Model-Free Fuzzy Control Paradigm: Theoretical Challenges and Real-World Successes
The concept of a fuzzy controller, first introduced by E.H. Mamdani in 1974, was revolutionary and created a new and powerful knowledge-based model-free control paradigm. The underlying idea was to construct a nonlinear controller without a mathematical model of the system to be controlled. Instead, fuzzy sets, fuzzy logic, fuzzy rules, and fuzzy reasoning are used to intuitively capture, represent, and process a human operator's control strategy in order to build a controller. This is sensible because system behavior and dynamics are reflected in human control expertise and therefore implicitly utilized in the controller design. This paradigm has proven to be successful in a variety of real-world applications and commercial products since the early 1980s.
Not requiring a mathematical model in controller design significantly reduces product development time and cost, making the paradigm more practically useful than model-based control approaches. It is challenging to attain an accurate mathematical model for any real-world system, and modeling efforts are typically time-consuming and costly. This is partially because finding a plausible mathematical model structure is a difficult task to begin with, and validating it is another challenge. This explains why the PID controller, a simple, century-old model-free controller, is controlling more than 90% of control system applications worldwide, despite the existence of numerous model-based control theories developed over many decades.
The knowledge-based model-free approach, while practical, lacks mathematical rigor, which has limited its acceptance. A fuzzy controller is widely treated as a black box whose input-output analytical structure is unknown. To bridge this gap, we have developed a mathematical model-free fuzzy control theory that provides a rigorous and insightful perspective on the behavior and effectiveness of fuzzy controllers.
In this presentation, we will explore the benefits of our approach by discussing example type-1 and interval type-2 fuzzy controllers, and demonstrating how to derive their analytical structures. With this information, we can gain a deeper understanding of how and why fuzzy controllers work and identify connections between fuzzy controllers and conventional controllers. We will also examine the differences between type-1 and interval type-2 fuzzy controllers, and their relative merits and pitfalls. With this approach, we can encourage acceptance of fuzzy control in safety-critical fields, such as medicine and nuclear engineering, where black box controllers are not currently acceptable.
Complemented with other fuzzy control approaches, our model-free fuzzy control theory
is mathematically rigorous and offers unique analysis and design tools not available elsewhere.