Machine learning based automated identification of thunderstorms from anemometric records using shapelet transform

01/10/2021
by   Monica Arul, et al.
29

Detection of thunderstorms is important to the wind hazard community to better understand extreme winds field characteristics and associated wind induced load effects on structures. This paper contributes to this effort by proposing a new course of research that uses machine learning techniques, independent of wind statistics based parameters, to autonomously identify and separate thunderstorms from large databases containing high frequency sampled continuous wind speed measurements. In this context, the use of Shapelet transform is proposed to identify key individual attributes distinctive to extreme wind events based on similarity of shape of their time series. This novel shape based representation when combined with machine learning algorithms yields a practical event detection procedure with minimal domain expertise. In this paper, the shapelet transform along with Random Forest classifier is employed for the identification of thunderstorms from 1 year of data from 14 ultrasonic anemometers that are a part of an extensive in situ wind monitoring network in the Northern Mediterranean ports. A collective total of 235 non-stationary records associated with thunderstorms were identified using this method. The results lead to enhancing the pool of thunderstorm data for more comprehensive understanding of a wide variety of thunderstorms that have not been previously detected using conventional gust factor-based methods.

READ FULL TEXT

page 4

page 7

page 14

page 15

page 17

research
04/22/2020

Applications of shapelet transform to time series classification of earthquake, wind and wave data

Autonomous detection of desired events from large databases using time s...
research
09/25/2019

Determining offshore wind installation times using machine learning and open data

The installation process of offshore wind turbines requires the use of e...
research
08/29/2019

Data-based wind disaster climate identification algorithm and extreme wind speed prediction

An extreme wind speed estimation method that considers wind hazard clima...
research
01/13/2022

Upward lightning at tall structures: Atmospheric drivers for trigger mechanisms and flash type

Upward lightning is much rarer than downward lightning and requires tall...
research
11/20/2019

Shapelets for earthquake detection

This paper introduces EQShapelets (EarthQuake Shapelets) a time-series s...
research
01/09/2023

Upward lightning at wind turbines: Risk assessment from larger-scale meteorology

Upward lightning (UL) has become an increasingly important threat to win...
research
11/30/2018

Wavelet variance scale-dependence as a dynamics discriminating tool in high-frequency urban wind speed time series

High frequency wind time series measured at different heights from the g...

Please sign up or login with your details

Forgot password? Click here to reset