Telematics is useful for predictive fleet managementHoa Cha, productisation manager with GemOne looks at how fleet and safety management solutions can help you reduce maintenance costs and improve fleet availability.
Unplanned downtime is one of the most expensive problems facing materials handling fleets.
When a forklift goes down without warning, operations falter, deadlines slip, and costs spiral quickly, especially if the fix requires rush parts or third-party service.
That’s why predictive maintenance is so important in modern fleets.
Predictive maintenance is a data-driven maintenance strategy that uses data analysis and monitoring - most often powered by telematics - to optimise maintenance activities so you can avoid unplanned downtime.
It’s a shift in approach, away from time-based service schedules to smarter, condition-based maintenance.
Essentially, you use fleet insights from telematics to catch issues early, extend equipment life, and keep your warehouse running without interruption.
Time-based vs condition-based
Traditionally, fleets have followed a time-based maintenance schedule.
This is essentially a fixed calendar or hourly schedule - say, service every 500 engine-hours - regardless of actual wear. Sometimes, it means replacing perfectly sound parts or, conversely, missing hidden failures that crop up between intervals.
With condition-based servicing on the other hand, you monitor your equipment’s actual performance using telematics data gathered from the machine.
These machine insights about excessive engine hours, repeated checklist failures, or overload events, tell you when attention is truly needed.
Condition-based maintenance helps you allocate technicians efficiently, extend component life, and reduce surprise breakdowns. It’s a smarter, leaner approach to keeping forklifts in top shape.
Key data elements for predictive maintenance
1. Catch failures early with digital checklists
Automated pre-start and post-start checklists flag recurring failures - low brake fluid, worn tires, loose chains - before the truck even leaves the dock.
If one machine, for example, repeatedly fails a brake-fluid check three times in a week, you know to pull it aside before it fails in-use.
It’s common for checklist reports to identify a failure on a specific machine, but checklist data can also highlight trends of failed items across your entire fleet. These insights empower you to address these trends before you suffer prolonged forklift downtime.
2. Spot wear trends with impact reporting
Every impact, whether it’s a bump, scrape, or jolt, is logged with a timestamp and severity score.
These alerts give you information which can help you prevent costly impact damage.
For example, if there are 10 forklifts working in the same environment, doing the same job, and being operated the same way, but only one of these forklifts suffers impacts continuously, it may be related to a maintenance item that's causing your telematics system to pick up all the impacts.
Cross checking this with your checklist data may point you in the right direction of maintenance issues to address (such as worn wheels or tyres).
A pattern of minor impacts might indicate an operator training issue or a mechanical fault that needs attention. Seeing minor impacts continuously also helps you determine which impact thresholds to set for reporting and actions.
Early intervention here can prevent major repairs later.
3. Prevent overloading with load sensors
Repeated overload events stress your truck’s hydraulics and structure.
Load sensors detect when weight limits are exceeded, so you can intervene before the damage becomes permanent. There’s also an overweight lockout, so you can prevent the equipment from being damaged at the moment of overloading.
Preventative action here saves money on parts, labor, and fuel.
4. Investigate issues with HD & AI cameras
Camera systems provide visual context for events.
These can be standard HD forklift cameras that improve operator visibility and record incident footage, or AI cameras that detect and alert the operator when pedestrians cross a proximity threshold to the forklift.
Camera systems record continuously when the forklift is operational. This allows you to review incident footage so you can see exactly what happened during the incident and determine whether it was an operator error or a mechanical fault.
You can fine-tune training, identify wear patterns (like drifting alignment), and keep machines safer and healthier.
This all reduces maintenance costs in the long-run.
5. Monitor run time with hour meters
Telematics track every second your machines run, including operator session data.
These insights help identify over-used trucks (that may wear faster) and under-used units (that may be reallocated).
By spotting usage patterns early, you balance workloads and avoid premature wear or idle assets.
Minimise damage to your forklifts
By combining hour meter logs, checklist reports, impact alerts, load sensors and camera insights, predictive maintenance becomes a practical tool for fleet managers to reduce machine downtime.
You move from reactive fixes to proactive planning—reducing your maintenance cost per truck and improving overall fleet availability.