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The predictions of coal/char combustion rate using an artificial neural network approach

机译:人工神经网络方法预测煤焦燃烧速率

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In this study, the use of an artificial neural network for predicting the reactivity of coal/char combustion was investigated. A database containing the combustion rate reactivity of 55 chars derived from 26 coals covering a wide range of rank and geographic origin was established to train and test the neural networks. The heat treatment temperature of the chars ranged from 1000 to l500deeg.C and the combustion rate reactivity of the chars were measured using thermogravimetric analysis in a temperature range of 420--600deg.C. Three correlation parameter sets were compared, which contained a coal rank parameter (either vitrinite reflectance or fixed carbon content), a parameter representing the extent of pyrolysis, combustion temperature, and char surface area. The results showed that when sufficient amount of training data are available, a neural network model can be developed to predict the combustion rates of coal chars with good accuracy and robustness. Fixed carbon content appeared to correlate better than random vitrinite reflectance Ro with combustion rates of coal chars. Total surface areas of the chars correlated to the combustion rates and when these values were used as one of the inputs to the neural network, better predictions were achieved.
机译:在这项研究中,研究了使用人工神经网络预测煤/焦炭燃烧的反应性。建立了一个数据库,其中包含来自26种煤的55种煤的燃烧速率反应性,这些煤涵盖了不同的等级和地理范围,以训练和测试神经网络。炭的热处理温度在1000至1500°C的范围内,炭的燃烧速率反应性是在420--600°C的温度范围内使用热重分析法测量的。比较了三个相关参数集,其中包含煤等级参数(镜质体反射率或固定碳含量),代表热解程度,燃烧温度和焦炭表面积的参数。结果表明,当有足够数量的训练数据可用时,可以建立神经网络模型来预测煤焦的燃烧速率,并且具有良好的准确性和鲁棒性。固定碳含量似乎比无规镜质体反射率Ro与煤焦燃烧速率的相关性更好。炭的总表面积与燃烧速率相关,当将这些值用作神经网络的输入之一时,可获得更好的预测。

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