European Companies Search Engine

EU funding (€5,997,106): leArning and robuSt deciSIon SupporT systems for agile mANufacTuring environments Hor7 Aug 2020 EU Research and Innovation programme "Horizon"

Overview

Text

leArning and robuSt deciSIon SupporT systems for agile mANufacTuring environments

With a multidisciplinary consortium combining key skills in AI, manufacturing, edge computing and robotics, ASSISTANT aims to create intelligent digital twins through the joint use of machine learning (ML), optimization, simulation and domain models. The resulting tools permit to design and operate complex collaborative and reconfigurable production systems based on data collected from various sources such as IoT devices. ASSISTANT targets a significant increase in flexibility and reactivity, products/processes quality, and in robustness of manufacturing systems, by integrating human and machine intelligence in a sustainable learning relationship. ASSISTANT provides decision makers with generative design based software for all manufacturing decisions. Rather than writing ad hoc code for each manufacturing sector, it provides a set of intelligent digital twins that self adapt to the manufacturing environment. It promote a methodology that enhances generative design with learning aspects of AI thanks to the data available in manufacturing. ASSISTANT aims to synthesize predictive/prescriptive models adjusted to the shop floor for each decision levels. Digital twins will be used as oracles by ML in order to converge towards models in phase with reality. This means that rather than writing specific code to cover a restricted set of goals/scenarios/hypotheses for a manufacturing system and a decision level, ASSISTANT will aim at learning models that can be used by standard optimization libraries. In this context, ML is used to predict parameter values, characterize parameters uncertainty, and acquire physical constraints. ASSISTANT will experiment this methodology on a significant panel of use cases selected for their relevance in the current context of the digital transformation of production in major manufacturing sectors undergoing rapid transformations like the energy, the industrial equipment, and automotive sectors which already make extensive use of digital twins.


Funded Companies:

Company name Funding amount
TECHNISCHE UNIVERSITAET MUENCHEN €450,141
Institut Mines-Telecom €865,718
???????? ?????????????????? ???????? ????????? ?????? €238,654
Stellantis Auto SAS €300,699
Biti Innovations AB €644,750
Atlas Copco Airpower N.V. €247,500
Flanders Make €625,000
SIEMENS ENERGY GLOBAL GmbH & Co. KG €297,770
Netcompany-Intrasoft SA €575,000
???????????? ?????? €686,875
UNIVERSITY COLLEGE CORK - NATIONAL UNIVERSITY OF IRELAND, CORK €605,500
IMT Transfert €0.00
SIEMENS AG €459,500

Source: https://cordis.europa.eu/project/id/101000165

The filing refers to a past date, and does not necessarily reflect the current state.

Creative Commons License The visualizations for "TECHNISCHE UNIVERSITAET MUENCHEN - EU funding (€5,997,106): leArning and robuSt deciSIon SupporT systems for agile mANufacTuring environments" are provided by North Data and may be reused under the terms of the Creative Commons CC-BY license.