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基于林格曼黑度的烟囱排放自动监测分析系统的研究与实现

Automatic Monitor Analysis System for Chimney Emissions Researching and Implementation Based on Ringelmann Blackness

【作者】 桂柏林

【导师】 陈展;

【作者基本信息】 湘潭大学 , 计算机技术, 2009, 硕士

【摘要】 大中型联合钢铁企业的生产制造流程长,能源资源消耗大,在区域环境中所占的污染负荷也较大。随着国家节能减排实施纲要的落实,企业环境保护不仅是建设环境友好型企业需要,更是企业的生命线,所以必然要加强对污染源的监控。但钢厂区域范围大,烟囱林立,分布广泛,靠人来监控烟囱的排放显然不能做到及时有效,因此开发烟囱排放林格曼黑度自动监测系统十分必要。烟囱排放林格曼黑度监测系统的作用是对厂范围内的所有烟囱排放进行图像监控,并对拍摄到的图像进行林格曼黑度分析、报警,对各烟囱排放的历史数据进行统计分析,帮助环保管理人员寻找重点大气污染源,与生产经营信息对照后,还可以找出超标排放的原因,实施源头治理。烟囱排放林格曼黑度自动监测系统由现场视频设备、光纤传输网络、监控中心和系统监控软件等部分组成。现场视频设备(摄像头)拍摄到的现场图像,通过局域光纤网络传输到监控中心的系统监控软件,被监控软件显示、分析和处理。该系统在图像数据的传输上充分利用了计算机网络技术,集成了网络的远程控制、通信、信息处理优势,并应用先进的计算机图象处理技术,对烟囱排放的林格曼黑度进行计算机分析和自动判级。本文论述了烟囱排放林格曼黑度自动监测系统实现的几个关键技术:研究了以网络视频服务器为核心的总体框架结构,采用了适应数字图像传输的IP多播网络传输技术,从客户角度对系统监控软件的功能模块配置进行了系统论述,并对其中的两个关键模块(视频设备控制模块和自动轮巡模块)进行了详细论述。本文着重研究了数字图像处理技术在烟尘图像林格曼黑度测量上的运用,通过对各种图像预处理方法、边缘检测方法、图像分割方法进行实验比较,最终确定了最佳阀值分割法作为烟尘图像检测的基本算法。计算机分析林格曼黑度时,首先由最佳阀值分割法从数字图像中分割出烟尘图像,然后统计烟尘图像的加权平均灰度值即为烟囱排放的林格曼黑度值,再按照用户设定的黑度值区间划分黑度等级。本软件已在钢铁企业应用,实践证明系统运行稳定,计算机分析的林格曼黑度值和黑度级的符合我们肉眼观测到的黑度级,满足现场环保管理要求。

【Abstract】 Large and middle scale unites Iron and steel enterprise’s manufacturing flow to be long, the energy resources consume in a big way, occupies the pollution load in the region environment to be also big. Reduces the row of implementation summary along with the national energy conservation realization, the enterprise environment protection not only constructs the environment friendly enterprise need, but also enterprise’s lifeline. Therefore,It is bound to strengthen the monitoring of pollution sources. But the steel mill area coverage is big, the chimney stands in great numbers, the distribution is widespread, monitors chimney’s emissions depending on the human not to be able to achieve obviously real-time effective. Therefore, it is very essential that the design and development automatic monitoring of Ringelmann blackness of chimney emissions.The chimney emissions Ringelmann blackness monitoring system’s function is carries on the image frequency monitoring to the factory scope all chimney emissions, and to the picture which monitors carries on the Ringelmann blackness analysis, the warning,discharges the historical data to various chimneys to carry on the statistical analysis, helps the environmental protection administrative personnels to seek for the key atmospheric source of pollution, after production operation information comparison, but may also discover the reason for the exceeding the allowed figure emissions, in order to implement source governance.The chimney emissions Ringelmann blackness automatic monitoring system is composed by the on-site video equipment, fiber-optic transmission network, monitoring control center and video surveillance software. The scene material which the on-site video equipment (camera) observes transmits the monitors software through the confined network, the software shows the monitored, analysis and processing. The system of image data transmission make full use of the computer Network Technology. It is Integrated the network remote control, communications, information processing advantages and application of advanced computer image processing technology, on the chimney’s Ringelmann blackness testing and computer automatic class.This article discusses the system implementation of some key technologies: Network Video Server as the core of the overall framework, IP multicast network transmission technology and module settings of monitoring software. It describes the two key modules. The focus attention in the article is digital image processing technique and how to apply on Ringelmann blackness arithmetic testing by result of image analysis. Through experiments to determine the optimal threshold partition image as a smoke detection algorithm.This system has been applied in the iron and steel enterprise, the practice had proven that the system is stable and credible. Computer analysis results consistents with the people’s determine. it has reached a pre-set requirements of us.

  • 【网络出版投稿人】 湘潭大学
  • 【网络出版年期】2011年 S2期
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