基于物联网的异构节点智慧农业系统开发与分析

Sandeep Bhatia, Z. Jaffery, S. Mehfuz
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引用次数: 2

摘要

物联网(IoT)与无线传感器网络(wsn)集成,用于智能城市,智能交通,智能农业和工业活动实时监控等各种应用。针对不同的应用,物联网wsn的应用日益增多。为了优化作物品质,各种传感器节点随机分布在农业用地上,配备土壤、温湿度传感器、超声波传感器等特定传感器,以获取作物垂直生长的信号,二氧化碳传感器。但是,传统的WSN节点存在于传感器节点中的能量是有限的。在传感器节点上对电池进行充电和更换是一项艰巨的任务。异构传感器节点的分布由于其感知范围和计算能力的不同而提供了多种可能性。传感器节点部署、网络连接、功耗、覆盖面积和网络寿命是无线传感器网络需要解决的主要问题。因此,在本文中,我们的主要目标是在支持IoT-WSN的智能农业(I-WSA)中使用智能部署策略,通过使用遗传算法(GA)和粒子群优化(PSO)等分析算法来最小化传感器节点的能量消耗,从而使用直接路由协议和多跳路由协议延长网络生命周期。实验结果表明,网络寿命平均可提高140% ~ 150%。本文对遗传算法和粒子群算法进行了比较。本文通过实验结果探讨了异构网络的优势。
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Development and Analysis of IoT based Smart Agriculture System for Heterogenous Nodes
The Internet of Things (IoT) integration with wireless sensor networks (WSNs) used in various applications like smart cities, smart transportation, smart agriculture and real-time monitoring of industrial activities. The application of IoT-WSN is increasing day by day for different applications. For optimization of the crop quality various sensor nodes equipped with specific sensors like Soil, Temperature and Humidity sensor, Ultrasonic sensor to get signal about vertical growth of crop, Co2 sensor are randomly distributed across agriculture land. But, conventional WSN nodes have limited amount of energy that exist in sensor nodes. Recharging and replacement of the batteries at the sensor nodes becomes a difficult task. Heterogeneous sensor nodes placement provides many possibilities because of their sensing range and diverse computing power. The sensor node deployment, network connectivity, power consumption, coverage area and network lifetime are the primary issues in WSNs which need to be addressed. So, in this paper, our primary objective is to use intelligent deployment strategy for sensor node placement in IoT-WSN enabled smart agriculture (I-WSA) by using analytical algorithm like Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) to minimize energy depletion of sensor nodes to prolong network lifetime using direct routing protocol and multi-hop routing protocol. Experimental results depict that the network lifetime can be increased up to an average of 140-150%. In the paper there is a comparison of GA and PSO. The benefit of heterogeneous networks has been explored in our paper through experimental results.
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