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.
Cite
CITATION STYLE
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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