Machine learning driven decision support for the operation of process systems
at Polytechnique Montreal
Montréal, QC, Canada -
Start Date | Expiry Date | Salary | Posted On | Experience | Skills | Telecommute | Sponsor Visa |
---|---|---|---|---|---|---|---|
Immediate | 27 Sep, 2024 | Not Specified | 27 Jun, 2024 | N/A | Good communication skills | No | No |
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Description:
MACHINE LEARNING DRIVEN DECISION SUPPORT FOR THE OPERATION OF PROCESS SYSTEMS
Réf ABG-124799
Sujet de Thèse
26/06/2024
Autre financement public
Polytechnique Montreal
Lieu de travail
Montréal - Canada
Intitulé du sujet
Machine learning driven decision support for the operation of process systems
Champs scientifiques
- Génie des procédés
- Informatique
- Science de la donnée (stockage, sécurité, mesure, analyse)
Mots clés
Process systems, Machine learning, Data analysis, Fault detection and diagnosis
DESCRIPTION DU SUJET
Process industries including chemicals, oil and gas industries, pharmaceutics, mining, metals and pulp and paper play an important role in the Canadian economy. An unplanned shutdown of a large plant can cost several hundred thousand dollars.
Large amounts of process data of different type are collected during process operation and stored in process historians. Today, this valuable resource is not fully exploited because of the lack of dedicated tools and methods to extract reliable information from it. Detecting unintended deviations from normal operation or identifying the root cause of abnormal behavior becomes difficult with the ever-increasing amount and complexity of stored data.
Modern machine learning methods have the potential to support building robust and accurate process models able to predict the process behaviour and to diagnose abnormal process situations.
Professor Moncef Chioua’s group has an immediate opening for PhD position on the intersection of data analytics, machine learning and process control.
The selected candidate will be working on the development of novel algorithms and computational tools to support the operation of process systems.
The work will be done in collaboration with industrial partners which will provide the selected candidate an opportunity to work on real-life case studies, to discuss with industrial practitioners and to benefit from the experience of industrial researchers in creating and deploying new technology.
Responsibilities:
Please refer the Job description for details
REQUIREMENT SUMMARY
Min:N/AMax:5.0 year(s)
Mechanical or Industrial Engineering
Engineering Design / R&D
Mechanical Engineering
Graduate
Proficient
1
Montréal, QC, Canada