Department of Electrical and Electronics Engineering, Ege University, 35100 Bornova, Izmir, Turkey.
ISA Trans. 2014 Mar;53(2):280-8. doi: 10.1016/j.isatra.2013.09.020. Epub 2013 Oct 17.
We develop a novel adaptive tuning method for classical proportional-integral-derivative (PID) controller to control nonlinear processes to adjust PID gains, a problem which is very difficult to overcome in the classical PID controllers. By incorporating classical PID control, which is well-known in industry, to the control of nonlinear processes, we introduce a method which can readily be used by the industry. In this method, controller design does not require a first principal model of the process which is usually very difficult to obtain. Instead, it depends on a fuzzy process model which is constructed from the measured input-output data of the process. A soft limiter is used to impose industrial limits on the control input. The performance of the system is successfully tested on the bioreactor, a highly nonlinear process involving instabilities. Several tests showed the method's success in tracking, robustness to noise, and adaptation properties. We as well compared our system's performance to those of a plant with altered parameters with measurement noise, and obtained less ringing and better tracking. To conclude, we present a novel adaptive control method that is built upon the well-known PID architecture that successfully controls highly nonlinear industrial processes, even under conditions such as strong parameter variations, noise, and instabilities.
我们开发了一种新颖的自适应调整方法,用于控制非线性过程的经典比例积分微分(PID)控制器,以调整 PID 增益,这是经典 PID 控制器难以克服的问题。通过将工业界熟知的经典 PID 控制应用于非线性过程的控制,我们引入了一种行业中易于使用的方法。在这种方法中,控制器设计不需要通常很难获得的过程的第一主模型。相反,它取决于从过程的测量输入输出数据构建的模糊过程模型。使用软限幅器将工业限制施加到控制输入上。该系统的性能在生物反应器上进行了成功测试,生物反应器是一个涉及不稳定性的高度非线性过程。多项测试表明,该方法在跟踪、抗噪性和自适应方面的成功。我们还将我们的系统性能与具有测量噪声的参数变化的工厂的性能进行了比较,并获得了更少的振铃和更好的跟踪。总之,我们提出了一种基于著名 PID 架构的新型自适应控制方法,该方法成功地控制了高度非线性的工业过程,即使在参数变化大、噪声和不稳定性等情况下也是如此。