Dynamic IoT management system using K-means machine learning for precision agriculture applications

Jacqueline Stewart, R. Stewart, Sean Kennedy
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引用次数: 12

Abstract

Multi-media applications for use in Precision Agriculture (PA) and Smart Farming (SM) require Network Management Systems to deliver Quality of Service (QoS) end-to-end guarantees. This paper presents the second phase of the research in providing a network management system capable of delivering end-to-end QoS guarantees for Internet of Things (IOT) networks. The first phase of this work used a wireless test bed to develop a propagation model to incorporate the attenuation due to foliage in dense vegetation typically found in PA environments. The output of this propagation model will influence the decision making process in the network management system. Wireless Multimedia Sensor Networks (WMSN) operate under the umbrella of the Wireless Sensor Network (WSN) IEEE 802.15.4 Medium Access Control (MAC) and Physical (PHY) protocol to deliver multimedia applications such as voice, video and live streaming. To operate successfully these multi-media applications have high QoS requirements. To enable these QoS requirements to be fulfilled performance metrics such as throughput, end-to-end delay and limited packet loss must be guaranteed. This next phase of the work in developing the intelligent network management system presented in this paper uses an OPNET™ simulation package to implement a modified K-Means algorithm to detect the presence of multi-media traffic. Consequently a signal informs the network management system to adopt pre-configured settings via the Personal Area Network Co-ordinator (PANC). The resulting changes implement service differentiation by manipulating the MAC layer (size of the individual GTS timeslots and duty cycle) to deliver better throughput and end-to-end delay performance. OPNET™ simulation results show that the new algorithm facilitates better performance and meets QoS requirements suitable to multimedia applications. This paper focuses on the derivation and evaluation of the performance of the K-Means algorithm. The sensory nodes are power, memory and computationally restricted. These restrictions coupled with the heterogeneous structure of the wireless network make intelligent network management systems very important if the QoS requirements are to be fulfilled. Upon detection of multimedia traffic with high QoS demands usually triggered in the aftermath of an event of particular interest e.g. security threat etc., a management system must dynamically effect change of the network configuration settings to maintain such guarantees. As real-time applications require an urgent response, the dynamic change must occur during run time automatically. This research work is novel in that it combines the output from the development of the physical layer propagation model to inform a network management system to trigger service differentiation for multimedia traffic in a PA environment.
使用K-means机器学习的动态物联网管理系统,用于精准农业应用
用于精准农业(PA)和智能农业(SM)的多媒体应用需要网络管理系统提供端到端的服务质量(QoS)保证。本文介绍了提供能够为物联网(IOT)网络提供端到端QoS保证的网络管理系统的第二阶段研究。这项工作的第一阶段使用无线试验台开发了一个传播模型,以纳入在PA环境中常见的密集植被中由于叶子造成的衰减。该传播模型的输出将影响网络管理系统的决策过程。无线多媒体传感器网络(WMSN)在无线传感器网络(WSN) IEEE 802.15.4介质访问控制(MAC)和物理(PHY)协议的保护下运行,以提供语音、视频和直播等多媒体应用。要成功运行这些多媒体应用程序,对QoS有很高的要求。为了满足这些QoS要求,必须保证吞吐量、端到端延迟和有限的数据包丢失等性能指标。本文提出的智能网络管理系统开发的下一阶段工作使用OPNET™仿真包来实现改进的K-Means算法来检测多媒体流量的存在。因此,一个信号通知网络管理系统通过个人区域网络协调器(PANC)采用预先配置的设置。由此产生的更改通过操纵MAC层(单个GTS时隙和占空比的大小)来实现服务差异化,以提供更好的吞吐量和端到端延迟性能。OPNET™仿真结果表明,新算法具有更好的性能,满足适合多媒体应用的QoS要求。本文重点研究了K-Means算法的推导和性能评价。感觉节点受到功率、记忆和计算的限制。这些限制加上无线网络的异构结构,使得要满足QoS要求,智能网络管理系统非常重要。当检测到具有高QoS要求的多媒体流量时,通常是在特别感兴趣的事件(例如安全威胁等)的后果中触发的,管理系统必须动态地影响网络配置设置的变化以保持这种保证。由于实时应用程序需要紧急响应,动态更改必须在运行时自动发生。这项研究工作的新颖之处在于,它结合了物理层传播模型发展的输出,以通知网络管理系统,以触发PA环境中多媒体流量的服务区分。
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