Quality Improvement using Data Mining in Manufacturing Processes

  title={Quality Improvement using Data Mining in Manufacturing Processes},
  author={Shu-Guang He and Zhen He and Gang Alan Wang},
Nowadays, manufacturing enterprises have to stay competitive in order to survive the competition in the global market. Quality, cost and cycle time are considered as decisive factors when a manufacturing enterprise competes against its peers. Among them, quality is viewed as the more critical for getting long-term competitive advantages. The development of information technology and sensor technology has enabled large-scale data collection when monitoring the manufacturing processes. Those data… CONTINUE READING


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