System

Equipment failure predicted before it happens.

A continuously running AI model watches sensor streams, work order history, and usage patterns - and surfaces failure risk before equipment goes offline.

What It Is

Maintenance that happens before the breakdown, not after.

Reactive maintenance is the most expensive kind. Equipment fails at the worst time - during peak production, on a remote site, in the middle of a contracted job. The repair costs are real, but the downtime cost is worse. Predictive maintenance replaces the "fix it when it breaks" model with continuous monitoring that flags failure risk weeks before a machine goes down.

TMI's predictive maintenance infrastructure combines sensor telemetry, work order history, and operational patterns into a continuously running model that ranks failure probability across the entire fleet. Not simple threshold alerts that fire too often to be useful - pattern recognition that surfaces which machines are trending toward failure and which maintenance actions will prevent it. The result is a maintenance program that runs on actual equipment condition, not a calendar.

70%
Reduction in unplanned downtime
Continuous
Real-time sensor monitoring
Fleet-wide
Pattern recognition, not just thresholds
How It Works

Monitor. Predict. Prevent.

01

Continuous sensor monitoring

Temperature, vibration, pressure, runtime hours, and operational load data collected continuously from every connected asset. Not sampled at intervals - live. Anomalies detected in the signal before they become symptoms.

02

Fleet-wide pattern recognition

The AI model watches patterns across the entire asset fleet - not just individual sensor thresholds. It correlates work order history, usage intensity, and failure patterns from similar equipment to rank failure probability by consequence, not just probability.

03

Scheduled proactive service

When failure risk reaches a defined threshold, a maintenance work order is generated automatically and scheduled for the next available service window. Maintenance happens on actual equipment condition - not a calendar that ignores how hard a machine has actually been working.

Systems Included

Preventive scheduling plus AI pattern recognition.

Two systems that work together - structured maintenance intervals enforced automatically, and AI that goes beyond intervals to surface failure risk from operational data.

SYS-03

Preventive Maintenance Scheduler

Set maintenance intervals by runtime hours, mileage, or calendar date. The system schedules the work, notifies the crew, and closes the loop when it's done. Equipment stops failing by surprise.

Heavy EquipmentFleetManufacturing
AI-02

Predictive Failure Engine

A continuously running model that watches sensor streams, work order history, and usage patterns to surface equipment failure risk before failure happens. Not threshold alerts. Pattern recognition across the entire asset fleet, ranked by consequence, not just probability.

Oil & GasMiningUtilities
Who Benefits

Operations where downtime is the enemy.

Predictive maintenance ROI is highest when equipment failure stops production, creates safety hazards, or requires emergency response across remote sites.

Oil & Gas

Pump failures, compressor outages, and pipeline equipment breakdowns on remote sites cost production time and trigger emergency response. Predictive monitoring catches the signal weeks before the failure - scheduled maintenance at a planned outage window instead of an emergency crew at 2am.

Heavy Equipment

Excavators, cranes, and heavy machinery taken offline mid-project cause cascading schedule failures. Predictive maintenance identifies the machines at risk before they stop a job. Planned downtime is always cheaper than unplanned downtime.

Manufacturing

Production line equipment monitored continuously. Failure patterns identified across similar machines before individual units fail. OEE improves when downtime is planned, parts are staged, and repair windows are predictable instead of random.

Mining

Haul trucks, conveyors, and processing equipment operating in extreme conditions. Sensor data analyzed against failure history to rank which machines are trending toward failure. Maintenance scheduled in planned shift gaps, not forced emergency stops.

Utilities

Grid infrastructure, pumping stations, and generation equipment monitored for early failure signals. Condition-based maintenance replaces rigid PM schedules that over-service some equipment and under-service the machines actually showing stress.

Before / After

What changes when maintenance is predictive, not reactive.

Before TMI
  • Maintenance on a fixed calendar, ignoring actual usage and condition
  • Equipment failures surprise operations - emergency crews, expedited parts
  • Reactive repair costs 3–5x more than planned maintenance
  • Threshold alerts fire constantly - alert fatigue means real signals get ignored
  • Downtime causes cascade - one failure stops the job for the whole crew
After TMI
  • Maintenance scheduled by actual condition - equipment serviced when it needs it
  • Failure risk surfaces weeks ahead - planned service instead of emergency response
  • 70% reduction in unplanned downtime across deployments
  • Pattern-based predictions ranked by consequence - actionable, not noise
  • Parts staged, crew scheduled, window planned before the machine shows a symptom

Stop paying for failures you could have predicted.

We'll map your current maintenance program, identify the highest-risk equipment, and show you what predictive monitoring looks like for your asset base.