Using Fuzzy Quality Function Deployment in Improving Reliabality of Wind Power Systems

This paper used fuzzy quality function deployment to investigate customer requirements and technical requirements associated with wind power s y tems to figure out possible recommendations which result in optimizing design of wind power systems, increasing customer satisfaction, and enhancing reliability. I n the same way, correlation among customers’ requirements and technical requirements are discovered so prioritiza tion of technical requirements have been analyzed to be con sidered for optimizing future designs of wind power systems .

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