We analyze the occurrence and the values of record-breaking temperatures in
daily and monthly temperature observations. Our aim is to better understand and
quantify the statistics of temperature records in the context of global
warming. Similar to earlier work we employ a simple mathematical model of
independent and identically distributed random variables with a linearly
growing expectation value. This model proved to be useful in predicting the
increase (decrease) in upper (lower) temperature records in a warming climate.
Using both station and re-analysis data from Europe and the United States we
further investigate the statistics of temperature records and the validity of
this model. The most important new contribution in this article is an analysis
of the statistics of record values for our simple model and European reanalysis
data. We estimate how much the mean values and the distributions of record
temperatures are affected by the large scale warming trend. In this context we
consider both the values of records that occur at a certain time and the values
of records that have a certain record number in the series of record events. We
compare the observational data both to simple analytical computations and
numerical simulations. We find that it is more difficult to describe the values
of record breaking temperatures within the framework of our linear drift model.
Observations from the summer months fit well into the model with Gaussian
random variables under the observed linear warming, in the sense that record
breaking temperatures are more extreme in the summer. In winter however a
significant asymmetry of the daily temperature distribution hides the effect of
the slow warming trends. Therefore very extreme cold records are still possible
in winter. This effect is even more pronounced if one considers only data from
subpolar regions.Comment: 16 pages, 20 figures, revised version, published in Climate Dynamic