Gao Tianyi, Yin Shen, Gao Huijun, Yang Xuebo, Qiu Jianbin, Kaynak Okyay
IEEE Trans Neural Netw Learn Syst. 2018 Dec;29(12):5870-5879. doi: 10.1109/TNNLS.2018.2808700. Epub 2018 Apr 5.
An intelligent data-driven predictive control strategy is proposed in this paper. The predictive controller is designed by combining predictive control and local weighted projection regression. The presented control strategy needs less prior knowledge and has fewer parameters that are hard to determine compared to other data-driven predictive controller, e.g., the one in dynamic partial least square (PLS) framework. Furthermore, the proposed predictive controller performs better in the control of nonlinear processes and is able to update its parameters based on the online data. The predictive model validity and intelligence of the control strategy are guaranteed by the online updating strategy to a certain degree. The control performance of the proposed predictive controller against the model predictive control (MPC) in dynamic PLS framework is illustrated through the simulation of a typical numerical example and the benchmark of a continuous stirred tank heater system. It can be observed from the simulation that the proposed MPC strategy has higher prediction precision and stronger ability in coping with nonlinear dynamic processes which are quite common in practical applications, for instance, the industrial process.
本文提出了一种智能数据驱动的预测控制策略。该预测控制器通过结合预测控制和局部加权投影回归进行设计。与其他数据驱动的预测控制器(例如动态偏最小二乘(PLS)框架中的控制器)相比,所提出的控制策略所需的先验知识较少,难以确定的参数也较少。此外,所提出的预测控制器在非线性过程控制中表现更好,并且能够根据在线数据更新其参数。在线更新策略在一定程度上保证了控制策略的预测模型有效性和智能性。通过一个典型数值示例的仿真以及连续搅拌釜加热器系统的基准测试,展示了所提出的预测控制器相对于动态PLS框架中的模型预测控制(MPC)的控制性能。从仿真中可以看出,所提出的MPC策略具有更高的预测精度和更强的应对实际应用中常见的非线性动态过程(例如工业过程)的能力。