Daten exportieren

 

Forschungsprojekt ::
Latente score-basierte Partikelfilterung in hohen Dimensionen

LSPF – Latent score-based particle filtering in high dimensions

Projektbeschreibung

Despite recent advances, data assimilation remains fundamentally challenging. The advanced methods as particle filters still struggle to perform well in high-dimensional systems. To overcome this limitation, the Latent Score-based Particle Filter (LSPF) is proposed as a novel, AI-enhanced assimilation algorithm. This framework integrates two cutting-edge AI strategies: the Latent Data Assimilation (LDA) to compress the state into a low-dimensional latent space, thereby mitigating the "curse of dimensionality", and diffusion models to generate scores that intelligently guide particles toward high-likelihood regions and prevent weight degeneration. Additionally, representation of model error within the LDA framework will be thoroughly examined. This project will systematically develop, theoretically underpin, and numerically validate the LSPF, progressing from a proof-of-concept to a robust high-dimensional framework using AI surrogate models.

Angaben zum Forschungsprojekt

Beginn des Projekts:Juni 2026
Ende des Projekts:Juni 2029
Projektstatus:laufend
Projektleitung:Janjić, Prof. Dr. Tijana
Beteiligte Personen:Stöger, Jun.-Prof. Dr. Dominik
Lehrstuhl/Institution:
Finanzierung des Projekts:Begutachtete Drittmittel
Geldgeber:Deutsche Forschungsgemeinschaft (DFG)
Projektpartner:
  • Yuefei Zeng, Nanjing University of Information Science and Technology, Nanjing (China)
Themengebiete:S Mathematik; Informatik
Projekttyp:Grundlagenforschung
Fördernummer:JA 1077/7-1
Projekt-ID:4039
Eingestellt am: 01. Jul 2026 09:05
Letzte Änderung: 01. Jul 2026 13:00
URL zu dieser Anzeige: https://fordoc.ku.de/id/eprint/4039/
Analytics