Xu Wencong, Chen Bingshu, Li Yandong, Hu Yue, Li Jianxun, Zeng Zijing
Department of Automation, Shanghai Jiao Tong University, No. 800 Road Dongchuan, Shanghai 200240, China.
Department of Electrical Engineering, Shanghai Jiao Tong University, No. 800 Road Dongchuan, Shanghai 200240, China.
Sensors (Basel). 2022 Jul 20;22(14):5406. doi: 10.3390/s22145406.
Inspection robots are widely used in the field of smart grid monitoring in substations, and partial discharge (PD) is an important sign of the insulation state of equipment. PD direction of arrival (DOA) algorithms using conventional beam forming and time difference of arrival (TDOA) require large-scale antenna arrays and high computational complexity, making them difficult to implement on inspection robots. To address this problem, a novel directional multiple signal classification (Dir-MUSIC) algorithm for PD direction finding based on signal strength is proposed, and a miniaturized directional spiral antenna circular array is designed in this paper. First, the Dir-MUSIC algorithm is derived based on the array manifold characteristics. This method uses strength intensity information rather than the TDOA information, which could reduce the computational difficulty and the requirement of array size. Second, the effects of signal-to-noise ratio (SNR) and array manifold error on the performance of the algorithm are discussed through simulations in detail. Then, according to the positioning requirements, the antenna array and its arrangement are developed and optimized. Simulation results suggested that the algorithm has reliable direction-finding performance in the form of six elements. Finally, the effectiveness of the algorithm is tested by using the designed spiral circular array in real scenarios. The experimental results show that the PD direction-finding error is 3.39°, which meets the need for partial discharge DOA estimation using inspection robots in substations.
巡检机器人在变电站智能电网监测领域得到广泛应用,局部放电(PD)是设备绝缘状态的重要标志。使用传统波束形成和到达时间差(TDOA)的局部放电到达方向(DOA)算法需要大规模天线阵列且计算复杂度高,难以在巡检机器人上实现。为解决这一问题,本文提出一种基于信号强度的新型用于局部放电测向的定向多重信号分类(Dir-MUSIC)算法,并设计了一种小型化定向螺旋天线圆形阵列。首先,基于阵列流形特性推导Dir-MUSIC算法。该方法使用强度信息而非TDOA信息,可降低计算难度和对阵列尺寸的要求。其次,通过仿真详细讨论了信噪比(SNR)和阵列流形误差对算法性能的影响。然后,根据定位要求,开发并优化了天线阵列及其布局。仿真结果表明,该算法在六元阵形式下具有可靠的测向性能。最后,利用所设计的螺旋圆形阵列在实际场景中测试了算法的有效性。实验结果表明,局部放电测向误差为3.39°,满足变电站巡检机器人对局部放电DOA估计的需求。