The Digital Twin Question: How an Automotive Parts Manufacturer Used Bespoke Research and Strategy Advisory to Build an Honest ROI Case Before Committing to Industrial Metaverse Investment

Executive Snapshot

Client

Tier-1 Automotive Parts Manufacturer, Czech Republic

Situation/Challenge

Industrial metaverse technology vendors had been pitching the client with ROI projections built around industry average productivity gains and generic case studies from other sectors. Leadership could see the appeal but was unwilling to commit a capital programme to vendor projections that said nothing specific about the client's own plant configurations, existing process maturity, or the workforce change management challenge that every honest implementation conversation eventually raised.

Objective

Commission bespoke research evaluating industrial metaverse ROI specifically against the client's plant characteristics and process maturity level, then engage strategy advisory to build an investment case the board could defend without relying on vendor-supplied numbers.

Constancy Researchers Solution

Customized Research combined with Strategy & Growth Advisory, bespoke ROI modelling calibrated to the client's specific production environments and process maturity baseline, followed by a strategy advisory engagement sequencing investment decisions and building a board-ready business case.

Impact

Bespoke research found the client's actual ROI opportunity was concentrated in two specific process areas, remote maintenance support and new operator onboarding, where its own current performance baselines made the productivity gain credible and measurable. Strategy advisory sequenced investment to those two areas first, building an evidence base before broader commitment.

Client Outcome

The board approved a phased industrial metaverse investment focused on the two validated use cases, avoiding the broad platform commitment vendors had been proposing, and the first use case reached payback ahead of the projected timeline.

The Situation / Challenge

Industrial metaverse platforms, which combine digital twin modelling, augmented reality overlays, and connected worker tools to create a persistent virtual representation of a physical plant, have generated significant vendor and media attention. The ROI claims accompanying that attention tend to be constructed from carefully selected reference deployments in ideal conditions, and they almost never account for the maturity of the specific processes the technology is meant to improve or the workforce change management cost of actually getting people to use it.

The client’s operations team had been receiving vendor pitches with headline productivity improvement figures for over a year. Leadership found the concept credible at a general level but could not build a capital approval case around numbers that bore no clear relationship to their own Czech Republic plant configurations, their existing process maturity levels, or the realistic pace at which their workforce could absorb a significant change in how maintenance and production work was performed.

Rejecting vendor projections without an alternative number left leadership in an uncomfortable position, willing to believe the technology had value but unable to say how much, or for which specific applications, or in which order investments would produce the most defensible returns.

Key Challenges

  • No bespoke ROI modelling calibrated to the client’s own plant configurations and process maturity baselines, as opposed to generic industry averages.
  • No independent assessment of which specific industrial metaverse use cases were most viable given the client’s current operational starting point.
  • Vendor ROI projections that described favourable conditions elsewhere rather than the client’s own production environment.
  • No workforce change management cost assessment incorporated into any of the ROI cases the client had been presented with.
  • Leadership willing to invest but unable to build a defensible capital approval case from the numbers currently available.
  • Board expectation that any capital programme of this scale be supported by independent analysis rather than vendor-originated projections.

Industrial metaverse ROI projections built from industry averages and cherry-picked case studies are structurally incapable of telling a specific manufacturer what its actual return will be, because that return depends on where the current process performance gaps are largest, how mature the existing digital infrastructure is, and how realistically the workforce can absorb the change. Independent bespoke analysis is the only way to get those numbers.

Constancy Researchers Solution

Constancy Researchers built the engagement specifically to replace vendor-originated projections with an analysis grounded in the client’s own operational realities, producing an ROI case the board could scrutinise without asking whether the numbers had been supplied by someone trying to sell something.

Plant Configuration & Process Maturity Baseline Research
  • Conducted bespoke research into the client’s four production plants, documenting current process performance baselines, existing digital infrastructure maturity, and the specific.
  • Identified meaningful variation in digital maturity and process standardisation across the four plants, confirming that a single fleet-wide ROI figure would.
Use Case Viability & Prioritisation Analysis
  • Evaluated eight potential industrial metaverse use cases against the plant-level baselines, scoring each on the size of the current performance gap.
  • Found that remote maintenance support and new operator onboarding produced the strongest and most credible ROI cases given the client’s specific.
Workforce Change Management Cost Assessment
  • Built a structured change management cost model covering technology training, process redesign, supervisor enablement, and the productivity dip during the adoption.
  • Incorporated the change management cost into the use case ROI models, producing a more conservative but defensible payback timeline that leadership.
Independent ROI Modelling & Sensitivity Analysis
  • Delivered independent ROI models for the two priority use cases, built from the client’s own baseline data, adjusted for realistic change.
  • Produced sensitivity analysis showing the conditions under which each use case would or would not reach payback within the board’s stated.
Phased Investment Roadmap & Board Case
  • Delivered a phased investment roadmap prioritising the two validated use cases ahead of the broader platform commitment vendors had been proposing,.
  • Built the board-ready capital case around the independent ROI models and sensitivity analysis, structured to withstand scrutiny from a finance committee.

The engagement gave leadership a capital case they had authored rather than received, built on their own operational data, and structured to be honest about the assumptions it depended on.

Impact

  • Bespoke plant baseline research revealed meaningful digital maturity variation across the four sites, making a single
  • Use case evaluation identified remote maintenance support and new operator onboarding as the two strongest ROI
  • Broader digital twin and production simulation use cases were deferred until the infrastructure they required was
  • The change management cost model added a cost dimension absent from every vendor projection the client
  • Independent ROI models gave leadership plant-specific payback projections built from their own operational baselines.
  • Sensitivity analysis made the key assumptions the investment case depended on explicitly visible to the board.
  • The phased roadmap avoided the broad platform commitment vendors had been proposing in favour of two
  • The first use case reached payback ahead of the projected timeline following implementation.

Client Outcome

Board Approval

The board approved a phased industrial metaverse investment built around two validated use cases.

Payback Achieved

The first use case reached payback ahead of the projected timeline, validating the independent ROI model's assumptions.

Investment Confidence

Leadership gained a capital case built on their own operational data rather than vendor-originated.

Change Management Visibility

The board received a realistic change management cost estimate for the first time, replacing.

Deferred Risk

Broader use cases requiring infrastructure the client did not yet have were deferred rather.

Sensitivity Clarity

The investment case's key assumptions were made visible through sensitivity analysis, giving the board.

Phased Evidence Building

An evidence-gathering phase was built into the roadmap before broader platform commitment, protecting against.

Vendor Independence

The capital case was built and owned by the client rather than originated by a vendor with a direct financial interest in the outcome.

Market Positioning

The manufacturer was repositioned as an industrial technology investor that builds its own evidence.

Case Studies

Learn how our success stories power data-driven growth across industries

Speak with an Analyst

    Download TOC