Customer Company Size
Large Corporate
Region
- America
Country
- United States
Product
- ICONICS Productivity Analytics
- GENESIS32™ HMI/ SCADA software suite
- AlarmWorX32™ Multimedia alarm management
- WebHMI™ Web-based real-time automation
- ScriptWorX™ 2010
Tech Stack
- Visual Basic for Applications (VBA)
- Microsoft SQL
- ASCII Text Files
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Cost Savings
- Productivity Improvements
Technology Category
- Analytics & Modeling - Process Analytics
- Application Infrastructure & Middleware - API Integration & Management
Applicable Industries
- Construction & Infrastructure
Applicable Functions
- Discrete Manufacturing
Use Cases
- Predictive Maintenance
- Manufacturing System Automation
Services
- Data Science Services
- System Integration
About The Customer
PGT® (pgtindustries.com) pioneered the U.S. impact-resistant window and door industry and today is the nation’s leading manufacturer and supplier of residential impact-resistant windows and doors. PGT is also one of the largest window and door manufacturers in the United States. Founded in 1980, the company employs over 1,000 at its manufacturing, glass laminating and tempering plants, and delivery fleet facilities in Florida. Sold through a network of over 1,300 independent distributors, the company’s total line of custom windows and doors is now available throughout the eastern United States, the Gulf Coast and in a growing international market, including the Caribbean, South America and Australia. PGT’s product line includes PGT Aluminum and Vinyl Windows and Doors; WinGuard® Impact-Resistant Windows and Doors; PGT Architectural Systems; and Eze-Breeze® Sliding Panels. PGT Industries is a wholly owned subsidiary of PGT, Inc. (NASDAQ: PGTI).
The Challenge
PGT Industries, a leading manufacturer and supplier of residential impact-resistant windows and doors in the U.S., was facing a challenge of demand exceeding production capacity, which was constraining revenue growth. The company had developed a capital plan to expand their manufacturing operations. However, before executing the capital expansion, the Vice President of Operations decided to test the assumptions about current capacity by installing and applying a productivity analysis tool. The company selected ICONICS Productivity Analytics software to analyze the Overall Equipment Effectiveness (OEE) of the current plant. The software’s drilldown and correlation capabilities were used to zero in on sources of loss of OEE, focusing on three OEE factors: availability, quality and performance.
The Solution
ICONICS Productivity Analytics software was applied to the 12 most critical production assets to analyze the Overall Equipment Effectiveness (OEE) of the current plant. The software’s drilldown and correlation capabilities were used to zero in on sources of loss of OEE, focusing on three OEE factors: availability, quality and performance. Once the data analysis tools were online, numerous immediate issues were visible to all levels of the organization. These included production start-up meetings greatly exceeding allocated time, sporadic loading cart availability, improper material layouts causing gaps on conveyors to furnaces, and unplanned idle time. Once these issues were uncovered with the assistance of Productivity Analytics, PGT created work teams to swiftly remedy the causes of downtime and production gaps. Productivity Analytics continues to deliver real-time, accurate data to the plant operators and upward through the organization.
Operational Impact
Quantitative Benefit
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