Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals

Lightning discharges produce electromagnetic radiation in a wide frequency range, but its propagation in a certain frequency range are usually used by lightning detection networks. Investigation of lightning activities in time-frequency domain can be obtained by using the wavelet transform. This stu...

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Main Authors: Mehranzamir, Kamyar, Davarpanah, Mahdi, Abdul Malek, Zulkurnain, Afrouzi, Hadi Nabipour
Format: Article
Published: Elsevier Ltd. 2018
Subjects:
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author Mehranzamir, Kamyar
Davarpanah, Mahdi
Abdul Malek, Zulkurnain
Afrouzi, Hadi Nabipour
author_facet Mehranzamir, Kamyar
Davarpanah, Mahdi
Abdul Malek, Zulkurnain
Afrouzi, Hadi Nabipour
author_sort Mehranzamir, Kamyar
collection ePrints
description Lightning discharges produce electromagnetic radiation in a wide frequency range, but its propagation in a certain frequency range are usually used by lightning detection networks. Investigation of lightning activities in time-frequency domain can be obtained by using the wavelet transform. This study proposes a new approach using the discrete wavelet transform (DWT) algorithm to classify the detected lightning strikes. The measuring station would capture lightning electric field in 500 ms time scale and then utilizes a wavelet based recognizer algorithm to duly differentiate the cloud to ground flash from other cloud activities. Wavelet transform allows the expansion of transient events into a small number of coefficients. A total of 200 lightning flashes were randomly selected among the captured lightning discharges in South of Malaysia in one year. Initially, the cloud to ground and other cloud activities were manually analysed and discriminated. Then, these lightning flashes were analysed using different mother wavelets such as Haar, symmlet, Coiflet, and Daubechies by means of MATLAB program. Haar mother wavelet gives the best result for CG decomposition analysis. A total of 24 decomposition layers were chosen and the energy level of each layer was calculated to obtain the correlation between energy fluctuation and type of signal. The investigations reveal that the CG discharges have higher energy in 17th to 20th layers compared to the rest. However, the opposite results were obtained for the case of other cloud activities. To increase the accuracy of the wavelet transform approach algorithm, another filter was added to the algorithm flowchart. The proposed CG discrimination algorithm successfully classified 92% of the randomly selected flashes.
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spelling utm.eprints-867252020-09-30T09:05:00Z http://eprints.utm.my/86725/ Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals Mehranzamir, Kamyar Davarpanah, Mahdi Abdul Malek, Zulkurnain Afrouzi, Hadi Nabipour TK Electrical engineering. Electronics Nuclear engineering Lightning discharges produce electromagnetic radiation in a wide frequency range, but its propagation in a certain frequency range are usually used by lightning detection networks. Investigation of lightning activities in time-frequency domain can be obtained by using the wavelet transform. This study proposes a new approach using the discrete wavelet transform (DWT) algorithm to classify the detected lightning strikes. The measuring station would capture lightning electric field in 500 ms time scale and then utilizes a wavelet based recognizer algorithm to duly differentiate the cloud to ground flash from other cloud activities. Wavelet transform allows the expansion of transient events into a small number of coefficients. A total of 200 lightning flashes were randomly selected among the captured lightning discharges in South of Malaysia in one year. Initially, the cloud to ground and other cloud activities were manually analysed and discriminated. Then, these lightning flashes were analysed using different mother wavelets such as Haar, symmlet, Coiflet, and Daubechies by means of MATLAB program. Haar mother wavelet gives the best result for CG decomposition analysis. A total of 24 decomposition layers were chosen and the energy level of each layer was calculated to obtain the correlation between energy fluctuation and type of signal. The investigations reveal that the CG discharges have higher energy in 17th to 20th layers compared to the rest. However, the opposite results were obtained for the case of other cloud activities. To increase the accuracy of the wavelet transform approach algorithm, another filter was added to the algorithm flowchart. The proposed CG discrimination algorithm successfully classified 92% of the randomly selected flashes. Elsevier Ltd. 2018-12 Article PeerReviewed Mehranzamir, Kamyar and Davarpanah, Mahdi and Abdul Malek, Zulkurnain and Afrouzi, Hadi Nabipour (2018) Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals. Journal of Atmospheric and Solar-Terrestrial Physics, 181 . pp. 127-140. ISSN 1364-6826 http://dx.doi.org/10.1016/j.jastp.2018.11.005 DOI:10.1016/j.jastp.2018.11.005
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Mehranzamir, Kamyar
Davarpanah, Mahdi
Abdul Malek, Zulkurnain
Afrouzi, Hadi Nabipour
Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title_full Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title_fullStr Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title_full_unstemmed Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title_short Discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
title_sort discriminating cloud to ground lightning flashes based on wavelet analysis of electric field signals
topic TK Electrical engineering. Electronics Nuclear engineering
work_keys_str_mv AT mehranzamirkamyar discriminatingcloudtogroundlightningflashesbasedonwaveletanalysisofelectricfieldsignals
AT davarpanahmahdi discriminatingcloudtogroundlightningflashesbasedonwaveletanalysisofelectricfieldsignals
AT abdulmalekzulkurnain discriminatingcloudtogroundlightningflashesbasedonwaveletanalysisofelectricfieldsignals
AT afrouzihadinabipour discriminatingcloudtogroundlightningflashesbasedonwaveletanalysisofelectricfieldsignals