27 - 31 Jul 2025
Cairo (Egypt)
Hotel : Holiday Inn & Suites Cairo Maadi, an IHG Hotel
Cost : 4200 € Euro
The Online Plant Data Validation and Reconciliation (DVR) training program is a specialized course developed by Global Horizon Training Center to provide plant engineers, control professionals, and data analysts with the essential knowledge and tools to ensure data accuracy and reliability in industrial plants.
This course addresses the increasing need for accurate real-time data to support decision-making, control strategies, and optimization in process industries. By focusing on data validation and reconciliation techniques, participants will learn how to detect sensor errors, eliminate noise, and reconcile data to reflect true plant performance. The training integrates theoretical concepts with practical applications using state-of-the-art DVR tools and digital platforms.
By the end of this course, participants will be able to:
Understand the principles and importance of data validation and reconciliation in process industries.
Identify and correct measurement errors and inconsistencies in plant data.
Implement DVR models to improve the quality of online process data.
Apply mass and energy balance constraints to enhance data reliability.
Use DVR outputs to support optimization, performance monitoring, and regulatory reporting.
Prepare DVR systems for integration with digital twins, APC, and real-time analytics platforms.
Organizations adopting DVR methodologies will benefit from:
Improved accuracy and reliability of plant performance data.
Better root-cause analysis and troubleshooting capabilities.
Enhanced control and optimization of energy and material flows.
Increased trust in KPIs and business intelligence dashboards.
Regulatory compliance through accurate data reporting.
Integration of validated data into digital twin and advanced analytics systems.
This course is ideal for:
Process Engineers and Control Engineers
Instrumentation and Automation Specialists
Plant Operations and Reliability Engineers
Data Analysts and Digital Transformation Teams
Performance Monitoring and Optimization Engineers
Professionals responsible for plant reporting and compliance
Day 1: Introduction to Data Validation and Reconciliation (DVR)
Importance of Accurate Plant Data
Overview of DVR Concepts and Applications
Types of Measurement Errors: Random, Gross, and Systematic
Overview of Process Modeling and Constraints
Standards and Practices (ISO, ISA, and industry frameworks)
Day 2: Fundamentals of Process Modeling for DVR
Building Process Models for DVR Applications
Mass and Energy Balance Principles
Sensor and Measurement Network Design
Introduction to Constraint Equations
Redundancy and Observability Analysis
Hands-On Lab: Creating a Simple DVR Model
Day 3: Reconciliation Algorithms and Error Detection
Mathematical Methods Used in DVR (Least Squares Estimation)
Error Detection and Data Filtering Techniques
Hypothesis Testing for Gross Error Detection
Confidence Intervals and Data Quality Indicators
Validation of Reconciled Data
Case Study: Data Reconciliation in a Refinery Heat Exchanger Network
Day 4: Software Tools, Integration, and Real-Time DVR
DVR Software Platforms (e.g., Aspen Plus, Sigmafine, AVEVA)
Configuration of DVR Systems in Online Mode
Integration with DCS, SCADA, and Data Historians
Using DVR Outputs for KPI Monitoring and Reporting
Interfacing DVR with Digital Twins and AI Analytics
Day 5: Implementation Strategy and Performance Monitoring
Best Practices for Deploying DVR in Operational Plants
Project Planning: From Pilot to Full Rollout
Change Management and Operator Engagement
Monitoring the Performance of DVR Systems
Final Assessment: DVR Model Development and Presentation
Certification, Course Wrap-Up, and Action Planning