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IoT Predictive Maintenance: 75% Less Downtime, 18% Cost Savings (Uno Minda)

@Faclon Team

September 11, 2025

2min read

About the Company

A leading multinational corporation founded in 1992, specializing in automotive solutions and manufacturing components for the automotive and transportation industries. With a commanding $7.3 billion market cap as of 2025, the company operates 74 manufacturing plants worldwide across 20 manufacturing units, employing over 6,000+ professionals across all business verticals. The organization focuses on innovation and cutting-edge manufacturing technologies to maintain its strong global market presence and competitive edge.

Problem Statement

Critical surveillance and safety challenges in hazardous chemical operations

  • Time-consuming manual analysis Handheld sensor data collection across hundreds of rotating machines followed by expert assessment caused significant delays in repairs
  • Safety hazards Manual data collection across manufacturing plants posed substantial safety risks for auditors despite protective equipment
  • Productivity losses Diagnostic delays resulted in unplanned downtimes from critical rotating machinery failures, causing significant productivity losses
  • Lack of real-time visibility Urgent need for automated data collection and remote diagnostics to ensure timely repairs and prevent equipment failures

How Faclon Solved the Problem

I/O Vision: No-code computer vision platform for comprehensive AI-enabled surveillance:

Acquire
Deployed 40+ MEMS-based triaxial vibration sensors with wireless data collection via Wi-Fi, eliminating IT interference
Analyze
Implemented real-time vibration and temperature data capture with automated fault frequency adjustments and ISO benchmark comparisons
Alert
Configured instant SMS/email/WhatsApp notifications triggered by deviations from ISO standards for immediate response
AI Intelligence
Integrated machine learning algorithms analyzing FFT spectrums every 30 minutes with diagnostic inference every 24 hours
Platform Integration
Connected 18 digitized machines through I/O Sense Cloud platform with comprehensive dashboard monitoring

The Outcome

Transformational results across key performance indicators:

75% reduction in unplanned downtime
Dramatic improvement in operational continuit
12 critical defects detected
Proactive identification preventing major equipment failures
480 man-days saved
Significant labor efficiency gains through automation
18% reduction in maintenance spending
Substantial cost optimization achievement
Proven ROI realization
Typical return on investment achieved within 1-1.5 years
Case study success
Blower Motor alignment issues detected and corrected, preventing costly gearbox damage

Behind the Scenes

Technical implementation and strategic considerations for this deployment

Sensor deployment strategy
Strategic placement of sensors on motors (drive-end and non-drive end), pumps, blowers, and compressors based on criticality assessment
Customization approach
Asset-specific configuration of fault frequencies and ISO benchmarks tailored to different machine types and operational conditions
Network architecture design
Wi-Fi junction boxes with 4G connectivity ensuring seamless data transmission up to 80 meters range with IP67 protection
Change management process
Transition from manual handheld sensor operations to automated continuous monitoring requiring staff training and process adaptation
Data processing methodology
FFT spectrum analysis, noise analysis, and trend analysis algorithms working in tandem for comprehensive asset health assessment
Scalability framework
Modular deployment across 14 different machine types (from Hot Water Rinse to PBO HAC Blowers) ensuring systematic coverage of critical assets
TESTIMONIAL

Resources to keep you updated

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