Physics-Informed Criticality Analysis for Infrastructure Networks

Mon 06.07 12:30 - 13:00

Abstract: In this work a Machine Education (ME) based method is presented. A framework for Hydraulically-Informed (HI) criticality scoring of urban sewer network components was implemented by using SWMM as a physical educator. Capacity of each element is systematically reduced and hydraulic consequences are calculated. The framework generates consequence-based criticality indicators aggregated into a per-conduit HI score, validated across multiple real-world and benchmark networks. Building on the physically enriched dataset, surrogate Educated Machines are trained to predict HI criticality, substantially reducing the computational burden of criticality assessment at scale.

Speaker

Nurit Klimovitsky

Technion

  • Advisors Barak Fishbain

  • Academic Degree M.Sc.