How Installed Base Management Enables Preventive Maintenance

March 31, 2026
Dr.-Ing. Simon Spelzhausen

Key Takeaways: From Reactive to Predictive Maintenance

  • Unplanned downtime costs industrial manufacturers an estimated $50 billion every year, the vast majority of it preventable.
  • Research confirms predictive maintenance reduces machine downtime by 30 to 50% and extends equipment lifespan by 20 to 40%.
  • 51% of industrial facilities still rely on run-to-failure maintenance for at least part of their equipment, a sign of how widespread the reactive culture remains.
  • A clean, connected installed base is the single most important foundation for shifting from scheduled to genuinely proactive service scheduling.
  • Installed base PM enablement is not a technology project. It is a data discipline, and Makula is built to make it operational.

Nobody sets out to run a reactive service operation. It happens gradually. A field team gets stretched. Asset records fall behind. A customer calls about a breakdown that, in hindsight, had been showing warning signs for weeks. The technician fixes it, files a report, and moves on, and the cycle repeats.

This is not a resource problem. Most machinery manufacturers and suppliers have capable people in the field. What they often lack is the data infrastructure that would let those people act before something goes wrong rather than after.

The signals are usually there, in usage patterns, service histories, component wear rates. They just are not connected, visible, or actionable at the right moment.

That is the gap that installed base preventive maintenance enablement is designed to close. When every deployed asset has a live, structured, accessible record, preventive maintenance stops being an aspiration and starts being a repeatable operational practice.

This blog unpacks what that actually looks like, why so many manufacturers struggle to get there, and what the path forward involves.

What Installed Base Preventive Maintenance Enablement Really Means

There is a version of installed base management that amounts to little more than a glorified spreadsheet, serial numbers, installation dates, maybe a warranty expiry column. That is asset tracking. Useful, but nowhere near enough.

True installed base PM enablement is something meaningfully different. It is the capability to take everything known about a deployed asset, its configuration, its usage history, every service event it has ever had, the condition of its components right now, and use that information to drive timely, evidence-based maintenance decisions. Not on a calendar. Based on what the asset is actually telling you.

The distinction matters enormously in practice:

  • Basic tracking tells you a machine was installed 18 months ago and is due for a scheduled service.

  • PM enablement tells you that this specific machine has been running at 140% of its rated load for the past six weeks, that the same component failed on three similar units under comparable conditions, and that a service visit in the next ten days would prevent a likely breakdown.

One produces a calendar reminder. The other produces a commercial conversation, a planned visit, and a customer who never experienced a disruption.

That is the difference installed base intelligence makes, and it is why machinery manufacturers and suppliers who invest in building it consistently outperform those who do not.

How a Strong Installed Base Powers Proactive Service

The data behind proactive service scheduling is compelling.

Did you know?

Predictive maintenance can reduce machine downtime by 30–50% and extend equipment lifespan by 20–40%.

Source: McKinsey & Company, "The Case for Predictive Maintenance," 2022

Organisations achieving this consistently report one thing in common: a clean, connected record of their deployed assets that feeds real decisions in real time.

What does that look like across different industrial contexts?

In heavy machinery, manufacturers use accumulated load and usage hour data to identify when high-stress components are approaching their actual, not theoretical, wear limits. Parts get replaced in a planned window rather than during an emergency shutdown.

In energy equipment, historical fault data across hundreds of deployed units reveals which configurations fail most often and under what conditions. That fleet-wide pattern becomes the predictive maintenance foundation for targeted interventions that individual site data would never surface.

In automation lines, cycle count data is cross-referenced with component degradation rates. PM schedules become dynamic, adapting to how hard each machine is actually being worked rather than defaulting to the same interval for every unit regardless of usage.

The common thread across all three is that the installed base is doing real work. It is not a passive record. It is a living data set that actively informs condition-based maintenance decisions. Without it, maintenance teams are essentially managing by gut feel and hope, neither of which scales.

The Hidden Barriers That Block Installed Base Preventive Maintenance

Given how clearly the benefits stack up, why do so many manufacturers still find themselves stuck in reactive mode? The answer is rarely a lack of willingness. It almost always comes down to data quality and system fragmentation.

The most common blockers are:

Records that live in the wrong places:

Field engineers' notebooks, disconnected ERP modules, customer-held spreadsheets, and asset data are often scattered across a dozen sources with no single version of truth.

Updates that never happen:

Installed base records go stale quickly when there is no process for field teams to update them in real time. Equipment gets moved, reconfigured, or pushed beyond its rated parameters, and the central record never reflects any of it.

No mechanism to act on what the data says:

Even manufacturers with reasonable asset data often lack the workflow infrastructure to convert a data signal into an automated PM alert and a scheduled work order.

Siloed service history:

Warranty data, parts records, and service reports rarely sit in the same place. Connecting them manually is possible in theory and unsustainable in practice.

Here is what those barriers cost, translated into operational outcomes:

Metric Reactive Maintenance Scheduled PM Installed Base-Enabled PM
Maintenance Cost Highest due to emergency repairs and last-minute parts Moderate; planned resources and labor reduce surprises Lower than scheduled PM by optimizing service based on real usage and condition
Unplanned Downtime Frequent, disrupts operations Reduced, but still some unexpected breakdowns Minimized; data-driven planning prevents most downtime
Asset Lifespan Shortened due to inconsistent care Extended modestly through regular service Significantly extended via predictive insights and timely interventions
Technician Efficiency Firefighting-driven, reactive work dominates Calendar-driven; technicians follow planned tasks Data-driven and fully plannable; focus on high-value tasks
Customer Experience Damaged by frequent failures and delays Predictable service; fewer surprises Proactive, builds trust and strengthens relationships

The gap between column one and column three is not a technology investment. It is a data discipline investment. And that is exactly what preventive maintenance optimisation requires to stick.

Practical Steps to Unlock Preventive Maintenance Through Your Installed Base

Getting from fragmented records to a functioning PM-enabled installed base does not need to be a two-year programme.

Machinery manufacturers and suppliers who approach it in phases start seeing measurable results far sooner than they expect. Here is a five-step framework grounded in how it actually gets done:

1. Know what you have honestly:

Run a proper audit of your current installed base data. Not what should be there, but what actually is. Where are the gaps? What lives in field engineers' heads that has never been captured digitally?

Read more: Managing Installed Base Data Without Chaos

2. Agree on a data standard:

Every asset record across your fleet should carry the same core fields, installation date, configuration, service history, component life tracking. Consistency is not glamorous, but nothing else works without it.

3. Define your PM triggers by asset type:

For each equipment category, establish what data signals should prompt a maintenance action. Usage hours for some assets. Cycle counts for others. Condition readings where sensors exist. The specifics matter less than having them defined and documented.

4. Make field updates non-negotiable:

Every technician visit should close with an updated asset record, what was done, what was found, and what is flagged for next time.

Read more: How to Optimise Time-Based Preventive Maintenance and Reduce Waste

5. Automate the workflow from trigger to work order:

Once data is flowing and triggers are defined, the system should do the heavy lifting, surfacing upcoming PM tasks to planners, generating work orders, and where appropriate, giving customers visibility into what is coming.

Makula's Installed Base Management solution is built specifically around this workflow, giving manufacturers a live, connected asset record that drives aftermarket service efficiency across the entire deployed fleet.

The Future of Preventive Maintenance: From Scheduled to Truly Predictive

The gap between preventive and predictive maintenance is narrowing faster than many manufacturers realise. IoT sensors are now affordable enough to retrofit legacy equipment. AI models trained on fleet-wide failure data are surfacing risks no individual technician could identify from a single unit.

According to Gartner, by 2025 over 50% of industrial companies will have adopted AI-driven predictive maintenance as a core operational component.

Digital product passports, entering regulatory frameworks across EU industrial markets, will add another layer of asset lifecycle visibility, creating auditable, lifelong records of every intervention, upgrade, and condition reading for every deployed unit.

For machinery manufacturers and suppliers building installed base infrastructure today, this is not just an operational improvement. It is the data foundation that makes outcome-based contracts, AI-powered recommendations, and truly predictive maintenance commercially viable.

The manufacturers who get there first will not just run better service operations. They will own a competitive position that is very hard to dislodge.

Preventive Maintenance Builds Service Visibility

Most maintenance problems do not arrive without warning. They build slowly, in wear rates, usage patterns, and service histories that are sitting in the installed base, waiting to be read.

The manufacturers who read them in time prevent failures. The ones who do not spend their weeks scrambling to recover from them.

Installed base PM enablement is what makes the difference between those two experiences. It is not a single product or a one-time implementation. It is an ongoing commitment to keeping asset data clean, connected, and actionable, and building the workflows that turn that data into field decisions before something goes wrong.

Stop reacting, start preventing.

If your service team spends more time reacting than preventing, the solution isn’t more technicians—it’s better data. Makula helps machinery manufacturers and suppliers structure installed base records, automate preventive maintenance triggers, and provide customer-facing service visibility. Book a demo today and discover what a properly enabled installed base can do for your after-sales operations.

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Frequently Asked Questions

Installed base PM enablement uses full data history of every deployed asset—including usage records, service events, component life cycles, and condition signals—to drive timely preventive maintenance decisions. The key is “enablement”: the data is structured and connected to create real, actionable field service outcomes.

Standard PM schedules run on fixed intervals, e.g., every six months, regardless of machine usage. Installed base-enabled PM runs on usage and condition data, meaning maintenance occurs when the asset actually needs it, not just because the calendar says so.

Data-driven maintenance programmes can reduce maintenance costs by 18–25%, cut unplanned downtime by 30–50%, and extend equipment lifespan by 20–40% (McKinsey research).

Begin with an honest audit of what data actually exists. Prioritize the highest-value assets, establish consistent data standards for them, and expand from there. Trying to fix everything at once is a common reason programmes stall.

No. Even manufacturers with a few hundred deployed units gain efficiency in planning, technician utilization, and customer communication from structured installed base data.

Makula provides clean, connected installed base records alongside automated PM triggers, field service workflows, and customer-facing visibility, turning fragmented data into a scalable operational process.

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.