冗余策略下的机械振动 WSN 高效可靠传输方法
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TP393. 1 TH17

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重庆市自然科学基金重点项目(cstc2019jcyjzdxmX0026)、国家自然科学基金(51675067)项目资助


Efficient and reliable transmission method for mechanical vibration of WSN based on redundancy strategy
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    摘要:

    针对大量机械振动无线传感器网络数据的传输过程中高延时和可靠性的问题,提出了冗余策略下的机械振动无线传感 器网络高效可靠传输方法。 首先分析对比了基于 IEEE 802. 15. 4 协议支持的 ACK 和 Non-ACK 的传输机制下的时间消耗,取消 传输 ACK 应答帧带来的时间延时,保证大量机械振动数据的高效传输;然后提出了一种冗余策略下的数据可靠传输方法,采用 部分冗余矩阵进行数据编码将机械振动原始数据在丢包率下进行数据扩展;最后,数据中心将收到的数据解码即可得到原始数 据。 实验结果表明,所提方法数据量经冗余编码后增加 25% 后,每轮传输延时可减少约 3 s,传输能量消耗可降低约 555 mJ,并 能保证数据完整性。

    Abstract:

    Aiming at the issue of high delay and reliability in the transmission of a large number of mechanical vibration wireless sensor networks, an efficient and reliable transmission method of mechanical vibration wireless sensor networks based on redundancy strategy is proposed. Firstly, the time consumption under ACK and Non-ACK transmission mechanism supported by IEEE 802. 15. 4 protocol is analyzed and compared, and the time delay caused by canceling transmitting ACK frame ensures the efficient transmission of a large number of mechanical vibration data; then, a reliable data transmission method based on redundancy strategy is proposed, which uses partial redundancy matrix for data coding to expand the original mechanical vibration data under packet loss rate; finally, the monitoring center decodes the received data to obtain the original data. The experimental results show that after the data size of the proposed method is increased by 25% after redundant coding, the transmission delay of each round can be reduced by about 3 s, the transmission energy consumption can be reduced by about 555 mJ, and the data integrity can be guaranteed.

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黄 艺,赵春华,汤宝平,付 豪,邓 蕾.冗余策略下的机械振动 WSN 高效可靠传输方法[J].仪器仪表学报,2022,43(3):146-152

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  • 在线发布日期: 2023-02-06
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