Fourth European Space Weather Week 5-9 Nov. 2007 TEC FORECASTING DURING DISTURBED SPACE WEATHER CONDITIONS: A POSSIBLE ALTERNATIVE TO THE IRI-2001 Yurdanur Tulunay 1 , Erdem Turker Senalp 2 , Ersin Tulunay 2 ODTU / METU Ankara, TURKEY (1) Dept. of Aerospace Eng., [email protected](2) Dept. of Electrical and Electronics Eng. ESWW4, 5-9 Nov. 2007, Brussels 1
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Fourth European Space Weather Week 5-9 Nov. 2007 TEC F ORECASTING D URING D ISTURBED S PACE W EATHER C ONDITIONS : A P OSSIBLE A LTERNATIVE TO THE IRI-2001.
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• During disturbed SW conditions, METU-NN-C seems to show better performance over IRI-2001
• METU-NN-C Model - more versatile and has got advantages provided that the representative data are available
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Acknowledgements
This work is partially supported by
• EU action of COST 296 (Mitigation of Ionospheric Effects on Radio Systems)
• TUBITAK-ÇAYDAG (105Y003)
• GPS-TEC data are kindly provided by Dr. Lj. R. Cander
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