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Big Data Approach to Batch Process Monitoring: Simultaneous Fault Detection and Diagnosis Using Nonlinear Support

Melis Onel1,2, Chris A Kieslich3,1,2, Yannis A Guzman4,1,2

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Summary
This summary is machine-generated.

This study introduces a new data-driven framework for fault detection and diagnosis in batch processes. The two-step rolling and evolving time horizon methods demonstrated superior performance for enhanced process monitoring.

Keywords:
Big DataData-driven ModelingFeature SelectionProcess MonitoringSupport Vector Machines

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Area of Science:

  • Industrial Engineering
  • Data Science
  • Chemical Engineering

Background:

  • Batch processes are critical in manufacturing, requiring robust monitoring for safety and efficiency.
  • Accurate fault detection and diagnosis are essential to prevent productivity loss and ensure safe operations.
  • Existing methods often struggle with high-dimensional, nonlinear data common in batch processes.

Purpose of the Study:

  • To develop a novel data-driven framework for simultaneous fault detection and diagnosis in batch processes.
  • To identify the most informative process measurements using a nonlinear Support Vector Machine-based feature selection algorithm.
  • To evaluate the framework's performance across different time horizon approaches.

Main Methods:

  • A data-driven framework utilizing nonlinear Support Vector Machine-based feature selection was developed.
  • High-dimensional batch process data, including 22,200 batches and 15 fault types, was used for evaluation.
  • Three time horizon approaches (one-step rolling, two-step rolling, evolving) were employed for model training.

Main Results:

  • The proposed framework successfully achieved simultaneous fault detection and diagnosis.
  • The two-step rolling and evolving time horizon approaches outperformed the one-step rolling method.
  • The framework demonstrated effectiveness across various fault types and batch data trajectories.

Conclusions:

  • The developed data-driven framework offers a promising decision support tool for online monitoring of batch processes.
  • The two-step rolling and evolving time horizon strategies are recommended for improved fault detection and diagnosis.
  • This approach enhances process safety and minimizes economic losses in industrial batch operations.