Model predictive control (MPC) has become the most popular advanced control method in use today. Its main attractive features are (i) optimization of a model forecast over the available actuators (ii) estimation of the state of the system and disturbances from the process measurements, (iii) accounting for the process and actuator constraints, and (iv) accounting for full multivariable interactions. After its introduction in the process industries in the 1970s, MPC has today become a pervasive control technology in many industries, and is now being increasingly deployed for optimization of high-level functions such as minimizing energy consumption and maximizing product quality.
This short course is intended to introduce graduate students and practitioners to the theory and design of MPC systems.
The two days of lectures will cover the following topics.
06月29日
2015
06月30日
2015
注册截止日期
2017年05月22日 美国 Seattle
2017 模型预测控制研讨会
留言