Prediction of fire danger index using a new machine learning based method to enhance power system resiliency against wildfires

Wildfires, which can cause significant damage to power systems, are mostly inevitable and unpredictable. Fire danger indexes, such as the Forest Fire Danger Index (FFDI) and the Canadian Fire Weather Index (FWI), measure the potential wildfire danger at a given time and location. Thus, by predicting...

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Veröffentlicht in:IET generation, transmission & distribution transmission & distribution, 2024-12, Vol.18 (23), p.4008-4022
Hauptverfasser: Pham, Tan Nhat, Shah, Rakibuzzaman, Amjady, Nima, Islam, Syed
Format: Artikel
Sprache:eng
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Zusammenfassung:Wildfires, which can cause significant damage to power systems, are mostly inevitable and unpredictable. Fire danger indexes, such as the Forest Fire Danger Index (FFDI) and the Canadian Fire Weather Index (FWI), measure the potential wildfire danger at a given time and location. Thus, by predicting these fire danger indexes in advance, power system operators can obtain valuable insight into the potential wildfire risks and can better be prepared to tackle the wildfires. However, due to dependency on weather conditions, these indexes usually have volatile time series, which make their prediction complex. Taking these facts into account, this paper, unlike previous approaches that predict fire danger indexes based on climatological models, develops a machine learning‐based forecast process to predict these indexes using the relevant weather data and past performance. To do this, first, a volatility analysis approach is presented to analyse the volatility level of the time series data of a fire danger index. Afterwards, an effective machine learning‐based forecast methodology using a new deep feature selection model is proposed to predict fire danger indexes. The developed forecast methodology is tested on the real‐world data of FFDI and FWI and is compared with several popular alternative methods reported in the literature. A time‐series forecast process is proposed to predict the daily fire danger indexes to enhance power system resiliency against wildfires. A novel deep feature selection method has been proposed, including volatility analysis of the forest fire danger index.
ISSN:1751-8687
1751-8695
DOI:10.1049/gtd2.13320