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具有分类功能的煤炭产量监测系统设计
引用本文:王卫军,' target='_blank'>,郭江涛,' target='_blank'>.具有分类功能的煤炭产量监测系统设计[J].中州煤炭,2016,0(2):109-111,118.
作者姓名:王卫军  ' target='_blank'>  郭江涛  ' target='_blank'>
作者单位:(1.中煤科工集团重庆研究院有限公司,重庆 400039; 2.瓦斯灾害监控与应急技术国家重点实验室,重庆 400039)
摘    要:针对煤矿产量监测系统中煤炭与其他物资的区分能力不足、无法准确获得煤矿的实际产量等问题,提出了基于模糊神经网络算法的重量分类模型,并利用多传感器信息融合技术,自学习的方法不断提升模型识别煤炭能力及速度,获得更加精确的重量数据。数据仿真及现场应用表明,设计的称重系统能够很好识别煤炭并准确记录重量,为远程煤炭称重系统设计提供了一种思路。

关 键 词:煤矿产量  模糊神经网络  信息融合

 Design of Coal Production Monitoring System with Function of Classification
Wang Weijun,' target='_blank'>,Guo Jiangtao,' target='_blank'>. Design of Coal Production Monitoring System with Function of Classification[J].Zhongzhou Coal,2016,0(2):109-111,118.
Authors:Wang Weijun  ' target='_blank'>  Guo Jiangtao  ' target='_blank'>
Affiliation:(1.Chongqing Research Institute of CCTEG,Chongqing 400039,China;2.State Key Laboratory of the Gas Disaster Detecting,Preventing and Emergency Controlling,Chongqing 400039,China)
Abstract:For coal and other materials in the production of coal mine monitoring system to distinguish ability is insufficient,can not accurately obtain actual production of coal mine,the weight classification model was put forward based on fuzzy neural network algorithm. By using multi-sensor information fusion technology,the dentification ability and speed of model were improved by using the method of self-learning coal,so more accurate weight data was obtained. Through data simulation and field application,it was shown that the design of the weighing system is good for identification of coal and can accurately record the weight,and has provided a train of thought for the design of remote coal weighing system.
Keywords:coal mine production  fuzzy neural network  information fusion
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