Short-term extreme wind speed forecasting using dual-output LSTM-based regression and classification model

IF 4.2 2区 工程技术 Q1 ENGINEERING, CIVIL
Paraskevi Modé , Cristoforo Demartino , Christos T. Georgakis , Nikos D. Lagaros
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引用次数: 0

Abstract

This study introduces a methodology for forecasting extreme wind speeds (EWS) using a dual-output long short-term memory and transformer (LSTM-Transformer) model that combines regression and classification techniques. The process involves three stages: establishing extreme event thresholds using extreme value analysis (EVA), training the model on historical weather data for precise point forecasting and classification, and calibrating the output for accurate extreme event identification. The model is trained using a combination of the losses corresponding to each output with tuned weights. Evaluated using data from Los Angeles, Chicago, and Houston, for a 60 and 90 min forecast interval, the model demonstrates reasonable performance in specific climatic conditions, outperforming its single-output regression and classification counterparts in terms of both accuracy and generalisation. This indicates strong potential for real-world applications in specific regions. Crucially, the study reveals that the forecast performances of the model are closely related to the imbalance ratios, highlighting a significant link between the model’s performance and the distribution of wind speed within the dataset. This highlights the importance of considering the imbalance ratio in the predictive model, especially when integrating EVA according to typical engineering practices. This innovative approach offers a reliable and flexible framework for enhancing EWS predictions, contributing significantly to the safety and decision-making processes in managing infrastructures.
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来源期刊
CiteScore
8.90
自引率
22.90%
发文量
306
审稿时长
4.4 months
期刊介绍: The objective of the journal is to provide a means for the publication and interchange of information, on an international basis, on all those aspects of wind engineering that are included in the activities of the International Association for Wind Engineering http://www.iawe.org/. These are: social and economic impact of wind effects; wind characteristics and structure, local wind environments, wind loads and structural response, diffusion, pollutant dispersion and matter transport, wind effects on building heat loss and ventilation, wind effects on transport systems, aerodynamic aspects of wind energy generation, and codification of wind effects. Papers on these subjects describing full-scale measurements, wind-tunnel simulation studies, computational or theoretical methods are published, as well as papers dealing with the development of techniques and apparatus for wind engineering experiments.
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