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Correlation of temperature with solar activity (SSN) Alexey Poyda and Mikhail Zhizhin Geophysical Center & Space Research Institute, Russian Academy of Sciences
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Climate History Data NCEP/NCAR Reanalysis climate history database with global weather 2.5 deg lat/lon grids from 1948 till now at 6 h time step Singular Value Decomposition for trend detection at each grid point with 3-4 years time window. Using SVD we can derive the most significant modes in the weather variation, both periodic and long-term quasy- linear
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5 most significant eigenvectors in temperature time series in 2 years window The SVD eigenvectors with the largest eigenvalues correspond to: 1.seasonal (1 year period, 2.interseasonal (1/2 year period) and 3.decadal variations (linear trend)
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SVD-derived linear trend in temperature is equivalent to the same width running time window average Blue is SVD-derived trend, red is 3- years time window average Surface temperature in Moscow for the last 25 years X-axis in bi-weeks (2 observations per month) Y-axis in Celsius degress
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Linear trend in surface temperature in Moscow vs. Solar Spot Number Temperature trend was derived by SVD decomposition with 3-years time window SSN is from http://spidr.ndgc.noaa.gov
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Same as above but with 3- years time window smoothing for SSN
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St.-PetersburgMinsk
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Correlation between surface temperature and smoothed SSN for the last 25 years, Eurasia
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Correlation between surface temperature and smoothed SSN for the last 50 years, Eurasia
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Correlation between surface temperature and SSN for 25 years
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Temperature at 1000 mbar pressure level and SSN
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Temperature at 925 mbar pressure level and SSN
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Temperature at 850 mbar pressure level and SSN
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Temperature at 700 mbar pressure level and SSN
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Temperature at 600 mbar pressure level and SSN
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Temperature at 500 mbar pressure level and SSN
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Temperature at 400 mbar pressure level and SSN
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Temperature at 300 mbar pressure level and SSN
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Temperature at 250 mbar pressure level and SSN
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Temperature at 200 mbar pressure level and SSN
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Temperature at 150 mbar pressure level and SSN
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Temperature at 100 mbar pressure level and SSN
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Temperature at 70 mbar pressure level and SSN
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Temperature at 50 mbar pressure level and SSN
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Temperature at 30 mbar pressure level and SSN
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Temperature at 20 mbar pressure level and SSN
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Temperature at 10 mbar pressure level and SSN
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Conclusion We observe strong regional correlation between linear trends in temperature and SSN both smoothed within 3-4 years time window for the last 25 years The time window length eliminates contributions from seasonal variations, volcanoes and El-Nino oscillations The spatial correlation pattern is persistent for different pressure levels (heights) Linear correlation for the larger time window (50 years NCEP/NCAR Reanalysis database) is not so pronounced in value, but has the same spatial pattern. Possibly we have to remove longer time scale trends (global warming :) from the temperature time series
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