Abstract:RFID tags of traditional power equipment was used only for identification, lacking the ability about sense and interaction of multidimensional data. Based on the IoT technology, an eRFID tag with sense and data interaction capabilities was designed for the wide distribution and various types of power assets which need online awareness ability. The eRFID tag can not only used to the intelligent management about the life cycle of power assets, but also can effectively monitor parameters such as temperature, humidity and vibration to bring about integration of identification and perception. The eRFID online sense tag connect the control part with the RF part through the 915MHz UHF dual-interface RFID chip, realizing the combination of the device ID and its operate parameters, and can actively control the modules of eRFID online sense tag. The eRFID sense tag can monitor the vibration signal. When the vibration signal is abnormal, the eRFID tag waked up, and then it calculates the angular posture of the device. Then it complete alarms threshold, RTLS, information pushes to prevent device damage and theft. It uses Beidou positioning technology and a low-power micro controller unit (MCU) with Bluetooth to achieve indoor and outdoor omnidirectional position of power equipment. The tag also has built-in large-capacity storage to store complete information such as assets, drawings, etc., so that it establishes a micro-database to realize network topology recognition based on information definition.
张鋆, 张明皓, 仝杰, 李荡, 雷煜卿, 张树华. 用于电力资产在线感知的eRFID标签设计[J]. 电工技术学报, 2020, 35(11): 2296-2305.
Zhang Jun, Zhang Minghao, Tong Jie, Li Dang, Lei Yuqing, Zhang Shuhua. A eRFID Tag Design for Online Perception of Power Assets. Transactions of China Electrotechnical Society, 2020, 35(11): 2296-2305.
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