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Autori principali: Okeukwu-Ogbonnaya, Adaeze, Amatapu, Rahul, Bergtold, Jason, Amariucai, George
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.13577
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author Okeukwu-Ogbonnaya, Adaeze
Amatapu, Rahul
Bergtold, Jason
Amariucai, George
author_facet Okeukwu-Ogbonnaya, Adaeze
Amatapu, Rahul
Bergtold, Jason
Amariucai, George
contents We represent interdependent infrastructure systems and communities alike with a hetero-functional graph (HFG) that encodes the dependencies between functionalities. This graph naturally imposes a partial order of functionalities that can inform the sequence of repair decisions to be made during a disaster across affected communities. However, using such technical criteria alone provides limited guidance at the point where the functionalities directly impact the communities, since these can be repaired in any order without violating the system constraints. To address this gap and improve resilience, we integrate community preferences to refine this partial order from the HFG into a total order. Our strategy involves getting the communities' opinions on their preferred sequence for repair crews to address infrastructure issues, considering potential constraints on resources. Due to the delay and cost associated with real-world survey data, we utilize a Large Language Model (LLM) as a proxy survey tool. We use the LLM to craft distinct personas representing individuals, each with varied disaster experiences. We construct diverse disaster scenarios, and each simulated persona provides input on prioritizing infrastructure repair needs across various communities. Finally, we apply learning algorithms to generate a global order based on the aggregated responses from these LLM-generated personas.
format Preprint
id arxiv_https___arxiv_org_abs_2507_13577
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LLM-Based Community Surveys for Operational Decision Making in Interconnected Utility Infrastructures
Okeukwu-Ogbonnaya, Adaeze
Amatapu, Rahul
Bergtold, Jason
Amariucai, George
Social and Information Networks
We represent interdependent infrastructure systems and communities alike with a hetero-functional graph (HFG) that encodes the dependencies between functionalities. This graph naturally imposes a partial order of functionalities that can inform the sequence of repair decisions to be made during a disaster across affected communities. However, using such technical criteria alone provides limited guidance at the point where the functionalities directly impact the communities, since these can be repaired in any order without violating the system constraints. To address this gap and improve resilience, we integrate community preferences to refine this partial order from the HFG into a total order. Our strategy involves getting the communities' opinions on their preferred sequence for repair crews to address infrastructure issues, considering potential constraints on resources. Due to the delay and cost associated with real-world survey data, we utilize a Large Language Model (LLM) as a proxy survey tool. We use the LLM to craft distinct personas representing individuals, each with varied disaster experiences. We construct diverse disaster scenarios, and each simulated persona provides input on prioritizing infrastructure repair needs across various communities. Finally, we apply learning algorithms to generate a global order based on the aggregated responses from these LLM-generated personas.
title LLM-Based Community Surveys for Operational Decision Making in Interconnected Utility Infrastructures
topic Social and Information Networks
url https://arxiv.org/abs/2507.13577