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Soft Sensing Modeling of Dioxins for Waste Incineration Based on Small Data Sets

机译:基于小数据集的垃圾焚烧二恶英的软测量建模

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Since the online measurement of Dioxins during waste incineration is difficult,it could only be analyzed offline with small samples obtained.Aimed at this problem,a novel soft sensing methodology that can be well generalized is studied.Firstly,bootstrap resampling approach and noise injection are performed for small samples in order to increase the amount of the samples and improve the diversity.Then,the information entropy is introduced to the error rule function for the unknown distributing of original samples and a neural network with the maximum entropy is constructed.Finally,a soft sensing regression model of dioxins is built based on the entropy neural network.Simulation results show that this model has a high precision and a good ability of generalization.The mean and maximum of relative error between actual and predicted values are 0.167% and 1.21%,respectively.This method provides a reference for detecting dioxins online during waste to energy
机译:由于垃圾焚烧过程中二恶英的在线测量比较困难,只能通过少量样品进行离线分析。针对此问题,研究了一种可以很好推广的新型软传感方法。为了增加样本量并提高多样性,然后将信息熵引入到误差规则函数中,以进行原始样本的未知分布,并构造一个具有最大熵的神经网络。基于熵神经网络建立了二恶英的软传感回归模型。仿真结果表明,该模型具有较高的精度和泛化能力。实际值与预测值之间的相对误差的平均值和最大值分别为0.167%和1.21。 %。该方法为在线检测废物转化为能源中的二恶英提供了参考

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