石油炼制与化工 ›› 2013, Vol. 44 ›› Issue (3): 88-92.

• 控制与优化 • 上一篇    

BP神经网络模型用于芳烃油加氢工艺条件考察

陈玉龙,杨基和,刘英杰,崔文龙   

  1. 常州大学江苏省精细化工重点实验室
  • 收稿日期:2012-06-28 修回日期:2012-08-17 出版日期:2013-03-12 发布日期:2013-02-27
  • 通讯作者: 杨基和 E-mail:yangjihe2873@126.com

APPLICATION OF BP NEURAL NETWORK MODEL TO INVESTIGATE THE PROCESS CONDITIONS OF AROMATIC OIL HYDROGENATION

  • Received:2012-06-28 Revised:2012-08-17 Online:2013-03-12 Published:2013-02-27

摘要: 采用BP神经网络模型建立了预测芳烃油加氢过程中稠环芳烃(PAHs)脱除率的方法。通过单因素实验方法,分别考察反应时间(2~10 h)、温度(240~320 ℃)、压力(5~9 MPa)对PAHs脱除率的影响。针对单因素实验各因素水平之间存在的漏点,将神经网络与单因素实验相结合,以matlab软件建立网络进行训练并预测漏点,用实验数据进行验证,确定芳烃油加氢的最佳条件为7 h,279 ℃,9 MPa,此条件下PAHs脱除率达到47.89%。在此工艺条件基础上,进一步研究剂油比、添加溶剂对PAHs脱除率的影响。结果表明,最佳剂油比为0.3,PAHs脱除率为51.02%; 添加甲苯溶剂时PAHs脱除率达到54.29%。

Abstract: Back-propagation (BP) neural network was used to establish a model to predict the removal rate of polycyclic aromatic hydrocarbons (PAHs) in aromatic oil during hydrogenation process. The effects of reaction time, temperature, and pressure on removing PAHs were investigated respectively with single-factor experimental method. Then, the obtained experimental results were used to build a training network by matlab software. The trained BP neural network was adopted to predict the isolated points existed among levels of single-factor experiments. Finally, the optimum process conditions of aromatic oil hydrogenation identified by the experimental verification were determined as follows: a reaction time of 7 h, a reaction temperature of 279 ℃ and reaction pressure of 9 MPa. Under such conditions, the PAHs removal rate reached 47.89%. Moreover, the influences of catalyst to feed ratio and solvent involved were studied based on the optimized conditions. Results showed that the PAHs removal rate could be 51.02% with catalyst to feed ratio of 0.3, and the PAHs removal rate further increased to 54.29% when adding toluene as solvent.