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On-line identification of biomass fuels based on flame radical imaging and application of radical basis function neural network techniques

机译:基于火焰自由基成像的生物质燃料在线识别及自由基基函数神经网络技术的应用

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摘要

In biomass fired power plants a range of biomass fuels are used to generate electric power. It is desirable to identify the type of biomass fuels on-line continuously in order to achieve an improved combustion efficiency, and reduced pollutant emissions. This paper presents the recent investigations into the on-line identification of biomass fuels based on the combination of flame radical imaging and radical basis function (RBF) neural network (NN) techniques. The characteristic values of flame radicals (OH*, CN*, CH* and C*), including the intensity ratio, intensity contour, mean intensity, area and eccentricity, are computed to reconstruct two types of RBF NN, that is, accurate and probabilistic RBF networks. Experimental results obtained for three types of biomass fuels (flour, willow sawdust and palm kernel shell) firing on a laboratory-scale combustion test rig are presented to demonstrate the effectiveness of the proposed method.
机译:在使用生物质的发电厂中,使用多种生物质燃料来发电。期望连续地在线识别生物质燃料的类型,以实现改善的燃烧效率和减少的污染物排放。本文介绍了基于火焰自由基成像和自由基基函数(RBF)神经网络(NN)技术相结合的生物质燃料在线识别的最新研究。计算火焰自由基(OH *,CN *,CH *和C *)的特征值,包括强度比,强度轮廓,平均强度,面积和偏心率,以重建两种类型的RBF NN,即精确和概率RBF网络。提出了在实验室规模的燃烧试验台上燃烧三种类型的生物质燃料(面粉,柳锯末和棕榈仁壳)获得的实验结果,以证明该方法的有效性。

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