IMPROVEBridging Predictive Maintenance and
Machine Learning for Enhanced Performance
and Sustainability
Reference Spoke Thematic AreaPartner CompaniesProject DurationFunding granted

Grant awarded
Machine Learning (ML) models
and technological solutions
supporting predictive maintenance in
industrial applications and energy systems.
DLVSystem SRL

Cal-Tek SRL
12 months381.666,40 €

353.631,52 €
360° Predictive MaintenanceProcess DataPredictive Maintenance AlgorithmsPredict machine downtimeMaintain high plant efficiencyMaintain high processed
product quality
The use of Artificial Intelligence
allows going beyond predictive maintenance
Production process monitoring platforms + Machine Learning Techniques → Analysis ToolsBenefitsUser assistance in optimal
management of machine downtime

Proposing solutions
more suitable for the identified problem
Verify in real-time if operators
are configuring the machine consistently
with the active production type
Create "small intelligences" capable of
autonomously managing data control activities
and coordinating with each other.
What does the future hold?Representing the expertise
of sector experts within computers
Software will be able to identify
causal links between machinery states
Optimize the multitude of parameters of interconnected
machinery, finding globally "optimal" configurations
Instead of "local" optimums obtained
by optimizing individual components of a production line
The global market challenge requires
working with maximum efficiency
in every detail of work
Production processes have a complexity
that transcends human capability
The level of sensor technology,
the ability to process large amounts of collected data,
and to represent the information "distilled" from them
justifies the use
of Artificial Intelligence
techniques
not to replace humans
but to assist them,
so that decisions are made
"objectively" and quickly