Design of an Electro-Hydraulic System Using Neuro-Fuzzy Techniques
P. J. Costa Branco, J. A. Dente

TL;DR
This paper develops a neuro-fuzzy based learning control system for an electro-hydraulic actuator, enhancing real-time tracking accuracy and autonomy in industrial drive systems.
Contribution
It introduces a neuro-fuzzy modeling and control approach for electro-hydraulic systems, demonstrating improved tracking and learning capabilities through experimental validation.
Findings
Enhanced tracking performance in electro-hydraulic actuators
Real-time learning and adaptation demonstrated
Neuro-fuzzy controller improves accuracy over conventional methods
Abstract
Increasing demands in performance and quality make drive systems fundamental parts in the progressive automation of industrial processes. Their conventional models become inappropriate and have limited scope if one requires a precise and fast performance. So, it is important to incorporate learning capabilities into drive systems in such a way that they improve their accuracy in realtime, becoming more autonomous agents with some degree of intelligence. To investigate this challenge, this chapter presents the development of a learning control system that uses neuro-fuzzy techniques in the design of a tracking controller to an experimental electro-hydraulic actuator. We begin the chapter by presenting the neuro-fuzzy modeling process of the actuator. This part surveys the learning algorithm, describes the laboratorial system, and presents the modeling steps as the choice of actuator…
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Taxonomy
TopicsHydraulic and Pneumatic Systems · Advanced Sensor and Control Systems · Control Systems in Engineering
