Predictive Maintenance uses data to estimate when an asset will need service. The aim is to fix equipment just in time, not too early and not after a failure. It reduces unplanned downtime, improves safety, and lowers total maintenance cost.
Traditional maintenance was reactive or time based. Teams repaired after breakdowns or on fixed intervals. Sensors, cheap computing, and machine learning made a new path possible. By monitoring condition and spotting patterns that precede failure, organisations can plan service at the right moment and avoid waste.
Predictive Maintenance improves reliability with fewer scheduled stops. It supports lean flow and stable quality. Benefits depend on good data and tight integration with planning. Start with a small set of high value assets. Prove value, then scale. Combine models with expert judgment, and update thresholds as conditions change.