Industry Value Driver

OEE & Asset Performance Management.

The gap between your current overall equipment effectiveness (OEE) and the world-class 85%+ benchmark is not a maintenance problem – it is a data problem. Clean asset 
master data enables reliable OEE calculation and unlocks predictive maintenance ROI.​

< 70%

Industry average OEE vs. 85%+ world-class target

$10K–100K+

Production revenue lost per unplanned downtime hour

50%

Downtime reduction via predictive maintenance (McKinsey)

400–1000%

ROI over 3 years

The OEE Value Leak.

Production Loss​

5-15% of inventory is tied up in slow-moving or non-moving stock due to poor visibility and duplicate material records.​

Maintenance Leakage

2–5% production loss from inconsistent asset hierarchies and missing equipment context that prevents accurate root cause analysis.

Reliability Blind Spots

Unreliable MTBF/MTTR metrics from data gaps make it impossible to attribute full lifecycle costs across asset phases.

Wrong-Part Installations

Inaccurate BOMs and asset hierarchies cause wrong-part installations, shortened asset lifespans, and safety incidents.

The OEE Value Gap​

A 13-point OEE gap (70% → 83%) at a mid-size facility represents $10–15M in annual lost production. The root cause? Inaccurate asset data driving wrong maintenance decisions.​

“Effective APM and OEE depend on clean, contextualized asset master data and standardized failure/event models. MDM for the asset domain enables reliability engineering, predictive maintenance, and total cost transparency.”​

— Gartner Research, 2025

Global Cost of Unplanned Downtime

Trillions Annually

Source: McKinsey / Deloitte 2025

PiLog’s Integrated Strategy

Clean Data Driving 85%+ OEE.

1

FOUNDATION: DQG Suite Asset Master Data Excellence

Accurate equipment hierarchies, maintenance history consolidation, clean BOMs with correct specs, and real-time SAP PM/EAM integration across Maximo and Infor systems.

2

OPTIMIZATION: Engineering Services Asset Optimization

Reliability Centered Maintenance (RCM) implementation, PM schedule optimization, criticality analysis, risk-based prioritization, and FMEA with quality data inputs.

3

INTELLIGENCE: Predictive Analytics Enablement

Clean data foundation for IoT/sensor integration, anomaly detection and early warning, and AI-ready hierarchies for ML predictive maintenance models.

Quantified Business Outcomes

From 70% to 85%+ OEE.

15–20%

Production capacity gain from OEE improvement

$5–20M

Annual savings from 30–50% unplanned downtime reduction

18–25%

Maintenance cost reduction through predictive approach

10–20%

Extended asset lifespan = deferred capex of millions

What Is Your OEE Gap Costing You?

Understand your production revenue loss from the OEE gap, then explore how PiLog’s data-driven approach closes it.