Predictive analytics is transforming maintenance practices in mining fixed-plant circuits such as SAG mills, crushers, and conveyors by using sensor data, vibration monitoring, and machine learning to anticipate equipment failures, enabling a shift from reactive to proactive maintenance strategies(Predictive Maintenance in Mining: Optimizing Equipment Life, n.d.).
This approach reduces unplanned downtime by approximately 30–50%, extends equipment service life, and lowers maintenance costs by about 18–25% through targeted, condition-based interventions(Enhancing Mining Operations with Predictive Maintenance Solutions, n.d.).
Keyways cost savings are achieved:
- Early Fault Identification: Detects potential problems weeks in advance (e.g., crusher bearing irregularities), allowing planned maintenance and avoiding major failures.
- Maintenance Optimization: Shifts from time-based schedules to condition-based maintenance, reducing unnecessary tasks and labor overtime.
- Improved Resource Utilization: Minimizes spare-parts waste and emergency repairs, with documented cases preventing 4–226 hours of downtime per event.
Reference:
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Enhancing Mining Operations with Predictive Maintenance Solutions. (n.d.). Retrieved January 20, 2026, from https://www.assetwatch.com/blog/predictive-maintenance-mining-equipment
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Predictive Maintenance in Mining: Optimizing Equipment Life. (n.d.). Retrieved January 20, 2026, from https://discoveryalert.com.au/predictive-maintenance-mining-operations-efficiency-2025/



