11/26/081 AUTOMATIC SOLAR ACTIVITY DETECTION BASED ON IMAGES FROM HSOS NAOC, HSOS YANG Xiao, LIN GangHua

Slides:



Advertisements
Similar presentations
Applications of one-class classification
Advertisements

Bach ground: The correlation between sunspot proper motion and flares has been investigated for a long time (e.g. Antalova, 1965, Gesztelyi, 1984). The.
Rami Qahwaji & TufanColak EIMC, University of Bradford BD71DP,
Flare Luminosity and the Relation to the Solar Wind and the Current Solar Minimum Conditions Roderick Gray Research Advisor: Dr. Kelly Korreck.
Space weather at University of Graz / Kanzelhöhe Observatory Institute of Physics, University of Graz, Austria Kanzelhöhe Observatory, Gerlitzen (Austria)
This work was performed under the auspices of the Significant Opportunities in Atmospheric Research and Science Program. SOARS is managed by the University.
TRMM Tropical Rainfall Measurement (Mission). Why TRMM? n Tropical Rainfall Measuring Mission (TRMM) is a joint US-Japan study initiated in 1997 to study.
Vision Based Control Motion Matt Baker Kevin VanDyke.
Fast and Extensible Building Modeling from Airborne LiDAR Data Qian-Yi Zhou Ulrich Neumann University of Southern California.
MESA LAB Two papers in IFAC14 Guimei Zhang MESA LAB MESA (Mechatronics, Embedded Systems and Automation) LAB School of Engineering, University of California,
The Effects of Geomagnetic Storms on Power Systems Mary Holleboom Justin Voogt ENGR W82 January 22, 2002.
Space Weather Risk Risto Pirjola, Kirsti Kauristie, Hanna Lappalainen, Ari Viljanen, Antti Pulkkinen Finnish Meteorological Institute, Space Research Unit.
Automated Detection and Characterization of Solar Filaments and Sigmoids K. Wagstaff, D. M. Rust, B. J. LaBonte and P. N. Bernasconi Johns Hopkins University.
Efficient Moving Object Segmentation Algorithm Using Background Registration Technique Shao-Yi Chien, Shyh-Yih Ma, and Liang-Gee Chen, Fellow, IEEE Hsin-Hua.
Failure Prediction in Hardware Systems Douglas Turnbull Neil Alldrin CSE 221: Operating System Final Project Fall
The Solar and Space Weather Reseach Group in Lund Space weather Solar activity - the driver Modelling and forecasting space weather and effects using KBN.
Tracking Video Objects in Cluttered Background
PROGRESS IN SPACE WEATHER PREDICTIONS AND APPLICATIONS ZEYNEP KOCABAŞ METU AEE 2005.
Diagnosis of Ovarian Cancer Based on Mass Spectrum of Blood Samples Committee: Eugene Fink Lihua Li Dmitry B. Goldgof Hong Tang.
Statistical Learning: Pattern Classification, Prediction, and Control Peter Bartlett August 2002, UC Berkeley CIS.
Face Processing System Presented by: Harvest Jang Group meeting Fall 2002.
Sung-Hong Park Space Weather Research Laboratory New Jersey Institute of Technology Study of Magnetic Helicity and Its Relationship with Solar Activities:
Jacinto C. Nascimento, Member, IEEE, and Jorge S. Marques
Real-Time Odor Classification Through Sequential Bayesian Filtering Javier G. Monroy Javier Gonzalez-Jimenez
Convolutional Neural Networks for Image Processing with Applications in Mobile Robotics By, Sruthi Moola.
What stellar properties can be learnt from planetary transits Adriana Válio Roque da Silva CRAAM/Mackenzie.
Thomas Zurbuchen University of Michigan The Structure and Sources of the Solar Wind during the Solar Cycle.
ENDA MOLLOY, ELECTRONIC ENG. FINAL PRESENTATION, 31/03/09. Automated Image Analysis Techniques for Screening of Mammography Images.
Adriana V. R. Silva CRAAM/Mackenzie COROT /11/2005.
Digitization in Kodaikanal Observatory References and useful links :
The Sun Chapter 29 Section 29.2 and Spaceweather.
Space Weather Major sources of space weather ● Solar wind – a stream of plasma consisting of high energy charged particles released from the upper atmosphere.
Efficacy of Muon Detection for Solar Flare Early Warning Canadian Muon Workshop St-Émile-de-Suffolk, Québec, Canada October 17-19, 2011 NRCan DND Carleton.
Observations of quiet solar features with the SSRT and NoRH V.V. Grechnev & SSRT team Institute of Solar-Terrestrial Physics, Irkutsk, Russia Relatively.
1Yang Liu/Magnetic FieldHMI Science – 1 May 2003 Magnetic Field Goals – magnetic field & eruptive events Yang Liu Stanford University.
Time Series Data Analysis - I Yaji Sripada. Dept. of Computing Science, University of Aberdeen2 In this lecture you learn What are Time Series? How to.
Kernel Methods A B M Shawkat Ali 1 2 Data Mining ¤ DM or KDD (Knowledge Discovery in Databases) Extracting previously unknown, valid, and actionable.
1 Webcam Mouse Using Face and Eye Tracking in Various Illumination Environments Yuan-Pin Lin et al. Proceedings of the 2005 IEEE Y.S. Lee.
Solar Wind and Coronal Mass Ejections
SOTERIA WP András Ludmány Debrecen, Hungary 5th ESWW 2008, Brussels
Solar Soft X-Rays Data Periodic Analysis Pu Wang Department of Astronomy, Nanjing University Department of Astronomy, Nanjing University July 9, 2005
NoRH Observations of Prominence Eruption Masumi Shimojo Nobeyama Solar Radio Observatory NAOJ/NINS 2004/10/28 Nobeyama Symposium SeiSenRyo.
A Face processing system Based on Committee Machine: The Approach and Experimental Results Presented by: Harvest Jang 29 Jan 2003.
1 Machine Learning and Data Mining for Automatic Detection and Interpretation of Solar Events Jie Zhang (Presenting, Co-I, SCS*) Art Poland (PI, SCS*)
Automated Solar Cavity Detection
GENDER AND AGE RECOGNITION FOR VIDEO ANALYTICS SOLUTION PRESENTED BY: SUBHASH REDDY JOLAPURAM.
Ganghua Lin Huairou Solar Observating Station,NAO,CAS.
Solar weather consists of the Sun’s effects upon its planetary system and the solar activities it causes. Solar activities, such as flares and CMEs, form.
Detection, Classification and Tracking in Distributed Sensor Networks D. Li, K. Wong, Y. Hu and A. M. Sayeed Dept. of Electrical & Computer Engineering.
Solar Astronomy Space Science Lab 2008 Pisgah Astronomical Research Institute.
Chapters 12 and 13 The Sun & Measuring the Properties of Stars.
What can we learn about coronal mass ejections through spectroscopic observations Hui Tian High Altitude Observatory, National Center for Atmospheric Research.
What is a geomagnetic storm? A very efficient exchange of energy from the solar wind into the space environment surrounding Earth; These storms result.
Sunspots, Prominences, Solar Wind, Solar Flare.  a fact or situation that is observed to exist or happen, especially one whose cause or explanation is.
TUMOR BURDEN ANALYSIS ON CT BY AUTOMATED LIVER AND TUMOR SEGMENTATION RAMSHEEJA.RR Roll : No 19 Guide SREERAJ.R ( Head Of Department, CSE)
Multi-Point Observations of The Solar Corona for Space weather Acknowledgements The forecasting data was retrieved from NOAA SWPC products and SIDC PRESTO.
Research Methodology Proposal Prepared by: Norhasmizawati Ibrahim (813750)
Evaluation of Gender Classification Methods with Automatically Detected and Aligned Faces Speaker: Po-Kai Shen Advisor: Tsai-Rong Chang Date: 2010/6/14.
Digitization in Kodaikanal Observatory
How to forecast solar flares?
Hiroko Watanabe (Kyoto Univ.)
Solar Waves Stream in New Insight:
Diagnosing kappa distribution in the solar corona with the polarized microwave gyroresonance radiation Alexey A. Kuznetsov1, Gregory D. Fleishman2 1Institute.
Space Weather Research at Trinity College Dublin
CORONAL LOOPS.
Brain Hemorrhage Detection and Classification Steps
The Sun: Portrait of a G2V star
Space Weather: Science, Effects, Forecasts and Services.
An Improved Neural Network Algorithm for Classifying the Transmission Line Faults Slavko Vasilic Dr Mladen Kezunovic Texas A&M University.
Department of Electrical Engineering
Presentation transcript:

11/26/081 AUTOMATIC SOLAR ACTIVITY DETECTION BASED ON IMAGES FROM HSOS NAOC, HSOS YANG Xiao, LIN GangHua

11/26/082 OUTLINE Purpose for Automatic Detection -- Space Weather Forecast Purpose for Automatic Detection -- Space Weather Forecast Automatic Solar Activities Detection Based on Images from HSOS Automatic Solar Flare Detection Automatic Solar Flare Detection Conclusions Conclusions

11/26/083 OUTLINE Purpose for Automatic Detection -- Space Weather Forecast Purpose for Automatic Detection -- Space Weather Forecast Automatic Solar Activities Detection Based on Images from HSOS Automatic Solar Flare Detection Automatic Solar Flare Detection Conclusions Conclusions

11/26/084 Purpose for Automatic Detection -- Space Weather Forecast (1) ‏ The term “space weather” refers to adverse conditions on the Sun that may affect space-borne or ground-based technological systems and can endanger human health or life. The importance of space weather is increasing day after day because of the way solar activities affect life on Earth and it will continue to increase as we rely more and more on different communication and power system. The term “space weather” refers to adverse conditions on the Sun that may affect space-borne or ground-based technological systems and can endanger human health or life. The importance of space weather is increasing day after day because of the way solar activities affect life on Earth and it will continue to increase as we rely more and more on different communication and power system. Ground based systems: Induced electric fields and currents can disrupt the normal operation of high voltage power transmission grids, pipelines, telecommunications cables, metallic oil and gas pipelines and railway signaling. Ground based systems: Induced electric fields and currents can disrupt the normal operation of high voltage power transmission grids, pipelines, telecommunications cables, metallic oil and gas pipelines and railway signaling. Communications systems: Wireless communications systems suffer from interruption of service like frequency jamming and dropped communications due to radio bursts caused by solar microwave emissions. Communications systems: Wireless communications systems suffer from interruption of service like frequency jamming and dropped communications due to radio bursts caused by solar microwave emissions. Space based systems: Adverse space weather conditions can cause anomalies and system failures and increased drag on the movement of satellites and spacecraft leading to slow-downs, changes in orbits and shorter life-times of missions. Space based systems: Adverse space weather conditions can cause anomalies and system failures and increased drag on the movement of satellites and spacecraft leading to slow-downs, changes in orbits and shorter life-times of missions.

11/26/085 Purpose for Automatic Detection -- Space Weather Forecast (2) ‏ Necessity of applying automatic detection There are an increasing number of space missions and ground based observatories providing continuous observation of the Sun at many different wavelengths. We are becoming “data rich” but without automated data analysis and knowledge extraction techniques, we continue to be “knowledge poor”. There are an increasing number of space missions and ground based observatories providing continuous observation of the Sun at many different wavelengths. We are becoming “data rich” but without automated data analysis and knowledge extraction techniques, we continue to be “knowledge poor”. A long standing problem in solar physics is establishing a correlation between the occurrence of solar activity (e.g., solar flares and coronal mass ejection(CMEs)) and solar features (sunspots, active regions and filaments) observed in various wavelengths. A long standing problem in solar physics is establishing a correlation between the occurrence of solar activity (e.g., solar flares and coronal mass ejection(CMEs)) and solar features (sunspots, active regions and filaments) observed in various wavelengths. An efficient prediction system requires the successful integration of solar physics, machine learning and maybe solar imaging. An efficient prediction system requires the successful integration of solar physics, machine learning and maybe solar imaging. There is no machine learning algorithm that is known to provide the “best” learning performance especially in the solar domain. In most cases, empirical studies must be carried out to compare the performances of these algorithms before the final decision on which learning algorithm to use can be made. There is no machine learning algorithm that is known to provide the “best” learning performance especially in the solar domain. In most cases, empirical studies must be carried out to compare the performances of these algorithms before the final decision on which learning algorithm to use can be made.

11/26/086 OUTLINE Purpose for Automatic Detection -- Space Weather Forecast Purpose for Automatic Detection -- Space Weather Forecast Automatic Solar Activities Detection Based on Images from HSOS Automatic Solar Flare Detection Automatic Solar Flare Detection Conclusions Conclusions

11/26/087 Solar Multi-channel Telescope

11/26/088 Full solar disk vector magnetograph at Huairou

11/26/089 Automatic Solar Activities Detection Based on Images from HSOS Real-time detecion of solar flares in Hα full-disk images Real-time detecion of solar flares in Hα full-disk images Automatic detection, classification and tracking of filaments in Hα full-disk images Automatic detection, classification and tracking of filaments in Hα full-disk images Automatic detection of sunspots using magnetic full-disk images Automatic detection of sunspots using magnetic full-disk images

11/26/0810 OUTLINE Purpose for Automatic Detection -- Space Weather Forecast Purpose for Automatic Detection -- Space Weather Forecast Automatic Solar Activities Detection Based on Images from HSOS Automatic Solar Flare Detection Automatic Solar Flare Detection Conclusions Conclusions

11/26/0811 AUTOMATIC SOLAR FLARE DETECTION A solar flare is an intense, abrupt release which occurs in areas on the Sun where the magnetic field is changing due to flux emergence or sunspot motion. A solar flare is an intense, abrupt release which occurs in areas on the Sun where the magnetic field is changing due to flux emergence or sunspot motion. Methods for automatic flare detection: a combination of region-based and edge- based segmentation methods, neural network technique, RBF, SVM, etc. Methods for automatic flare detection: a combination of region-based and edge- based segmentation methods, neural network technique, RBF, SVM, etc. Feature analysis and preprocessing. Feature analysis and preprocessing.

11/26/0812 NEURAL NETWORKS A method for the automatic detection of solar flares from Hα images using the multi-layer perceptron(MLP) with back-propagation training rule. A method for the automatic detection of solar flares from Hα images using the multi-layer perceptron(MLP) with back-propagation training rule.

11/26/0813 RADIAL BASIS FUNCTION(RBF) (1)‏

11/26/0814 RADIAL BASIS FUNCTION(RBF) (2)‏ After computing the optimal weights, the RBF network can be used as a classifier to segment the test data into the corresponding classes, with - 1 indicating a non-flare state and 1 indicating a flare state. After computing the optimal weights, the RBF network can be used as a classifier to segment the test data into the corresponding classes, with - 1 indicating a non-flare state and 1 indicating a flare state.

11/26/0815 Support Vector Machine(SVM)‏

11/26/0816 Feature Analysis and Preprocessing QU et al. (2003) used nine features for solar flare detection. QU et al. (2003) used nine features for solar flare detection. Feature 1: mean brightness of the frame. Feature 1: mean brightness of the frame. Feature 2: standard deviation of brightness. Feature 2: standard deviation of brightness. Feature 3: variation of mean brightness between consecutive images. Feature 3: variation of mean brightness between consecutive images. Feature 4: absolute brightness of a key pixel. Feature 4: absolute brightness of a key pixel. Feature 5: radial positon of the key pixel. Feature 5: radial positon of the key pixel. Feature 6: contrast between the key pixel and the minimum value of ite neighbors in a 7 by 7 window. Feature 6: contrast between the key pixel and the minimum value of ite neighbors in a 7 by 7 window. Feature 7: mean brightness of a 50 by 50 window, whe the key pixel is on the center. Feature 7: mean brightness of a 50 by 50 window, whe the key pixel is on the center. Feature 8: standard deviation of the pixels in the aforementioned 50 by 50 window. Feature 8: standard deviation of the pixels in the aforementioned 50 by 50 window. Feature 9: difference of the mean brightness of the 50 by 50 window between the current and the previous images. Feature 9: difference of the mean brightness of the 50 by 50 window between the current and the previous images.

11/26/0817 Three steps in the experiments of solar flare detection: (a) Preprocessing to obtain the nine features of solar flares. (a) Preprocessing to obtain the nine features of solar flares. (b) MLP, RBF and SVM training and testing program used for solar flare detection (b) MLP, RBF and SVM training and testing program used for solar flare detection (c) Region growing and edge detection methods for obtaining the flare properties. (c) Region growing and edge detection methods for obtaining the flare properties.

11/26/0818 CLASSIFICATION PERFORMANCE Through experiments, SVM is found to be the best for the solar-flare detection because it offers the best classification result and the training and testing speed are relatively fast. The second choise is RBF. MLP is not a well-controlled learning machine. Through experiments, SVM is found to be the best for the solar-flare detection because it offers the best classification result and the training and testing speed are relatively fast. The second choise is RBF. MLP is not a well-controlled learning machine.

11/26/0819 SOLAR FLARE DETECTION Automatic procedure to detect and characterize flares.

11/26/0820 OUTLINE Purpose for Automatic Detection -- Space Weather Forecast Purpose for Automatic Detection -- Space Weather Forecast Automatic Solar Activities Detection Based on Images from HSOS Automatic Solar Flare Detection Automatic Solar Flare Detection Conclusions Conclusions

11/26/0821 Conclutsions Despite the recent advances in solar imaging, machine learning and data mining have not been widely applied to solar data. Despite the recent advances in solar imaging, machine learning and data mining have not been widely applied to solar data. It is necessary to select well-performanced and appropriate algorithms to the study in the solar domain. It is necessary to select well-performanced and appropriate algorithms to the study in the solar domain.

11/26/0822 Thank you!