R&D virtual prototyping that accelerates innovation—without physical trial and error

Use intelligent digital twins to design, test, and refine products and systems virtually—so engineering teams can explore more options, reduce risk, and bring better designs to market faster.

Why physical prototyping slows innovation

Traditional R&D relies heavily on physical prototypes and late-stage testing. While necessary, this approach creates familiar challenges:

  • Long design cycles between iterations
  • High cost of building and modifying prototypes
  • Limited ability to explore edge cases and failure modes
  • Design decisions locked in too early
  • Issues discovered only after tooling or production begins

When time, cost, or safety limit experimentation, innovation suffers. Virtual prototyping removes those constraints.

From static simulation to living design models

This solution applies the intelligent digital twin model to a specific operational challenge. For a full explanation of the model itself, see: What is an Intelligent Digital Twin →

R&D virtual prototyping with intelligent digital twins goes beyond one-off simulations.

An intelligent digital twin:

  • Represents components, systems, and interactions digitally
  • Evolves as designs, assumptions, and data change
  • Combines physics-based models with operational context
  • Enables rapid comparison of design alternatives

Instead of testing one idea at a time, teams can explore many possibilities—quickly and safely.

A practical R&D workflow

Virtual prototyping follows a structured approach that delivers insights at each stage.

1

Create the digital prototype

Build a digital representation of the product, component, or system.

2

Define scenarios and assumptions

Set operating conditions, loads, environments, and constraints.

3

Simulate behavior and performance

Evaluate strength, efficiency, reliability, and failure modes.

4

Compare design alternatives

Test variations side by side to understand trade-offs.

5

Refine and iterate

Incorporate learnings into the next design iteration—before physical build.

Where virtual prototyping delivers the most value

Design validation

Test designs before committing to hardware.

  • Verify performance under real operating conditions
  • Reduce late-stage design changes

Failure mode exploration

Understand what can go wrong—and why.

  • Simulate stress, overload, and edge cases
  • Identify weak points early in development

System-level trade-off analysis

Balance competing design goals.

  • Compare efficiency, cost, weight, and durability
  • Make informed trade-offs with evidence

Design for operations

Build products that perform in the real world.

  • Test designs against realistic usage patterns
  • Reduce downstream operational issues

Value across R&D and engineering roles

R&D & design engineers

  • Explore more concepts in less time
  • Validate assumptions early
  • Reduce rework and redesign

Product & engineering leaders

  • Make design decisions with confidence
  • Shorten development timelines
  • Control cost and technical risk

Manufacturing & operations teams

  • Provide input earlier in the design process
  • Reduce downstream production issues
  • Improve design-for-manufacturability outcomes

What teams typically achieve

Outcomes vary by product and maturity, but teams often target:

  • Shorter design and development cycles
  • Fewer physical prototypes required
  • Earlier detection of design flaws
  • Lower development and rework costs
  • Higher confidence at design freeze

The biggest gains come from learning early—before changes are expensive.

Start with one design challenge. Prove value. Expand.

1

Start

Choose a critical component, subsystem, or design decision.

2

Prove

Validate simulation insights against known data or test results.

3

Scale

Extend virtual prototyping across additional designs or programs.

How the platform supports scale →

Common questions about virtual prototyping

Is this a replacement for physical prototyping?
No. Virtual prototyping reduces reliance on physical prototypes and improves their effectiveness—it doesn't eliminate them entirely.
How accurate are the simulations?
Accuracy improves over time as models are refined and validated with real data.
Do we need advanced simulation expertise?
No. Workflows are designed for engineering teams, with advanced options for specialists.
Can this integrate with existing CAD and simulation tools?
Yes. Virtual prototyping typically complements existing design and engineering tools.
How quickly can teams see value?
Focused use cases often deliver insight within weeks.

Design better products—before you build them

Accelerate innovation while reducing risk and cost.