硕士生导师
教师拼音名称:zhangfangkun
电子邮箱:
入职时间:2019-09-02
学历:博士研究生
性别:男
联系方式:18554911864
学位:工学博士
毕业院校:大连理工大学
学科:化学工程
控制理论与控制工程最后更新时间:..
关键字:EXTRACTIVE DISTILLATION; DESIGN; ETHER
摘要:In this paper, an intelligent control strategy based on back propagation neural network (BPNN) is proposed for product composition control in pressure-swing distillation (PSD) processes. A data-driven intelligent controller based on BPNN was combined with PID control instead of traditional composition controllers to avoid the problem that composition is difficult to measure online in real-time. The intelligent controllers are used to predict temperature set point in composition-temperature cascade control by using the process iables easy to measure, e.g., reboiler duty, thus avoiding composition measurement. The critical iables for output prediction are analyzed by correlation analysis to present the relationship between the output iables and input iables, then to train highly cor iables by BPNN. Two typical triple-columns PSD processes, i.e., Ethanol/THF/ Water and ACN/IPA/Water, were used to verify the reliability and accuracy of the intelligent controllers under /- 20% of feed flow and composition disturbances. Results demonstrated that the proposed intelligent control strategy presents good dynamic performance without the composition analyzer. This study is significant in improving dynamic performance and solving practical application problems by combining the traditional PID control and data-driven intelligent control.
卷号:183
期号:-
是否译文:否