• CN:11-2187/TH
  • ISSN:0577-6686

机械工程学报 ›› 2017, Vol. 53 ›› Issue (13): 55-63.doi: 10.3901/JME.2017.13.055

• 机构学及机器人学 • 上一篇    下一篇

电力线除冰机器人基于粒子群优化的小波神经网络障碍物识别方法

唐宏伟1,2, 孙炜1, 张文洋1, 缪思怡1, 杨懿1   

  1. 1. 湖南大学电气与信息工程学院 长沙 410082;
    2. 邵阳学院多电源地区电网运行与控制湖南省重点实验室 邵阳 422000
  • 出版日期:2017-07-05 发布日期:2017-07-05
  • 作者简介:

    唐宏伟,男,1982年出生,博士研究生,讲师。主要研究方向为机器人控制与导航、模式识别。

    E-mail:thwei2008@126.com

    孙炜(通信作者),男,1975年出生,博士,教授,博士研究生导师。主要研究方向为智能机器人,智能控制,智能信息处理等。

    E-mail:david-sun@126.com

  • 基金资助:
    * 国家科技支撑计划(2015BAF11B01)、湖南省科技计划(2016TP1023)和湖南省教育厅科研(14C1015)资助项目; 20161029收到初稿,20170306收到修改稿;

Wavelet Neural Network Method Based on Particle Swarm Optimization for Obstacle Recognition of Power Line Deicing Robot

TANG Hongwei1,2, SUN Wei1, ZHANG Wenyang1, MIAO Siyi1, YANG Yi1   

  1. 1. College of Electrical and Information Engineering, Hunan University, Changsha 410082
    , 2. Hunan Provincial Key Laboratory of Grids Operation and Control on Multi-power Sources Area, Shaoyang University, Shaoyang 422000
  • Online:2017-07-05 Published:2017-07-05

摘要:

由于除冰机器人工作在覆冰的电力线上,障碍物的识别存在着各类障碍物区分较难,准确率较低等不足。为提高机器人自主识别能力,设计一种自适应阀值的小波变换边缘提取算法来提取出障碍物的图像边缘,并针对电力线障碍物结构特点,在障碍物边缘提取过程中设计一种基于电力线位置约束的有效剔除部分干扰背景的方法;引入小波矩,通过提取边缘图像的小波矩作为障碍物的特征匹配数据;根据神经网络和粒子群算法的原理,设计一种粒子群优化的小波神经网络进行障碍物的识别分类,该方法用粒子群算法取代传统的梯度下降法,并改进惯性权重因子,优化小波网络的各个参数。试验结果表明所提出的方法对电力线上防震锤、悬垂线夹和耐张线夹等障碍物能够有效地识别,并具有比普通识别方法更高的识别精度。

关键词: 粒子群优化算法, 小波矩, 小波神经网络, 障碍物识别, 除冰机器人

Abstract:

Because of deicing robot works in icing power lines, identifying obstacles exist some shortages, such as the difficult to distinguish various types of obstacles, low accuracy, and so on. To improve the recognition ability of robot, a kind of adaptive threshold wavelet transform edge detection algorithm to extract the edge of obstacle is designed. And according to the structural characteristics of power line obstacles, an effective method for eliminating partial interference background based on power line position constraint is designed in the process of obstacle edge extraction. The wavelet moment is introduced, the wavelet moment of the edge image is extracted as the feature matching data of the obstacle. According to the principle of neural network and particle swarm optimization algorithm, a wavelet neural network method based on particle swarm optimization is proposed for obstacle recognition and classification. The particle swarm algorithm is used to replace the traditional gradient descent method, the inertia weight factor is improved and the parameters of wavelet network are optimized. The experimental results show that the obstacles such as counterweight, suspension clamp and strain clamp on the power line can be effectively recognized by the proposed method, and the recognition accuracy is higher than the conventional recognition method.

Key words: obstacle recognition, particle swarm optimization algorithm, wavelet moment, wavelet neural network, deicing robot