Neuro Fuzzy Systems: State-of-the-Art

From Simple Sci Wiki
Revision as of 15:56, 24 December 2023 by SatoshiNakamoto (talk | contribs) (Created page with "Title: Neuro Fuzzy Systems: State-of-the-Art Research Question: How can neuro fuzzy systems be effectively integrated to solve complex problems? Methodology: The study investigates three types of neuro-fuzzy systems: cooperative, concurrent, and fused models. Each model has its own advantages and disadvantages, which are analyzed and compared. Results: The research found that fused neuro-fuzzy systems are the most effective as they combine the learning capabilities of...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search

Title: Neuro Fuzzy Systems: State-of-the-Art

Research Question: How can neuro fuzzy systems be effectively integrated to solve complex problems?

Methodology: The study investigates three types of neuro-fuzzy systems: cooperative, concurrent, and fused models. Each model has its own advantages and disadvantages, which are analyzed and compared.

Results: The research found that fused neuro-fuzzy systems are the most effective as they combine the learning capabilities of both systems. They share data structures and knowledge representations, allowing for better problem solving.

Implications: The findings suggest that fused neuro-fuzzy systems can be applied to a wide range of scientific and engineering areas to solve real-world problems. This integration of ANN and FIS can lead to more accurate and adaptive intelligent systems.

Link to Article: https://arxiv.org/abs/0405011v1 Authors: arXiv ID: 0405011v1