2023
DOI: 10.1038/s41467-023-40192-2
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Continuous estimation of power system inertia using convolutional neural networks

Abstract: Inertia is a measure of a power system’s capability to counteract frequency disturbances: in conventional power networks, inertia is approximately constant over time, which contributes to network stability. However, as the share of renewable energy sources increases, the inertia associated to synchronous generators declines, which may pose a threat to the overall stability. Reliably estimating the inertia of power systems dominated by inverted-connected sources has therefore become of paramount importance. We … Show more

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Cited by 17 publications
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“…Predictive ML techniques can help with systematic and effective load-shedding management [5]. ML algorithms are powerful in extracting insight from data, often performed with learners for a covariate task, predictive function, or causal impact [6].…”
Section: E(y |X)mentioning
confidence: 99%
“…Predictive ML techniques can help with systematic and effective load-shedding management [5]. ML algorithms are powerful in extracting insight from data, often performed with learners for a covariate task, predictive function, or causal impact [6].…”
Section: E(y |X)mentioning
confidence: 99%