Particle velocity measurement using linear capacitive sensor matrix

G. Heming, Deng Huiwen, Liu Jun
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引用次数: 4

Abstract

A novel spatial filter structure based on linear capacitive sensor matrix (LCSM) was designed for measuring the velocity of the local particles within pneumatic conveying pipeline in this paper. The axial sensitivity distribution of LCSM was analyzed by finite element method. The velocity measurement principle using LCSM filtering property was theoretically deduced, then the velocity of local particles can be obtained by determining the narrow-band center frequency of the output periodic signals of the LCSM. A LCSM-based differential-type particle velocimeter was further developed for eliminating the influence of DC component of the output signal and its performance was verified on a gravity-fed solids flow rig. Experimental results show that the measurement method had a good repeatability, and the standard deviation of the measured velocity are less than 15.4% over the velocity range of 1.45–4.38 m/s.
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用线性电容式矩阵传感器测量粒子速度
设计了一种基于线性电容传感器矩阵(LCSM)的新型空间滤波结构,用于测量气力输送管道中局部颗粒的速度。采用有限元法分析了lsm的轴向灵敏度分布。从理论上推导了利用LCSM滤波特性进行速度测量的原理,然后通过确定LCSM输出周期信号的窄带中心频率得到局部粒子的速度。为了消除输出信号直流分量的影响,进一步研制了一种基于lcsm的差分型颗粒测速仪,并在重力输送固体流钻机上对其性能进行了验证。实验结果表明,该测量方法重复性好,在1.45 ~ 4.38 m/s的速度范围内,测量速度的标准偏差小于15.4%。
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