🔴 CASE 1: “Clean Inspection vs Dirty History”
A pressure vessel shows:
- Recent inspection: no detectable damage
- Historical data: high corrosion rate trend
- Operating conditions: unchanged
Question: What is the BEST RBI action?
A. Reduce inspection interval
B. Trust latest inspection only
C. Maintain/increase inspection and reassess PoF
D. Ignore historical data
👉 Answer: C
Why this is tricky:
Candidates trust “clean inspection.”
👉 API expects you to trust trend over snapshot.
🔴 CASE 2: “Low Probability, Catastrophic Consequence”
A pipeline:
- Has very low PoF
- Runs through a densely populated urban area
- Carries flammable toxic fluid
Question: What is the correct RBI decision?
- Reduce inspection due to low PoF
B. Treat as low risk
C. Prioritize due to high CoF
D. Ignore consequence
👉 Answer: C
Trap:
Low PoF fools candidates.
👉 High consequence dominates risk.
🔴 CASE 3: “Conflicting Data Crisis”
Inspection results:
- UT shows wall thinning
- Visual inspection shows no visible damage
- Corrosion model predicts moderate degradation
Question: Best action?
- Accept visual inspection
B. Ignore UT results
C. Investigate discrepancy and update RBI model
D. Average results
👉 Answer: C
Why tricky:
Examiners test if you:
👉 Resolve conflicts, not choose sides.
🔴 CASE 4: “Post-Repair Risk Illusion”
Equipment underwent:
- Major repair and thickness restoration
- No update to RBI model
- Same risk ranking remains
Question: What should be done?
- Accept existing risk ranking
B. Reduce inspection automatically
C. Update RBI model with new condition
D. Remove from inspection program
👉 Answer: C
Trap:
Repair ≠ automatic risk reduction
👉 RBI must be recalculated.
🔴 CASE 5: “Poor Data, High Stakes”
An RBI study shows:
- Limited inspection history
- Uncertain corrosion rates
- Equipment in critical service (toxic + high pressure)
Question: What is the BEST approach?
- Assume low risk due to lack of failures
B. Reduce inspection due to lack of data
C. Increase uncertainty factor and improve data quality
D. Ignore uncertainty
👉 Answer: C
Why this is hard:
Candidates confuse “no data” with “no risk”
👉 API logic: uncertainty increases risk
🧠 What these 5 Questions test?
They cover the core failure points:
✔ 1. Trend vs snapshot thinking
✔ 2. Consequence dominance
✔ 3. Data conflict resolution
✔ 4. Dynamic RBI updates
✔ 5. Uncertainty handling
🔥 Master Rule (Exam winner)
When facing case-study questions:
👉 Always choose the answer that:
✔ Uses ALL data
✔ Reassesses the model
✔ Increases caution with uncertainty
✔ Prioritizes consequence
✔ Avoids assumptions
