Metadata
Title
Online Data Analysis for Rapid Identification and Monitoring of Reaction Systems based on multi-sensor and multi-scale data
Category
general
UUID
a5113a6bbe254f06962210c374f969a9
Source URL
https://wsai.iitm.ac.in/projects/online-data-analysis-for-rapid-identification-a...
Parent URL
https://wsai.iitm.ac.in/projects/
Crawl Time
2026-03-23T19:05:24+00:00
Rendered Raw Markdown

Online Data Analysis for Rapid Identification and Monitoring of Reaction Systems based on multi-sensor and multi-scale data

Source: https://wsai.iitm.ac.in/projects/online-data-analysis-for-rapid-identification-and-monitoring-of-reaction/ Parent: https://wsai.iitm.ac.in/projects/

Online Data Analysis for Rapid Identification and Monitoring of Reaction Systems based on multi-sensor and multi-scale data

Investigators

Sridharakumar Narasimhan Nirav Bhatt

Tags

data analysis model identification interpretable model

Rapid process development using data generated in laboratory is important in chemical, pharma, specialty and biotech industries. Furthermore, growth in product demand has pushed these industries to adopt continuous process manufacture for new and existing processes. Further, in production, these processes have to be monitored and controlled to ensure safety and quality standards approved by US FDA. Hence, reaction processes are monitored using sensors either in offline manner (GC, HPLC, GC-MS) or online manner (spectrometers, temperature, calorimetry). Normally, offline data are obtained with delay. Hence, these measurements give rise to multi-sensors and multi-scale data. The proposal deals with developing online data analysis methods for rapid model identification and model update. Unsupervised (Principal component analysis, non-negative matrix factorization etc. ) or supervised learning methods (principal component regression, support vector machines) etc. are often applied to analyze online data. However, these methods suffer from rotational and scaling ambiguity. Hence, these methods cannot be applied directly to reaction systems due to underlying physical processes. In this proposal, we will propose to develop methods which combines a priori knowledge available regarding the measurements) and online data for building predictive and interpretable models. Further, we develop a method for online optimal input design to collect data in order to maintain the identified model. The proposed methods will be demonstrated with simulation as well as experimental data.