To monitor and analyze the periods when machinery or equipment is not operational.
- Méthodologies : Ingénierie, Conception de Produits, Gestion de projet
Equipment Downtime Tracking

Equipment Downtime Tracking
- Amélioration continue, Action corrective, Efficacité, Production allégée, Maintenance, Efficacité globale de l'équipement (OEE), Amélioration des processus, Efficacité de la production, Analyse des causes profondes
Objectif :
Comment il est utilisé :
- Involves recording the start and end times of downtime événements, along with the reasons for the stoppage. This data is then analyzed to identify root causes and implement corrective actions to improve equipment availability and overall equipment effectiveness (OEE).
Avantages
- Identifies root causes of production losses; Helps prioritize maintenance and improvement efforts.
Inconvénients
- Requires disciplined data collection; Can be difficult to implement without a dedicated system.
Catégories :
- Lean Sigma, Fabrication
Idéal pour :
- Improving the reliability and performance of production equipment in a manufacturing environment.
Equipment Downtime Tracking is particularly effective within industries like manufacturing, aerospace, and energy, where operational efficiency directly impacts economic viability and competitiveness. This methodology can be applied during various project phases, including initial equipment installation, routine maintenance schedules, and continuous improvement initiatives aimed at enhancing operational performance. Key participants in this tracking process typically include production managers, maintenance teams, and data analysts who collaborate to compile and scrutinize downtime data. Real-time data capture tools such as IoT sensors and software applications can assist in documenting machine status, which facilitates precise analysis of downtime events. Industries leveraging this approach often utilize findings to drive initiatives such as predictive maintenance, which anticipates failure before it occurs, thus reducing unplanned downtime. An example can be seen in automotive assembly lines, where meticulously tracking downtime events has dirigé to process refinements, allowing manufacturers to pivot quickly in response to emerging equipment issues and thereby optimize productivity. Furthermore, organizations that practice this methodology can identify recurring problem areas, leading to targeted investment in high-impact improvement initiatives, resulting in maximized equipment availability and reduced operational costs, ultimately enhancing their ability to meet customer demand more effectively.
Principales étapes de cette méthodologie
- Record the start and end times of each downtime event.
- Document the reasons for each equipment stoppage.
- Classify downtime events into categories for analysis.
- Analyze data to identify trends and patterns in downtime causes.
- Utilize root cause analysis techniques to investigate major issues.
- Develop and implement corrective actions based on analysis findings.
- Monitor equipment performance post-implementation of corrective actions.
- Review and adjust maintenance schedules as needed based on findings.
Conseils de pro
- Implement condition-based monitoring to correlate downtime events with equipment performance metrics.
- Use advanced data analytics tools to visualize downtime trends and prioritize root cause investigations based on frequency and impact.
- Establish cross-functional teams for regular review sessions focused on continuous improvement initiatives derived from downtime data.
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