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Soft sensor for coal mill primary air flow based on LSSVR

机译:基于LSSVR的磨煤机一次风软测量。

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In the power plant coal-fired units, the primary air for boiler combustion and coal powder conveying is directly related to the actual combustion chamber conditions. Therefore, the appropriate primary air flow is very important for the normal operations of the coal mill and even the whole units. Coal mill primary air flow soft sensor model was established based on least squares support vector regression machine algorithm. Gaussian radial basis function is selected as the kernel function and training performance is used to select model parameters. Reasonable choices of the variables that are closely related to the primary air flow are used as input features. The historical data of a selected power plant DCS system is used as training samples and testing samples. Gross error, random error and normalization of samples are dealt with by using a statistical discriminant method and a sliding average method. Experimental verification shows that this soft sensor model method can achieve higher accuracy than the existing flow meter. The soft sensor technology has a good application prospect in the detection process of a thermal power plant.
机译:在电厂燃煤机组中,用于锅炉燃烧和煤粉输送的一次空气与燃烧室的实际状况直接相关。因此,适当的一次空气流量对于磨煤机乃至整个机组的正常运行非常重要。基于最小二乘支持向量回归机算法,建立了磨煤机一次风软传感器模型。选择高斯径向基函数作为核函数,并使用训练性能来选择模型参数。与主要气流密切相关的变量的合理选择用作输入功能。所选电厂DCS系统的历史数据将用作训练样本和测试样本。使用统计判别法和滑动平均法处理样本的粗差,随机差和归一化。实验验证表明,这种软传感器模型方法可以比现有流量计获得更高的精度。软传感器技术在火力发电厂的检测过程中具有良好的应用前景。

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