基于多传感器数据融合和无线传感器网络的钢筋腐蚀监测系统研究

A. Yu, Ziyang Shang, Hongbing Sun, Hao Kuang
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摘要

本文采用多传感器数据融合技术和无线传感器网络(WSN)对钢材腐蚀参数进行实时监测和预测。为了克服钢筋腐蚀识别困难和准确性低的问题,本研究选择氯离子浓度、pH值、钢筋腐蚀电位、混凝土内部温度和湿度5个参数进行数据融合。设计了三层数据融合结构,并为每一层选择了相应的融合算法。通过数据清洗和中值平均滤波方法完成初级融合,然后使用自适应加权算法对同类型传感器数据进行融合,得到区域的参数特征。最后,利用改进的PSO-BP神经网络对前一层融合的数据进行融合,实现对钢材腐蚀的预测。实验结果表明,与传统的腐蚀监测方法相比,基于多传感器数据融合技术和WSN的钢材腐蚀监测系统具有更高的可靠性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on reinforced corrosion monitoring system based on Multi-sensor data fusion and wireless sensor network
This paper applies multi-sensor data fusion technology and wireless sensor network (WSN) to monitor and predict steel corrosion parameters in real-time. To overcome the difficulties and low accuracy in identifying rebar corrosion, this study selected five parameters for data fusion, including chloride ion concentration, pH value, rebar corrosion potential, and internal temperature and humidity of concrete. A three-level data fusion structure is designed with corresponding fusion algorithms chosen for each level. The primary fusion is completed through data cleaning and median average filtering methods, followed by using adaptive weighting algorithms to fuse sensor data of the same type to obtain parameter characteristics of the region. Finally, an improved PSO-BP neural network fuses the data from the previous level of fusion to achieve prediction of steel corrosion. Experimental results show that the steel corrosion monitoring system based on multi-sensor data fusion technology and WSN has higher reliability and accuracy compared to traditional corrosion monitoring methods.
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