FuzzyLogic.jl : A Flexible Library for Efficient and Productive Fuzzy Inference
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Huom! Tiedosto avautuu julkiseksi: 09.11.2025
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This paper introduces FuzzyLOGIC.JL, a Julia library to perform fuzzy inference. The library is fully open-source and released under a permissive license. The core design principles of the library are: user-friendliness, flexibility, efficiency and interoperability. Particularly, our library is easy to use, allows to specify fuzzy systems in an expressive yet concise domain specific language, has several visualization tools, supports popular inference systems like Mamdani, Sugeno and Type-2 systems, can be easily expanded with custom user settings or algorithms and can perform fuzzy inference efficiently. It also allows reading fuzzy models from other formats such as Matlab. fis, FCL or FML. In this paper, we describe the library main features and benchmark it with a few examples, showing it achieves significant speedup compared to the Matlab fuzzy toolbox.
Emojulkaisu
2023 IEEE International Conference on Fuzzy Systems (FUZZ)
ISBN
979-8-3503-3228-5
ISSN
1558-4739
1544-5615
1544-5615
Aihealue
Kausijulkaisu
IEEE International Fuzzy Systems conference proceedings
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