首页 | 本学科首页   官方微博 | 高级检索  
     

基于激光精密技术的光电探测误差智能识别
引用本文:张铁宝,李桂娥.基于激光精密技术的光电探测误差智能识别[J].四川激光,2020,41(2):181-185.
作者姓名:张铁宝  李桂娥
作者单位:山西大学商务学院,太原030031;山西大学商务学院,太原030031
基金项目:山西省教育科学“十三五”规划课题
摘    要:针对光电探测平台的高精度目标定位需求,以升降式光电探测平台为例,设计一种基于激光精密技术的光电探测误差智能识别方法。在光电探测平台与结构特征分析的基础上,利用激光精密技术确定误差来源,并结合光伏照射角度定理,生成误差识别规则;根据此规则对光电探测过程中光学传感器误差、平台指向误差和测量误差进行智能识别。仿真实验结果表明,方法能够有效识别光电探测过程中产生的各类误差,较传统方法的误差识别精度髙,说明方法适用于升降式光电探测平台,具备推广使用意义。

关 键 词:激光精密技术  光电探测平台  误差识别  光伏照射角度原理

Intelligent recognition of photoelectric detection error based on laser precision technology
ZHANG Tiebao,LI Guie.Intelligent recognition of photoelectric detection error based on laser precision technology[J].Laser Journal,2020,41(2):181-185.
Authors:ZHANG Tiebao  LI Guie
Affiliation:(Business College of Shanxi University,TaiYuan Shanxi 030031,China)
Abstract:Aiming at high-precision target positioning requirements of photoelectric detection platform,a lifting photoelectric detection platform is taken as an example to design an intelligent recognition method for photoelectric detection error based on laser precision technology.Based on the analysis of photoelectric detection platform and structural characteristics,the laser precision technology is used to determine the error source,and the error recognition rule is generated combining photo-voltaic illumination angle theorem.According to this rule,the optical sensor error,platform pointing error and measurement error in the photoelectric detection process are intelligently identified.The simulation results show that the proposed method can effectively identify various errors generated in the photoelectric detection process,and the error recognition accuracy is higher than that of traditional method.It shows that the method is applicable to the lift photoelectric detector platform and has significance of popularization and use.
Keywords:laser precision technology  photoelectric detection platform  recognition error  photo-voltaic illumination angle principle
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号