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Fuel Identification Based on the Least Squares Support Vector Machines

机译:基于最小二乘支持向量机的燃料识别

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The identification of the fuel types plays an important role in ensuring the safety and economics of the power plants. In order to obtain the flame signal in the process of combustion, a flame detection system is designed and a laboratorial platform is constructed. This paper extracts the signal parameters-the mean, the peak-peak value, the flicker frequency, and the flicker intensity -and takes them as the characteristic quantities of the flame signal. Based on the least squares support vector machines (LSSVM), an efficient method of identifying the flame types is developed. The result of the identification is more ideal, with the correct identification rate up to 100%. This shows that the method combined the four characteristic quantities with the LSSVM can obtain a good result in the identification of the fuel types.
机译:燃料类型的识别在确保发电厂的安全性和经济性方面发挥着重要作用。为了获得燃烧过程中的火焰信号,设计了火焰检测系统,并且构造了实验室平台。本文提取信号参数 - 平均值,峰值值,闪烁频率和闪烁强度 - 并将其作为火焰信号的特征量。基于最小二乘支持向量机(LSSVM),开发了识别火焰类型的有效方法。鉴定的结果更为理想,正确的识别率高达100%。这表明该方法组合与LSSVM的四个特征量可以获得良好的结果在燃料类型的识别中。

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