Affiliation:
1. Michigan Technological University, Houghton, Michigan
Abstract
Abstract
Based on counts of record highs and lows, and employing reversibility in time, an approach to examining natural variability is proposed. The focus is on intrinsic variability; that is, variance separated from the trend in the mean. A variability index α is suggested and studied for an ensemble of monthly temperature time series around the globe. Deviation of 〈α〉 (mean α) from zero, for an ensemble of time series, signifies a variance trend in a distribution-independent manner. For 15 635 monthly temperature time series from different geographical locations (Global Historical Climatology Network), each time series about a century-long, 〈α〉 = −1.0, indicating decreasing variability. This value is an order of magnitude greater than the 3σ value of stationary simulations. Using the conventional best-fit Gaussian temperature distribution, the trend is associated with a change of about −0.2°C (106 yr)−1 in the standard deviation of interannual monthly mean temperature distributions (about 10%).
Publisher
American Meteorological Society
Cited by
51 articles.
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