范文编号:HG219 范文字数:19945,页数:40 摘 要:本文主要以PTA装置溶剂脱水塔为研究对象,运用统计回归方法和人工神经网络技术,建立溶剂脱水塔出口产品组成的PCA-BP神经网络软测量模型。本文完成的工作主要有: 关键词:溶剂脱水塔;多元线性回归;软测量;主成分回归;人工神经元网络 Abstract: This paper is a study of PTA solvent dehydration tower. The author used a statistical regression method and the technology of artificial neural network, and built a soft-sensing model of the PCA-BP neural network which made up the solvent dehydration tower products for export. In this paper included the following aspects: firstly, the author analyzed the main parameter of the artificial neural network based on the principles of PCA-BP modeling, and summed up a more effective method. And this method has been applied to achieve a satisfactory result. Secondly, the author added up the soft-sensing approaches to both the top and bottom products of solvent dehydration tower. Based on these approaches, the author chose a multiple linear regression (MLR) method in modeling the solvent dehydration tower products, and also inspected those models. The result showed the accuracy of those models has achieved the expected standard. Thirdly, the author studied the method based on the BP artificial neural network in modeling the solvent dehydration tower products, and tested the models through the data on the scene. At last, the author took a long view on statistical regression method and the technology of artificial neural network used in soft-sensing modeling, and then pointed out some ideas for further work. Keywords: Solvent Dehydration Tower; Multiple Linear Regression (MLR); Soft-sensor; Principal Component Regression(PCR); Artificial Neural Network. 目 录
|
上一篇:长链烯烃羰基合成的热力学网络计算 | 下一篇:聚丙烯高支化聚乙烯合金的制备与.. |
点击查看关于 PTA 装置 溶剂 水塔 测量 建模 灵敏度 分析 的相关范文题目 | 【返回顶部】 |