Times-Series Modeling in Manufacturing and Process Industry

View On-Demand Webinar

View On-Demand Webinar

An Overview of Time-Series Modeling

This webinar will present a high-level overview of simple but key concepts in time-series modeling of industrial processes with the aim of model performance and generalizability. These could have significant cost saving implications and the potential to increase plant operational efficiency and reduce downtime.

The webinar will be of interest to:

  • Data Scientists
  • Machine Learning Engineers
  • Sensor Data Analysts
  • Manufacturing Experts
  • Flow Measurement Engineers


  • Multivariate time-series prediction problems
  • Correlations in time series data
  • Feature selection and extraction
  • Data reshaping
  • Data-driven models for time-series data
  • Model validation
  • Scalability

Complete the form to view the on-demand webinar.


Dr. Behzad NobakhtDr. Bezhad Nobakht

Dr. Behzad Nobakht is a data scientist at TÜV SÜD National Engineering Laboratory, currently working on data-driven strategies to develop Condition-Based Monitoring (CBM) solutions for use in industry.

He has a PhD in Petroleum Engineering from Heriot-Watt University. Before that he completed a research internship at Total E&P Pau, France. He also has a Master’s degree in Petroleum Engineering from Polytechnic University of Turin, and a Bachelor’s degree in Chemical Engineering from Sharif University of Technology.

Dr. Nobakht is also responsible for automation of workflows using machine learning and advanced statistical methods for CBM modelling with realistic uncertainty quantification of model predictions.

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