Predictive maintenance
Anyone who can make reliable, useful maintenance predictions is one step ahead of the competition. In the age of digitalisation, more than Big Data is required for such predictions. To derive correct maintenance scheduling recommendations from the sensor data, we therefore compare them with long-term empirical values from the igus® test database.
In automotive production, the line never stops. On average, an engine comes off the assembly line every 14 seconds. To avoid unplanned downtime and system breakdowns, many German and international automotive factories are already using modern maintenance concepts with predictive maintenance.
Because technologies supported by the Industrial Internet of Things are enjoying greater acceptance in factory environments, even more components with integrated intelligence are being produced. This is leading to the emergence of a new generation of smart plastics capable of constantly monitoring themselves and providing performance data and early warning of critical wear. These smart plastics can be used to increase plant productivity, maximise service life, and reduce costs thanks to condition monitoring and predictive maintenance.
Energy chains in gantry systems ensure that moving power and data cables and pneumatic lines are protected and reliably guided. To counteract problems on long travels, several technology companies are working with igus on the optimum integration of various sensor systems into modular gantry solutions for automation.
igus makes it easy for all interested parties here – with the smart selection aid for smart plastics. This is an interactive online tool that guides users to their first networked product for Industry 4.0 with just a few targeted questions.