Fuzzified Pipes Dataset to Predict Failure Rates by Hybrid SVR-PSO Algorithm

  • Soltani J
  • Kalanaki M
  • Soltani M
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Abstract

This paper proposes a Support Vector Regression (SVR) based on Fuzzified Input-output Variables which has good comprehensibility as well as satisfactory generalization capability. SVM provides a mechanism to predict data from training ones. Then, results from proposed Fuzzified SVR-PSO (FSVR-PSO) model are compared with other methods; comparative tests are performed using pipe failures data. The analysis and the experimental results show this method has high comprehensibility as well as satisfactory generalization capability.

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Soltani, J., Kalanaki, M., & Soltani, M. (2016). Fuzzified Pipes Dataset to Predict Failure Rates by Hybrid SVR-PSO Algorithm. Modern Applied Science, 10(7), 29. https://doi.org/10.5539/mas.v10n7p29

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