How can AI contribute to predictive maintenance in industries?

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AI plays a crucial role in predictive maintenance by utilizing real-time data analysis to foresee and prevent equipment failures. This is achieved through algorithms that analyze performance metrics and historical data, identifying patterns that may indicate impending issues. When AI provides real-time alerts based on predictive analysis, it empowers maintenance teams to act proactively rather than reactively, addressing potential problems before they escalate into costly downtime or major repairs.

In contrast, ignoring existing equipment performance data would undermine the effectiveness of predictive maintenance since historical data is essential for identifying trends and potential failure points. Requiring manual input for all maintenance decisions would make the process inefficient and would not leverage the full potential of AI in automating decision-making based on data analysis. Delaying maintenance until equipment failure negates the purpose of predictive maintenance, as it would lead to unexpected breakdowns and increased operational costs rather than preventing them through timely interventions.

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