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Data analysis

List institute develops algorithms and software tools for a great variety of data analysis and processing. These data can come from measuring equipment for biology, food industry, process control and others or from sensor networks placed in buildings, industrial equipment or vehicles and so on… These data are often difficult to interpret because of their important volume, complexity or variety. Our researchers make them exploitable through advanced raw signal processing methods and automated learning statistical models allowing developing results analysis or decision making support tools.

We collaborate with industrial companies from varied sectors like energy, health, transport, security…

Among our academic partners

CSTB (French scientific centre for building technics), INP Grenoble (GipsaLab et G2ELab, France), INSA Rouen (LITIS, France), INRIA, INRA, CEA Life science division (DSV, France)

Assets

  • Ability to process complex or heterogeneous data such as mass spectrometry, sensor networks (temperatures, pressure, speed, electromagnetic signals, movement…), large-scale data volume management
  • Generic know-how capitalised through algorithmic bricks and reusable software platforms
  • Information extraction and structuring for operational use

 

Major technologies

Time patterns extraction and dictionary learning

apprentissage

Description

A multi-sensor monitoring equipment data basis is being analysed in order to detect patterns that become repetitive independently from their temporal position or intensity such as a peak on a curve. These patterns are automatically inventoried in a 10 to 20 elements dictionary that will be submitted to an expert or automatically validated according to their relevance and integrated to the monitoring. This “parsimonious decomposition ” methodological approach uses only the observed data and is much faster than a physical model design.

Applications

Equipment monitoring or industrial process, biological data analysis

Major projects

  • OpenViBE2 (ANR)
  • UNSUPERVISED-BRAIN (Digiteo)

Publications

Massive data visualisation

andon visu-donnees

Description

Massive complex data visualisation can concern for example data collected every second for more than a year by several hundreds of temperature data, electricity and water consumption, etc. Visualising them is a huge concern and technical issue that’s why dimension reduction methods exist such as 2D or 3D non linear projection. We develop these methods that preserve or highlight the data multidimensional structure. They are used to design reliable and efficient interactive complex data mining tools.

Applications

Containers analysis by neutron interrogation, building energetic assessment analysis, industrial systems real use characterisation

Major projects

Publications

e-learning on status or behavioural statistical models

andon apprentissage-resu

Description

Statistical models e-learning functions are integrated into equipment monitoring tools in order to follow their operations or status and to predict their ageing when we do not have a sharp physical modelling. These monitoring tools have been developed and validated to follow on-line charge status and electric vehicles’ batteries’ ageing in real use in collaboration with CEA LITEN institute.

Applications

Electric batteries, fuel cell, water distribution networks

Major projects

Publications