Artificial Neural Networks and Fuzzy Logic in Nondestructive Evaluation

نویسندگان

  • Ryszard SIKORA
  • Piotr BANIUKIEWICZ
  • Tomasz CHADY
  • Przemyslaw LOPATO
  • Grzegorz PSUJ
چکیده

The paper carried a brief overview of artificial intelligence algorithms applicable to nondestructive testing. It focuses on two methods: artificial neural networks and fuzzy logic. Selected examples of applications of these methods in digital radiography and eddy current method are given.

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تاریخ انتشار 2012