Load sharing reliability block diagrams (RBDs) play a critical role in advanced reliability engineering within Six Sigma. They go beyond simple series and parallel reliability block diagrams. They capture real-world behavior where components share stress, degrade together, and influence each other’s failure rates. Because of that, they help teams model systems more accurately and make better design and process decisions.
This guide explains load sharing RBDs in a practical, Six Sigma-focused way. You will learn how they work, why they matter, how to model them, and how to apply them in real projects.
- What are Load Sharing RBDs?
- Why Load Sharing Matters in Six Sigma
- How Load Sharing Differs from Traditional RBDs
- Real-World Examples of Load Sharing Systems
- Basic Concept of Load Redistribution
- Modeling Load Sharing Systems
- Markov Modeling for Load Sharing RBDs
- Failure Rate Adjustment in Load Sharing
- Weibull Distribution in Load Sharing Systems
- Monte Carlo Simulation for Load Sharing
- Example: Two-Pump Load Sharing System
- Comparison with Simple Parallel Model
- Integration with Six Sigma DMAIC
- Role in FMEA (Failure Modes and Effects Analysis)
- Design Strategies for Load Sharing Systems
- Load Sharing vs Standby Redundancy
- Maintenance Implications
- Data Requirements for Load Sharing Models
- Common Mistakes in Load Sharing Analysis
- Software Tools for Load Sharing RBDs
- Example: Three-Component Load Sharing System
- Simulation Results Example
- Sensitivity Analysis
- Applications Across Industries
- Linking Load Sharing to CTQs
- Advanced Topics
- Practical Implementation Tips
- Example Case Study
- Key Takeaways
- Conclusion
What are Load Sharing RBDs?
Load sharing reliability block diagrams (RBDs) model systems where multiple components operate together and share a load. Unlike standard parallel systems, the failure of one component increases the stress on the remaining components.
In a typical parallel RBD:
- Components operate independently
- Failure of one does not affect others

In contrast, load sharing systems behave differently:
- Components share workload
- Failure redistributes load
- Remaining components degrade faster

Because of this interaction, simple reliability formulas no longer apply.
Why Load Sharing Matters in Six Sigma
Six Sigma focuses on reducing variation and improving process capability. Reliability plays a major role in that goal. When systems fail unpredictably, variation increases and performance drops.
Load sharing RBDs help teams:
- Predict realistic system behavior
- Identify hidden risks
- Improve design robustness
- Optimize maintenance strategies
Moreover, they support DMAIC and DFSS initiatives.
Key Benefits
| Benefit | Impact on Six Sigma |
|---|---|
| Better modeling accuracy | Reduces estimation errors |
| Insight into failure interactions | Improves root cause analysis |
| Supports risk mitigation | Enhances FMEA effectiveness |
| Enables smarter design | Improves CTQ performance |
How Load Sharing Differs from Traditional RBDs
Traditional RBDs assume independence. That assumption simplifies calculations. However, it often leads to overly optimistic reliability estimates.
Load sharing introduces dependency.
Comparison Table
| Feature | Traditional Parallel RBD | Load Sharing RBD |
|---|---|---|
| Independence | Yes | No |
| Load distribution | Fixed | Dynamic |
| Failure impact | Isolated | Shared |
| Modeling complexity | Low | High |
| Accuracy | Moderate | High |
Real-World Examples of Load Sharing Systems
Many systems rely on load sharing. You see them across industries.
Manufacturing Example
Consider two pumps running in parallel. Both handle fluid flow.
- Each pump runs at 50% capacity
- If one fails, the other jumps to 100%
- Increased load accelerates wear
Electronics Example
Think about power supplies:
- Multiple units share electrical load
- Failure of one increases current in others
- Thermal stress rises
Aerospace Example
Aircraft engines often share thrust loads. A failure forces others to compensate.
Basic Concept of Load Redistribution
Load redistribution drives system behavior. When one component fails:
- Load shifts instantly
- Stress increases
- Failure rate rises
This change creates a time-dependent reliability model.
Simple Illustration
| State | Components Active | Load per Component | Failure Rate |
|---|---|---|---|
| Initial | 2 | 50% | Low |
| After 1 failure | 1 | 100% | High |
Modeling Load Sharing Systems
You cannot rely on simple formulas. Instead, you must use advanced methods.
Common Approaches
- State-space models
- Markov models
- Simulation (Monte Carlo)
- Stress-strength models
Each approach has trade-offs.
Markov Modeling for Load Sharing RBDs
Markov models work well for load sharing systems. They capture state transitions.
Example: Two-Component System
States:
- State 0: Both components working
- State 1: One failed
- State 2: System failed
Transition rates change based on load.
Transition Table
| From State | To State | Description |
|---|---|---|
| 0 | 1 | One component fails |
| 1 | 2 | Remaining component fails |
Depending on the system state, the failure rate will change.
Failure Rate Adjustment in Load Sharing
Failure rate increases when load increases.
You can model this using acceleration factors.
Example
| Load Level | Failure Rate Multiplier |
|---|---|
| 50% | 1.0 |
| 75% | 1.5 |
| 100% | 2.5 |
This relationship often comes from testing or historical data.
Weibull Distribution in Load Sharing Systems
The Weibull distribution fits many reliability problems. It works especially well for wear-out mechanisms.
In load sharing systems:
- Shape parameter (β) captures failure mode
- Scale parameter (η) changes with load
Example
| Load Condition | β | η (hours) |
|---|---|---|
| Normal load | 2.0 | 10,000 |
| Full load | 2.0 | 6,000 |
Notice how increased load reduces life.
Monte Carlo Simulation for Load Sharing
Simulation provides flexibility. It handles complex interactions.
Steps
- Define system structure
- Assign failure distributions
- Simulate time to failure
- Update load after failure
- Repeat thousands of times
Benefits
- Captures non-linear behavior
- Handles multiple components
- Provides distribution outputs
Example: Two-Pump Load Sharing System
Let’s walk through a simple example.
Assumptions
- Two identical pumps
- Each runs at 50% load initially
- Failure rate at 50% load: 0.001 failures/hour
- Failure rate at 100% load: 0.003 failures/hour
Step 1: Initial State
Both pumps operate. System failure occurs only if both fail.
Step 2: First Failure
One pump fails. The remaining pump takes full load.
Step 3: Increased Risk
Failure rate triples for the remaining pump.
Results Table
| Scenario | Time to First Failure | Time to Second Failure |
|---|---|---|
| Low load | Long | Shorter |
| High load | Shorter | Much shorter |
Comparison with Simple Parallel Model
If you ignore load sharing:
- You assume constant failure rates
- You overestimate reliability
Comparison Table
| Model | Estimated MTBF |
|---|---|
| Parallel (independent) | 15,000 hours |
| Load sharing | 11,000 hours |
That gap can lead to poor decisions.
Integration with Six Sigma DMAIC
Load sharing RBDs fit naturally into Six Sigma’s DMAIC framework.
Define Phase
- Identify critical systems
- Define reliability CTQs
Measure Phase
- Collect failure data
- Determine load conditions
Analyze Phase
- Build load sharing models
- Identify weak points
Improve Phase
- Redesign load distribution
- Add redundancy
Control Phase
- Monitor system performance
- Update models with new data
Role in FMEA (Failure Modes and Effects Analysis)
Load sharing improves FMEA accuracy.
Traditional FMEA assumes independent failures. That assumption misses cascading effects.

Enhanced FMEA Table
| Component | Failure Mode | Effect | Load Impact | Severity |
|---|---|---|---|---|
| Pump A | Bearing failure | Reduced flow | Pump B overload | High |
| Pump B | Overheating | System shutdown | None | Critical |
Design Strategies for Load Sharing Systems
Engineers can improve reliability through design.
Common Strategies
- Add redundancy
- Balance load evenly
- Limit overload capacity
- Use stronger materials
Design Comparison
| Strategy | Benefit | Trade-Off |
|---|---|---|
| Redundancy | Higher reliability | Cost |
| Load balancing | Reduced stress | Complexity |
| Oversizing components | Longer life | Weight/space |
Load Sharing vs Standby Redundancy
These two concepts often get confused.
Key Differences
| Feature | Load Sharing | Standby Redundancy |
|---|---|---|
| Operation | Simultaneous | Sequential |
| Load distribution | Shared | Single active unit |
| Failure response | Load increases | Backup activates |
Maintenance Implications
Load sharing systems require careful maintenance planning.
Challenges
- Hidden wear accumulation
- Sudden overload failures
- Uneven degradation
Maintenance Strategies
| Strategy | Description |
|---|---|
| Condition monitoring | Track load and stress |
| Predictive maintenance | Use failure models |
| Load rotation | Balance wear |
Data Requirements for Load Sharing Models
Accurate modeling depends on good data.
Required Data Types
- Failure times
- Load levels
- Environmental conditions
- Maintenance history
Data Quality Table
| Data Quality | Impact |
|---|---|
| High | Accurate predictions |
| Medium | Moderate uncertainty |
| Low | Misleading results |
Common Mistakes in Load Sharing Analysis
Teams often make avoidable errors.
Frequent Issues
- Assuming independence
- Ignoring load redistribution
- Using constant failure rates
- Skipping validation
Impact Table
| Mistake | Consequence |
|---|---|
| Independence assumption | Overestimated reliability |
| No load modeling | Missed risks |
| Poor data | Wrong decisions |
Software Tools for Load Sharing RBDs
Several tools support advanced modeling.
Popular Options
| Tool | Capability |
|---|---|
| ReliaSoft BlockSim | RBD + simulation |
| MATLAB | Custom modeling |
| Python (SciPy) | Flexible simulation |
| Minitab | Limited reliability tools |
Example: Three-Component Load Sharing System
Now consider a more complex case.
System Description
- Three components
- Equal load sharing initially
- Failure redistributes load
Load Distribution
| Active Components | Load per Component |
|---|---|
| 3 | 33% |
| 2 | 50% |
| 1 | 100% |
Failure Rate Multipliers
| Load | Multiplier |
|---|---|
| 33% | 1.0 |
| 50% | 1.8 |
| 100% | 3.0 |
Simulation Results Example
After running a Monte Carlo simulation:
| Metric | Value |
|---|---|
| Mean system life | 8,500 hours |
| Std deviation | 1,200 hours |
| Probability of failure < 5,000 hours | 10% |
Sensitivity Analysis
Sensitivity analysis reveals key drivers.
Example
| Parameter | Impact on Reliability |
|---|---|
| Load multiplier | High |
| Number of components | Medium |
| Base failure rate | High |
Applications Across Industries
Load sharing RBDs apply widely.
Industry Examples
| Industry | Application |
|---|---|
| Manufacturing | Pumps, conveyors |
| Energy | Power grids |
| Aerospace | Engines |
| IT | Server clusters |
Linking Load Sharing to CTQs
Critical-to-quality (CTQ) metrics often depend on reliability.
Example
| CTQ | Load Sharing Impact |
|---|---|
| Uptime | Direct |
| Throughput | Moderate |
| Cost | Indirect |
Advanced Topics
Non-Equal Load Sharing
Not all systems share load equally.
- Some components take more stress
- Models must reflect imbalance
Time-Dependent Load Sharing
Load may change over time which requires time-dependent RBDs.
- Startup conditions differ
- Environmental factors matter
Practical Implementation Tips
Start simple. Then refine.
Best Practices
- Use historical data
- Validate models with real failures
- Collaborate with design engineers
- Iterate frequently
Example Case Study
A chemical plant used load sharing pumps.
Problem
Unexpected failures increased downtime.
Analysis
Engineers built a load sharing RBD.
They discovered:
- Overload after first failure caused rapid second failure
Solution
- Added third pump
- Reduced load per unit
Results
| Metric | Before | After |
|---|---|---|
| MTBF | 9,000 hours | 14,000 hours |
| Downtime | High | Reduced |
Key Takeaways
Load sharing RBDs provide a more realistic view of system reliability. They capture interactions that traditional models miss. Because of that, they support better decisions in Six Sigma projects.
Use them when:
- Components share load
- Failure affects others
- High reliability matters
Conclusion
Reliability engineering continues to evolve. Load sharing RBDs represent an important step forward. They bridge the gap between theory and real-world behavior.
Six Sigma practitioners should not ignore them. Instead, they should integrate them into analysis, design, and improvement efforts. Doing so leads to better predictions, stronger systems, and improved performance.
If you want to elevate your reliability analysis, start applying load sharing models today.




