Wind Mill Monitoring System using Ultra Wide Band Technology

E. Kirubakaran, K. Karthikeyan, S. Juliet, S. Shyam
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Abstract

Windmills are one of the finest and superior sources of electricity. Monitoring the working of windmill manually can be arduous. The ultra-wide band technology is exceptional for the purpose of monitoring and tracking of objects in complex environments. The proposed work proposes a windmill monitoring system by inculcating ultra-wide band tags and anchors. A conventional windmill consists of three blades. A minute UWB tag will be attached to each blades of the windmill followed by the attachment of a UWB anchor in the tower of the windmill. The pulses sent by the UWB tag will be received duly by the anchor present on the tower. The speed of the blade movement and deflection, along with their direction can be monitored from the frequency of the received pulses. Once received, the pulse are sent to the server for further algorithmic calculations. The monitoring system proposed promises to reduce the complexity in sensing the speed and movements in the deflection of blades and its current working status. An increase in accuracy and a nose dive in complexity can be witnessed using this sensing system.
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基于超宽带技术的风力发电监测系统
风车是最优良的电力来源之一。手动监测风车的工作是一项艰巨的任务。超宽带技术在复杂环境中监测和跟踪物体的目的是特殊的。这项工作提出了一个风车监测系统,通过灌输超宽带标签和锚。传统的风车由三片叶片组成。一分钟的超宽带标签将被附加到风车的每个叶片上,然后在风车的塔架上附加一个超宽带锚。超宽带标签发出的脉冲将被塔台上的锚点及时接收。叶片运动和偏转的速度及其方向可以通过接收脉冲的频率来监测。一旦接收到,脉冲被发送到服务器进行进一步的算法计算。所提出的监测系统有望降低叶片偏转速度、运动及其当前工作状态感知的复杂性。使用这种传感系统可以看到精度的提高和复杂性的急剧下降。
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