The article examines the advantages and disadvantages of an algorithm used to determine the time interval for a monitored object to reach a specific vibration level for use in predictive maintenance in Industry 4.0. The studied algorithm will potentially predict how long before an object fails, helping to reduce downtime and maintain production flow
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