Modelling software and machine learning improve production efficiency

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作者
Da Silva, Alessandra
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Floors - Learning systems;
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Modern manufacturing processes produce a vast volume of data, and as sensors become more numerous on industrial shop floors with the spin-up of the IIoT, even more data is now available. In the past, data was typically used in a very conservative manner—primarily to let users know, in retrospect, what happened on the shop floor. The data could then be used in regulatory reports, and in some cases, to discover trends and identify issues.
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页码:35 / 37
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