By Alexandra Luchtai
In the automotive industry a five-minute production stop can cost up to €100,000. While preventive maintenance helps mitigate such risks, it’s often based on fixed intervals and may involve replacing components that are still fully operational: Many manufacturers still rely on static maintenance schedules or reactive repairs after failure. This approach either leads to unnecessary servicing or unexpected downtime. Predictive Maintenance turns this model on its head – using real-time operational data to make reliable predictions.
Predictive Maintenance with Machine Learning & AI as a core element of the Data-Driven Factory
Machine sensors continuously collect values such as temperature, vibration, sound, and pressure. AI-powered systems analyze this data on the fly to detect anomalies and early indicators of failure. These insights enable targeted, cost-effective maintenance before a breakdown occurs.
New developments like Reinforcement Learning take it a step further, dynamically optimizing maintenance plans by identifying ideal service windows based on real-world machine behavior and historical trends.
Data integration: The foundation for ML and AI in manufacturing
Yet, smart maintenance isn’t just about sounding alarms. Today’s AI and ML solutions go further – offering risk assessments, prioritizing actions, and supporting workforce planning. They don’t just reduce unplanned downtime – they help avoid quality issues caused by worn or faulty components.
Read the blog post by our IoT specialist Device Insight to find out what it takes for such solutions to develop their full potential and what this looks like in practice: