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作 者:王艳斌[1] 袁洪福[1] 陆婉珍[1] 齐洪祥[2] 殷宗玲[2]
机构地区:[1]石油化工科学研究院,北京100083 [2]沧州炼油厂,沧州061000
出 处:《分析化学》2000年第9期1070-1073,共4页Chinese Journal of Analytical Chemistry
摘 要:采用主成分-人工神经网络对不同馏程柴油的近红外光谱进行校正,预测其闪点。采用监控集控制网络训练过程,以避免过训练。探讨了人工神经网络(ANN)、直接线性连接人工神经网络(LANN)的校正效果,并与局部权重回归(LWR)、主成分回归(PCR)及偏最小二乘(PLS)等校正方法进行了比较,认为人工神经网络及直接线性连接人工神经网络具有较好的准确性及抗干扰性,可以用于较宽的样品范围,是解决非线性关联的较好手段。Back-propagation artificial neural network (ANN) and ANN with direct linear connection (LANN) were used as the mathematical models, which correlate the near-infrared spectra with the flash point of diesel fuel with different distillation range. Principal components of spectrum were used as input variate of the network to reduce noise and the number of input nodes. Monitoring set was applied to avoid over-training. The models established by LANN, ANN and other multivariate calibration methods such as locally weighted regression (LWR), partial least squares (PLS) and principal component regression (PCR), were compared for predicting the flash points of a set of Samples with wide variation of physical properties. Results were also compared, when the spectra were obtained with different light ball (source). The artificial neural network methods have better accuracy and more ruggedness. Result obtained by locally weighted regression method was accurate, but it was not rugged. When broad sample range was encountered, which usually occur in refining, the artificial neural network can ha used to construct a single model with good accuracy and ruggedness.
分 类 号:TE626.24[石油与天然气工程—油气加工工程] O657.33[理学—分析化学]
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