4.4 Article

Adaptive fuzzy spiking neural P systems for fuzzy inference and learning

Journal

INTERNATIONAL JOURNAL OF COMPUTER MATHEMATICS
Volume 90, Issue 4, Pages 857-868

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/00207160.2012.743653

Keywords

spiking neural P systems; fuzzy spiking neural P systems; adaptive fuzzy spiking neural P systems; fuzzy reasoning; learning problem; 03B52; 47S40; 92B20; 94D05

Funding

  1. National Natural Science Foundation of China [61170030]
  2. Key Laboratory of Advanced Scientific Computation, Xihua University [S2jj2012-002]
  3. Sichuan Key Laboratory of Intelligent Network Information Processing [SGXZD1002-10]
  4. Importance Project Foundation of the Education Department of Sichuan province [12ZA163]
  5. Importance Project Foundation of Xihua University, China [Z1122632]

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Fuzzy spiking neural P systems (in short, FSN P systems) are a novel class of distributed parallel computing models, which can model fuzzy production rules and apply their dynamic firing mechanism to achieve fuzzy reasoning. However, these systems lack adaptive/learning ability. Addressing this problem, a class of FSN P systems are proposed by introducing some new features, called adaptive fuzzy spiking neural P systems (in short, AFSN P systems). AFSN P systems not only can model weighted fuzzy production rules in fuzzy knowledge base but also can perform dynamically fuzzy reasoning. It is important to note that AFSN P systems have learning ability like neural networks. Based on neuron's firing mechanisms, a fuzzy reasoning algorithm and a learning algorithm are developed. Moreover, an example is included to illustrate the learning ability of AFSN P systems.

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