CYLGAPOct 11, 2024

Establishing Nationwide Power System Vulnerability Index across US Counties Using Interpretable Machine Learning

arXiv:2410.19754v23 citationsh-index: 21
Originality Synthesis-oriented
AI Analysis

This addresses the problem of quantifying and mitigating power outage risks for infrastructure operators, policymakers, and emergency managers, though it is incremental as it applies existing methods to new data.

The study tackled the lack of data-driven metrics for power system vulnerability in the US by collecting ~179 million outage records and developing a Power System Vulnerability Index (PSVI) using interpretable machine learning, revealing a consistent increase in vulnerability over the past decade and identifying 318 counties as hotspots.

Power outages have become increasingly frequent, intense, and prolonged in the US due to climate change, aging electrical grids, and rising energy demand. However, largely due to the absence of granular spatiotemporal outage data, we lack data-driven evidence and analytics-based metrics to quantify power system vulnerability. This limitation has hindered the ability to effectively evaluate and address vulnerability to power outages in US communities. Here, we collected ~179 million power outage records at 15-minute intervals across 3022 US contiguous counties (96.15% of the area) from 2014 to 2023. We developed a power system vulnerability assessment framework based on three dimensions (intensity, frequency, and duration) and applied interpretable machine learning models (XGBoost and SHAP) to compute Power System Vulnerability Index (PSVI) at the county level. Our analysis reveals a consistent increase in power system vulnerability over the past decade. We identified 318 counties across 45 states as hotspots for high power system vulnerability, particularly in the West Coast (California and Washington), the East Coast (Florida and the Northeast area), the Great Lakes megalopolis (Chicago-Detroit metropolitan areas), and the Gulf of Mexico (Texas). Heterogeneity analysis indicates that urban counties, counties with interconnected grids, and states with high solar generation exhibit significantly higher vulnerability. Our results highlight the significance of the proposed PSVI for evaluating the vulnerability of communities to power outages. The findings underscore the widespread and pervasive impact of power outages across the country and offer crucial insights to support infrastructure operators, policymakers, and emergency managers in formulating policies and programs aimed at enhancing the resilience of the US power infrastructure.

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