What is Mean Time Between Failures (MTBF)?

December 8, 2025
Dr.-Ing. Simon Spelzhausen

Mean Time Between Failures (MTBF) is a core maintenance metric used to measure the predicted elapsed time between inherent failures of a mechanical or electronic system during normal system operation. It is a critical indicator of reliability for repairable assets.

Unlike Mean Time To Failure (MTTF), which applies to non-repairable (disposable) items, MTBF assumes the asset will be repaired and returned to service.

The MTBF Formula

To calculate MTBF, divide the total uptime of the asset by the number of failures that occurred within that specific time period.

MTBF =
Total Operational Time Number of Failures

Note: Operational time must exclude planned downtime. Failures must be discrete events requiring repair.

Where:

  • Total Operational Time: The sum of actual run-hours or cycles. Note: This excludes downtime (repair time, scheduled maintenance, or supply delays).
  • Number of Failures: The count of discrete, unplanned failure events that required corrective maintenance to restore functionality.

Step-by-Step Calculation Example

Scenario: A facility operates a fleet of packaging machines. To determine reliability, the maintenance manager selects a clear measurement window (e.g., Q1).

  1. Data Collection: The fleet logs a total of 7,500 operating hours.
  2. Failure Counting: During this time, the system experiences 3 distinct breakdowns requiring repair.
  3. Calculation:
MTBF =
7,500 Hours 3 Failures
= 2,500 Hours

Interpretation: On average, this specific fleet operates for 2,500 hours before encountering a failure. This baseline allows the facility to schedule preventative maintenance just prior to the 2,500-hour mark to prevent unplanned downtime.

When to Use MTBF

MTBF is not a universal metric; it is context-dependent. It is the appropriate standard when:

  • Assets are Repairable: The system is meant to be fixed, not replaced (e.g., motors, pumps, conveyor belts).
  • Reliability Benchmarking is Required: You need to compare the robustness of Machine A vs. Machine B, or Vendor X vs. Vendor Y.
  • Calculating Availability: MTBF is a necessary variable for determining System Availability when paired with Mean Time To Repair (MTTR).
Availability Formula
Availability =
MTBF MTBF + MTTR
× 100%

This formula calculates the probability that an asset is operational at any given time, factoring in both reliability (MTBF) and repair speed (MTTR).

Limitations and Nuances

While MTBF is industry-standard, it is often misinterpreted. To maintain data integrity, organizations must recognize what MTBF does not tell you:

  • It is not a prediction for a single unit: MTBF is a statistical average derived from a population. A single asset may fail well before or after the MTBF.
  • It assumes a constant failure rate: MTBF is most accurate during the "useful life" phase of the Bathtub Curve, where failure rates are random and constant, rather than during early burn-in or late-stage wear-out.
  • It masks severity: One failure taking 100 hours to fix impacts the business differently than 10 failures taking 1 minute each, yet they affect the failure count differently.

Best Practices for Measurement

To ensure your MTBF data is actionable and authoritative:

Practice Description
Standardize "Failure" Clearly define what constitutes a failure. Exclude transient alerts or micro-stops unless they require human intervention/repair.
Exclude Planned Downtime Do not subtract scheduled maintenance from your operational time; simply do not count it as "run time."
Segment Data Calculate MTBF by asset class or failure mode. An aggregate MTBF for an entire factory is usually too diluted to be useful.
Report Confidence Always state the sample size. "MTBF = 2,500 hours" is less authoritative than "MTBF = 2,500 hours (based on 3 events in 7,500 hours)."

Practical Applications in Maintenance Strategy

Leading organizations utilize MTBF for:

  1. Optimizing PM Schedules: Setting inspection intervals shorter than the MTBF to catch degradation before failure.
  2. Inventory Management: Determining spare parts stocking levels based on predicted failure frequency.
  3. Root Cause Analysis (RCA): Flagging assets with a declining MTBF for immediate investigation.
  4. Lifecycle Costing: Estimating the Total Cost of Ownership (TCO) by predicting repair frequency over the asset's life.

The Future: MTBF and Predictive Maintenance

While MTBF remains a vital lagging indicator, modern reliability strategies combine it with Predictive Maintenance (PdM). Using IoT sensors and condition monitoring allows teams to move from statistical averages (MTBF) to real-time asset health monitoring, detecting degradation long before a "failure" event occurs.

Improve Asset Reliability with Makula CMMS

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FAQs

Is MTBF the same as MTTF?

No. MTBF applies to repairable equipment that can fail multiple times. MTTF (Mean Time To Failure) is for non-repairable items and measures the time until the single end-of-life failure.

Does MTBF include repair time?

No. MTBF measures only the uptime between failures. Repair time is measured separately as MTTR (Mean Time To Repair).

How many failures do I need for a reliable MTBF?

There is no fixed minimum, but more failure events and a longer observation window increase confidence. Very small datasets (e.g., fewer than five failures) should be interpreted cautiously.

How do I calculate MTBF for many identical units?

Add all operating hours across identical units, then divide that total by the number of failures across those units. This provides a fleet-wide MTBF.

Should MTBF be publicised to customers?

Yes, but only with proper context. Always include the observation period, number of units observed, and total failures so customers can evaluate the reliability of the data.

Dr.-Ing. Simon Spelzhausen
Co Founder & Chief Product Officer

Simon Spelzhausen, an engineering expert with a proven track record of driving business growth through innovative solutions, honed through his experience at Volkswagen.