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水质浊度红外光检测及聚类灰色融合预测模型
引用本文:杜玉红,魏坤鹏,史屹君,刘恩华,酆启胤,董广宇.水质浊度红外光检测及聚类灰色融合预测模型[J].红外与激光工程,2016,45(10):1028002-1028002(7).
作者姓名:杜玉红  魏坤鹏  史屹君  刘恩华  酆启胤  董广宇
作者单位:1.天津工业大学机械工程学院,天津 300387;
基金项目:国家自然科学基金(51205288);天津市高校“中青年骨干创新人才培养计划”项目;天津市科委面上基金(13jcybjc15900);天津市技术创新引导专项(15JCTPJC61200)
摘    要:为了对水处理过程中水质浊度进行实时、准确检测,设计了基于红外光的散射浊度检测系统,并提出一种聚类灰色融合的预测模型对水质浊度的变化趋势进行有效预测。利用890 nm波长的红外发光二极管作为发光器件,光敏二极管作为接收器,检测装置响应时间短,零点误差小。采用灰色预测算法和聚类融合的方法对传感器所采集的数据进行处理,将聚类融合处理后的数据作为灰色预测控制的输入数据,灰色预测控制的输出数据与融合数据进行对比分析,确定预测浊度值。通过实际项目进行了数据跟踪和运算,聚类灰色融合算法的浊度预测输出值和实测值的平均误差值为0.008 7 NTU,聚类灰色融合算法预测性能优于单一的灰色预测算法,能够保证水质浊度参数的平稳,满足了水质的要求。

关 键 词:浊度    红外光    灰色预测    聚类融合
收稿时间:2016-02-14

Infrared detection and clustering grey fusion prediction model of water quality turbidity
Affiliation:1.School of Mechanical Engineering,Tianjin Polytechnic University,Tianjin 300387,China;2.Tianjin Key Laboratory of Modern Mechanical and Electrical Equipment Technology,Tianjin 300387,China;3.The Technology Center of Tianjin Zhonghuan Creative Technology Limited,Tianjin 300190
Abstract:In order to realize real-time and accurate detection of water turbidity in the water treatment process, the turbidity detection system was designed based on infrared light scattering and the turbidity forecasting model was put forward based on clustering grey fusion. The infrared light emitting diode with 890 nm wavelength was used as the light emitting device, the photosensitive diode was used as the receiver, and the response time of the detector was short, and the zero error was small. The data collected by the sensor was processed by the method of grey prediction algorithm and cluster fusion. The data processed by the cluster fusion were as the input data of the grey predictive control, and the output data of the grey predictive control and the fusion data were compared and analyzed. Data tracking and operation were carried out through the actual project. The average error of the measured value and the output value of the turbidity prediction is 0.008 7 NTU. Grey fusion algorithm is superior to the single grey prediction algorithm, to ensure that the water quality turbidity parameters are stable and meet the requirements of water quality, and ensures that the water quality turbidity parameters are more stable and meet the requirements of water quality.
Keywords:
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