Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Possibility of Predicting Solar Activity Using Fractal Analysis


Affiliations
1 Department of Physics, Presidency College, Chennai, India
2 Department of Physics, Dhanalakshmi Srinivasan College of Engineering and Technology, Chennai, India
     

   Subscribe/Renew Journal


The study of solar activity and solar terrestrial relations, the sunspot number has always been taken as the main indicator of the intensity of solar activity. Various new techniques like neural networks, learning nonlinear dynamics and others are used by researchers to predict solar activity. But we are yet to obtain reasonably good results. This is mainly because the reason of the variation of solar activity is still unknown. Hence it is important to analyze the characteristics of the data. This paper considers sunspot as the index of solar activity and fractal analysis is used to examine the predictability of solar activity. For the period 1994 to 2008, the average fractal dimension for periods of 10 days or less was about 1.49. But during the same period, the average fractal dimension was 1.92 for periods longer than 10 days. Hence the result is encouraging for short-term prediction (i.e.) within about 10 days, but discouraging for medium-term prediction ( longer than 10 days ).

Keywords

Solar Activity, Neural Networks, Nonlinear Dynamics, Fractal Analysis, Fractal Dimension.
Subscription Login to verify subscription
User
Notifications
Font Size


Abstract Views: 243

PDF Views: 0




  • Possibility of Predicting Solar Activity Using Fractal Analysis

Abstract Views: 243  |  PDF Views: 0

Authors

R. Samuel Selvaraj
Department of Physics, Presidency College, Chennai, India
S. Tamil Selvi
Department of Physics, Dhanalakshmi Srinivasan College of Engineering and Technology, Chennai, India

Abstract


The study of solar activity and solar terrestrial relations, the sunspot number has always been taken as the main indicator of the intensity of solar activity. Various new techniques like neural networks, learning nonlinear dynamics and others are used by researchers to predict solar activity. But we are yet to obtain reasonably good results. This is mainly because the reason of the variation of solar activity is still unknown. Hence it is important to analyze the characteristics of the data. This paper considers sunspot as the index of solar activity and fractal analysis is used to examine the predictability of solar activity. For the period 1994 to 2008, the average fractal dimension for periods of 10 days or less was about 1.49. But during the same period, the average fractal dimension was 1.92 for periods longer than 10 days. Hence the result is encouraging for short-term prediction (i.e.) within about 10 days, but discouraging for medium-term prediction ( longer than 10 days ).

Keywords


Solar Activity, Neural Networks, Nonlinear Dynamics, Fractal Analysis, Fractal Dimension.