20th Century Droughts
The Global Precipitation Climatology Project (GPCP)[1] of Deutscher Wetterdienst created a global dataset of monthly rainfall covering the years 1901-2011 at 0.5o resolution. It is based on rain gauge observations and was first published in 2011.
Rainfall patterns and variability vary greatly from one location to another. Moreover, the human eye is easily fooled by randomness in time-series data.  A convenient way to handle these issues is to replace the observed (highly non-normal and seasonally varying) rainfall amounts by a standardized index such that an index  value of say, -2, represents an extremely dry period (-2 standard deviations from the mean implies that rainfall is lower than the observed value only 2.1% of the time). Another advantage of using a Standardized Precipitation Index (SPI) is that a separate index can be defined with respect to each cumulative rainfall time-scale of interest. For instance, low values of the 3-month index means dry soil, whereas low values of the 12-month index could be consistent with either wet or dry soils, but may mean empty reservoirs and dry streams .
Plotting SPI as a function of both time and time-scale can give insight into nature of droughts at a particular location. The graphic highlights 20th century droughts (actually 1901-2012) for some agriculturally important places, extracted from the GPCP dataset.
The graphic includes some truly terrible historical events. For example, the Ukraine and Volga drought of 1920 and extensive period of drought in the Volga during the 1930s cost millions of lives.
The Russian droughts of 1935-39 coincided with the dust bowl years visible in the index data for Kansas. The 1950s drought in Kansas was at least as severe but it’s impacts were limited by improved agricultural practices and disaster response. The recent drought in Texas and Chihuahua province of Northern Mexico are the most extreme there for at least 50 years. The 2008 drought in Buenos Aires province of Argentina (which helped fuel food-price inflation globally) is without precedent in the GPCP record.
While droughts are an inevitable fact of life, it is also possible that the agricultural revolution which began in the 1960s took place during an unusually benign period. I hope to look into this in a future post.
[1] Schneider, Udo; Becker, Andreas; Finger, Peter; Meyer-Christoffer, Anja; Rudolf, Bruno; Ziese, Markus (2011): GPCC Full Data Reanalysis Version 6.0 at 0.5°: Monthly Land-Surface Precipitation from Rain-Gauges built on GTS-based and Historic Data.
SPI algorithm
There are many alternative ways to define a standardized precipitation index. In the approach used above , no functional form for the distribution of rainfall was assumed. SPI was computed based on the empirical cumulative distribution function( ecdf) only. ecdf can be defined from low  to high values values of precipitation P(>x) or from high to low values P(<x). The algorithm (R function)  given below symmetrises over these two alternatives. I think this is an improvement over the algorithm given in a previous post.
getSPI <- function(y){
#empirical, symmetrized Standard Precipitation Index
fit.cdf <- ecdf(y)
fit.rcdf <- ecdf(-y)
cdfs <- fit.cdf(y)
rcdfs <- 1 -fit.rcdf(-y)
#invert normal
spi.t <- qnorm(cdfs)
spi.tp <- na.omit(spi.t[ spi.t != Inf ]) #drop Inf
#reversed
rspi.t <- qnorm(rcdfs)
rspi.tp <- na.omit(rspi.t[ rspi.t != -Inf ]) #drop Inf
#symmetrise
spi.sym <- (spi.t+rspi.t)/2
spi.sym[which(spi.t == Inf)] <- rspi.t[which(spi.t==Inf)]
spi.sym[which(rspi.t == -Inf)] <- spi.t[which(rspi.t==-Inf)]
return(spi.sym)
}
April 11, 2013
Posted in: Uncategorized
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Quantifying CO2 savings from wind power
The graphic is from a writeup of a calculation which indicates that CO2 emissions reductions associated with wind power were 0.279 tCO2/MWh for the Irish electricity grid in 2011. Wind power met 17% of electricity demand that year. Such savings are a lot lower than have usually been assumed. Most grid operators do not publish official numbers on the effectiveness of wind power each year, despite the large investment going into this technology. Fortunately in the Irish case, the detailed data required to do the analysis is publicly available.
co2calc contains the details of the emissions model and the simple statistical analysis. It uses 1/2-hourly generation data compiled from market operator www.sem-o.com. Zipped data files can be downloaded below, although the script can also be run directly in an R terminal without downloading these files.
windfarmGeneration_2011.csv.zip
thermalStationParameters.csv.zip
meteredGeneration_2011.csv.zip
The European Wind Energy Association claims that wind power saves 0.696tCO2/MWh, while the British Wind Energy Association uses a figure of 0.43tCO2/MWh.
A 2012 report by the Institute for Public Policy Research, a UK think tank, entitled “Beyond the Bluster: Why Wind Power is an Effective Technology” claims that “every megawatt-hour (MWh) of electricity produced by wind power in Great Britain results in a minimum CO2 saving of around 350kg”.
(Paper submitted to Energy Policy, Elsevier November 2012)
January 18, 2013
Posted in: Wind Energy
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