Kalite 4.0

İnsansız üretimin yapıldığı, robotik sistemler ile otomasyonun üretimin her aşamasında sağlandığı, yapay zeka, makine öğrenimi, bulut bilişim, nesnelerin interneti, katmanlı imalat, simülasyon, akıllı fabrikalar, büyük veri, bulut bilişim ve artırılmış gerçeklik/sanal gerçeklik gibi bileşenlere sahip olan Endüstri 4.0’ın başlaması ile üretimin ana faktörlerinden biri olan kalitenin bu bileşenlerden etkilenmeden klasik kalite anlayışı ile kalması beklenemeyecek bir durumdur. Kalite doğrudan üretim ile ilgili olan bir unsurdur ve kullanıma uygunluk derecesidir. Endüstri 4.0’ın getirdiği teknolojik gelişmeler ile artık kalitenin daha düşük maliyet ile ve müşteri beklentilerinin de ötesinde bir mükemmeliyetle sağlanması beklenmektedir. Bu çalışmada Endüstri 4.0 bileşenlerinin kalite performans faktörlerine etkisi incelenerek Kalite 4.0 kavramı açıklanacaktır.

Quality 4.0

Industry 4.0 includes unmanned production, robotic systems and automation at every stage of production, including artificial intelligence, machine learning, cloud computing, internet of objects, layered manufacturing, simulation, smart factories, big data, cloud computing and augmented reality / virtual reality. Quality is one of the main factors of production. Therefore quality is affected by these components of Industry 4.0. So quality can not be expected to remain with classical quality understanding. Quality is directly related to production and the degree of suitability for use. With the technological advances brought by Industry 4.0, quality is expected to be achieved with lower cost and perfection beyond customer expectations. In this study, the effect of Industry 4.0 components on quality performance factors will be examined and the concept of quality 4.0 will be explained.

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