题目:Retrofit  Self-Optimizing Control
时间:10月18日(周二)13:30
地点:延长校区Ⅳ403
简介:After 15 year  development, it is still hard to find any real application of the  self-optimizing control (SOC) strategy, although it can achieve optimal or near  optimal operation in industrial processes without repetitive real-time  optimization. This is partially because of the misunderstanding that the SOC  requires to completely reconfigure the entire control system which is generally  unacceptable for most process plants in operation, even though the current one  may not be optimal. To alleviate this situation, this paper proposes a retrofit  SOC methodology aiming to improve the optimality of operation without change of  existing control systems. In the new retrofitted SOC systems, the controlled  variables (CVs) selected are kept at constant by adjusting setpoints of existing  control loops, which therefore constitutes a two layer control architecture. CVs  made from measurement combinations are determined to minimise the global average  losses. A subset measurement selection problem for the global SOC is solved  though a branch and bound algorithm. The standard testbed Tennessee Eastman (TE)  process is studied with the proposed retrofit SOC methodology. The optimality of  the new retrofit SOC architecture is validated by comparing two state of art  control systems by Ricker and Larsson et al., through steady state analysis as  well as dynamic simulations.
报告人:英国Cranfield大学,曹毅教授
报告人简介:Yi Cao is a  Reader in Control Systems Engineering, Cranfield University. He Obtained PhD in  Control Engineering from the University of Exeter in 1996, MSc in Industrial  Automation from Zhejiang University, China in 1985. His main research interest  is in developing systematic approaches to solve various operational problems  involved in industrial processes using both models and data. Dr Cao is the main  inventor of the Inferential Slug Control technology to mitigate slugging of  multiphase flow in offshore oil and gas production systems. A successful field  trial has showed that the technology was able to increase oil production by 10%.  This achievement received the Innovation Award from the East England Energy  Group (EEEgr) in 2010. His recent research is focusing on data driven  self-optimizing control methodology. By applying it to water flooding process  for oil enhanced recovery, it can achieve near optimal operation in spite of the  uncertainties of oil reservoirs. His research also covers data driven condition  monitoring approaches for fault diagnosis an prognosis.