to overcome the overloading and under loading issues. The legitimate data that received higher scores in the QoD evaluation alone is sent to the cloud servers for archival. Using the ICRISAT dataset, the efficiency of the proposed work is evaluated using a number of indicators. The average improvement rate attained by the proposed model in terms of energy consumption is 40%, in terms of packet delivery ratio is 7%, in terms of network lifetime is 38%, and in terms of latency is 24% for a total of 250 nodes.
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来源期刊
International Journal of Computer Networks and Applications
International Journal of Computer Networks and Applications Computer Science-Computer Science Applications
CiteScore
2.30
自引率
0.00%
发文量
40
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