Plant Layout 4.0
Keywords:
IIOT, OEE, Operations, Distribution, IndustryAbstract
This work immerses us in project design considerations when implementing real-time data collection tools in the plant, also known as internet of things technology, necessary to optimize the management of industrial operations.
A wrong conception that does not take into account significant differences regarding distribution by process versus distribution by product will inevitably involve going through a series of difficulties that cause the results obtained to not be translated into information, necessary for the search for continuous improvement.
The conclusions are alarming, presenting an initial situation of OEE monitoring of 88%, in contrast to a reality fourteen points lower, 74%. This gap will cause not to attack the elimination of waste, in search of optimization of the company's income statement. We will see that this difference will be a consequence of the incorrect imputation of rework generated when monitoring the activity based on the occupation time of the operators, instead of doing so on the effective time in producing good units continuously.
The following research is of the descriptive type methodology, based on a collection of empirical data taken asynchronously during the year 2023 on a sample universe defined by a manufacturing company dedicated to the production of commercial weighing instruments for the Argentine and Latin American markets.
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References
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