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Fuel-Type Identification Using Joint Probability Density Arbiter and Soft-Computing Techniques

机译:使用联合概率密度判优器和软计算技术进行燃料类型识别

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This paper presents a new method for fuel-type identification by combining the joint probability density arbiter and soft-computing techniques. Extensive flame features were extracted both in the time and frequency domains from each flame oscillation signal and formed an original feature data vector. Orthogonal and dimension-reduced feature data were obtained by using the principal component analysis technique. In order to identify the fuel type, the joint probability density arbiter and soft-computing models were established for each known fuel type by using the orthogonal features. Then, the joint probability density arbiter model was used to determine whether the type of fuel is new or not, and one of the soft-computing models (either a neural network model or a support vector machine model) was used to identify the fuel type if the fuel was one of the known types. Experiments were carried out on an industrial boiler. Four types of coal were tested, and the average success rates of fuel-type identification were higher than 97% in 20 trials. The experimental results demonstrated that the combination of the joint probability density arbiter and one of the two soft-computing techniques was effective in identifying the fuel types (either new or not).
机译:结合联合概率密度判优器和软计算技术,提出了一种新的燃料类型识别方法。从每个火焰振荡信号的时域和频域中提取广泛的火焰特征,并形成原始特征数据矢量。使用主成分分析技术获得正交和降维特征数据。为了识别燃料类型,通过使用正交特征为每种已知的燃料类型建立了联合概率密度仲裁器和软计算模型。然后,使用联合概率密度仲裁器模型确定燃料类型是否为新燃料,并使用一种软计算模型(神经网络模型或支持向量机模型)来识别燃料类型。如果燃料是已知类型之一。实验是在工业锅炉上进行的。测试了四种类型的煤,在20个试验中,燃料类型识别的平均成功率均高于97%。实验结果表明,联合概率密度仲裁器和两种软计算技术之一的组合可有效识别燃料类型(新的或不新的)。

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