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IKTPLUSS-IKT og digital innovasjon

PhysML: Structure-based machine learning for physical systems

Alternative title: PhysML: Struktur-basert maskinlæring for fysiske systemer

Awarded: NOK 10.8 mill.

The majority of Norwegian industries are still a long way from being able to adopt AI and machine learning methods in their daily operations. One of the main barriers is the lack of robustness and trustworthiness of existing methods, particularly when applied to physical processes. PhysML will contribute to solving this challenge by combining machine learning models with the geometric properties of mathematical models in a hybrid analytics framework that alleviates the weaknesses of the individual approaches by leveraging their complementary strengths. Industrial data often originates from sensors or manual measurements that can suffer from low quality or quantity, hindering pure data-driven approaches. However, industrial data frequently describes physical processes which are governed by the laws of nature and can thus be modelled. When such models exist, they are based on first principles, making them trustworthy but lacking the flexibility of data-driven approaches. PhysML will work towards two goals: i) Use machine learning to gain physical knowledge about the systems, and ii) use physical knowledge to obtain machine learning models that are open, trustable, robust, and flexible. A fundamental innovation in our approach is to utilize the assumed underlying structures of the system, such as symmetry or preservation of energy, and thus build on the established field called numerical geometric integration, which is the study of how to incorporate such structures into mathematical models. The national and international academic partners (NTNU, Brown University) are among the world’s foremost experts in numerical geometric integration and physics-informed machine learning, respectively. Partnership with Elkem and Veas will ensure industrial relevance by providing use cases for development and testing of algorithms within the areas of predictive maintenance, control theory and process optimization.

The majority of Norwegian industries are still a long way from being able to adopt AI and machine learning methods in their daily operations. One of the main barriers is the lack of robustness and trustworthiness of existing methods, particularly when applied to physical processes. PhysML will contribute to solving this challenge by combining machine learning models with the geometric properties of mathematical models in a hybrid analytics framework that alleviates the weaknesses of both individual approaches by leveraging their complementary strengths. Industrial data often originates from sensors or manual measurements that can suffer from low quality or quantity, hindering pure data-driven approaches. However, industrial data frequently describes physical processes which are governed by the laws of nature and can thus be modelled. When such models exist, they are based on first principles, making them trustworthy but lacking the flexibility of data-driven approaches. PhysML will work towards two goals: i) Use machine learning to gain physical knowledge about the systems, and ii) use physical knowledge to obtain machine learning models that are open, trustable, robust, and flexible. A fundamental innovation in our approach is to utilize the assumed underlying structures of the system, such as symmetry or preservation of energy, and thus build on the established field called numerical geometric integration, which is the study of how to incorporate such structures in mathematical models. The national and international academic partners are among the world’s foremost experts in numerical geometric integration and physics-informed machine learning, respectively. Partnership with Elkem and Veas will ensure industrial relevance by providing use cases for development and testing of algorithms within the areas of predictive maintenance, control and process optimization.

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Funding scheme:

IKTPLUSS-IKT og digital innovasjon

Thematic Areas and Topics

Anvendt forskningGrunnforskningFNs BærekraftsmålMål 12 Ansvarlig forbruk og produksjonInternasjonaliseringDelportefølje Et velfungerende forskningssystemBransjer og næringerProsess- og foredlingsindustriBransjer og næringerMiljø - NæringsområdeInternasjonaliseringMobilitetPolitikk- og forvaltningsområderMiljø, klima og naturforvaltningFNs BærekraftsmålPolitikk- og forvaltningsområderNæring og handelAvanserte produksjonsprosesserAvansert produksjonsteknologi som fag og teknologi (ny fra 2015)IKT forskningsområdeKunstig intelligens, maskinlæring og dataanalyseInternasjonaliseringInternasjonalt prosjektsamarbeidPolitikk- og forvaltningsområderForskningPolitikk- og forvaltningsområderDigitaliseringLTP3 IKT og digital transformasjonDigitalisering og bruk av IKTPrivat sektorLTP3 Fagmiljøer og talenterDigitalisering og bruk av IKTDigitalisering og bruk av IKTOffentlig sektorPortefølje InnovasjonIKT forskningsområdeLTP3 Styrket konkurransekraft og innovasjonsevneBransjer og næringerIKT-næringenLTP3 Høy kvalitet og tilgjengelighetAvanserte produksjonsprosesserLTP3 Rettede internasjonaliseringstiltakLTP3 Nano-, bioteknologi og teknologikonvergensPortefølje Banebrytende forskningLTP3 Et kunnskapsintensivt næringsliv i hele landetDelportefølje InternasjonaliseringDelportefølje KvalitetLTP3 Muliggjørende og industrielle teknologierPolitikk- og forvaltningsområderFNs BærekraftsmålMål 6 Rent vann og gode sanitærforholdPortefølje Muliggjørende teknologierPortefølje ForskningssystemetBransjer og næringer