Neural network model for predicting the horizontal component of Earth’s magnetic field (H) over Indian equatorial region during quiet and disturbed periods

IF 2.8 3区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS Advances in Space Research Pub Date : 2025-02-15 DOI:10.1016/j.asr.2024.12.014
S. Sajith Babu , K. Unnikrishnan , Sreekumar Haridas
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Abstract

Artificial Neural Networks (ANNs) have proven successful in forecasting various magnetospheric and ionospheric parameters. The design of an artificial neural network (ANN) for predicting the horizontal component of Earth’s magnetic field (H) and range in H (ΔH), over Indian equatorial region, for both quiet and disturbed conditions of 23rd solar cycle (August 1996 to December 2007) is discussed in this work. Ground magnetometer data from the stations Tirunelveli [TIR], Pondicherry [PND], Alibag [ABG], and Ujjain [UJJ] are used for training the network. Datasets from the stations Trivandrum [TRD] and Nagpur [NGP] are used for the testing procedure. The data used in this work covers the 23rd solar cycle and it include low, moderate and high solar activity levels of both the ascending and descending phases of the solar cycle. Two sets of input parameters are used as inputs to the ANN. The first set, namely the geophysical parameters, are temporally or spatially related to the training stations. These consists of Latitude, Longitude, day of the year (DOY), local time (LT) magnetic dip angle (Inclination, I) and angle of declination (magnetic declination, D). The second set of inputs, that are driven by solar activity and affect the different stations uniformly, are Solar Flux (F10.7), Ap Index, IMF Bz, and Ion Number Density. Using these input parameters a neural network model (CCNRM) with 10 hidden neurons and 600 iterations is developed. It is found that the prediction accuracy of the model is better while training with original time series rather than the detrended time series. Here we present the prediction of H and ΔH during the quiet, disturbed geomagnetic conditions (minor storms (Dst minimum ≤ −50 nT), major storms (Dst minimum ≤ −100 nT)) along with its seasonal variation. Different datasets of the 23rd solar cycle including low, moderate and high solar activity levels from both the ascending and descending phases of the solar cycle are faithfully reproduced by the model. The model successfully predicted the diurnal variation, seasonal variation, minor storms and major storms within the average error limits of 11 nT, 7 nT, 27 nT and 36 nT respectively during the testing process.
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来源期刊
Advances in Space Research
Advances in Space Research 地学天文-地球科学综合
CiteScore
5.20
自引率
11.50%
发文量
800
审稿时长
5.8 months
期刊介绍: The COSPAR publication Advances in Space Research (ASR) is an open journal covering all areas of space research including: space studies of the Earth''s surface, meteorology, climate, the Earth-Moon system, planets and small bodies of the solar system, upper atmospheres, ionospheres and magnetospheres of the Earth and planets including reference atmospheres, space plasmas in the solar system, astrophysics from space, materials sciences in space, fundamental physics in space, space debris, space weather, Earth observations of space phenomena, etc. NB: Please note that manuscripts related to life sciences as related to space are no more accepted for submission to Advances in Space Research. Such manuscripts should now be submitted to the new COSPAR Journal Life Sciences in Space Research (LSSR). All submissions are reviewed by two scientists in the field. COSPAR is an interdisciplinary scientific organization concerned with the progress of space research on an international scale. Operating under the rules of ICSU, COSPAR ignores political considerations and considers all questions solely from the scientific viewpoint.
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