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Main Authors: Liu, Guangyi, Pandey, Vivek, Somarakis, Christoforos, Motee, Nader
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.06024
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author Liu, Guangyi
Pandey, Vivek
Somarakis, Christoforos
Motee, Nader
author_facet Liu, Guangyi
Pandey, Vivek
Somarakis, Christoforos
Motee, Nader
contents We develop a framework for studying and quantifying the risk of cascading failures in time-delay consensus networks, motivated by a team of agents attempting temporal rendezvous under stochastic disturbances and communication delays. To assess how failures at one or multiple agents amplify the risk of deviation across the network, we employ the Average Value-at-Risk as a systemic measure of cascading uncertainty. Closed-form expressions reveal explicit dependencies of the risk of cascading failure on the Laplacian spectrum, communication delay, and noise statistics. We further establish fundamental lower bounds that characterize the best-achievable network performance under time-delay constraints. These bounds serve as feasibility certificates for assessing whether a desired safety or performance goal can be achieved without exhaustive search across all possible topologies. In addition, we develop an efficient single-step update law that enables scalable propagation of conditional risk as new failures are detected. Analytical and numerical studies demonstrate significant computational savings and confirm the tightness of the theoretical limits across diverse network configurations.
format Preprint
id arxiv_https___arxiv_org_abs_2604_06024
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Incremental Risk Assessment for Cascading Failures in Large-Scale Multi-Agent Systems
Liu, Guangyi
Pandey, Vivek
Somarakis, Christoforos
Motee, Nader
Systems and Control
We develop a framework for studying and quantifying the risk of cascading failures in time-delay consensus networks, motivated by a team of agents attempting temporal rendezvous under stochastic disturbances and communication delays. To assess how failures at one or multiple agents amplify the risk of deviation across the network, we employ the Average Value-at-Risk as a systemic measure of cascading uncertainty. Closed-form expressions reveal explicit dependencies of the risk of cascading failure on the Laplacian spectrum, communication delay, and noise statistics. We further establish fundamental lower bounds that characterize the best-achievable network performance under time-delay constraints. These bounds serve as feasibility certificates for assessing whether a desired safety or performance goal can be achieved without exhaustive search across all possible topologies. In addition, we develop an efficient single-step update law that enables scalable propagation of conditional risk as new failures are detected. Analytical and numerical studies demonstrate significant computational savings and confirm the tightness of the theoretical limits across diverse network configurations.
title Incremental Risk Assessment for Cascading Failures in Large-Scale Multi-Agent Systems
topic Systems and Control
url https://arxiv.org/abs/2604.06024