Abstract:
Climate change has been attracting global attention at an ever-increasing rate over the last
two decades. Given the far-reaching impacts of climate change on the status of lifeon earth
as a whole, as understood from palaeo-climatic studies, the concern is justified. Studies on
climate change bear crucial importance for India where the population pressure is intense
and agrarian economy depends highly on rainfed agriculture.
In the present study attempts have been made to systematically study climate
change through analysis of observed data series of climatological parameters. This has
been achieved through following sequential steps:
(i) Development of software to carry out statistical tests for detecting trend and
shift in time series,
(ii) Sensitivity analysis of several popular methodologies of trend analysis,
(iii) Analysis of Indian sub divisional rainfall and regional temperature series,
(iv) Analysis of time series for climatological parameters from North Indian
observatories,
(v) Preparation of a continuous digital rainfall grid dataset with 1 km resolution by
interpolating normal annual rainfall in Uttarakhand, and
(vi) Analysis for change detection in rainfall and rainy day series from rain gauge
stations in Uttarakhand.
To carry out an extensive data analysis, the necessity of customised user-friendly
software was felt. The present work is an attempt to create a user-friendly software
incorporating tests used for trend and shift detection. It has been developed as a macro
using Visual Basic Applications embedded into an MS Excel file. It is an interactive
program that provides tool tips, options and warnings, and generates error messages for
common errors. It has context sensitive help and displays mathematical formulae involved
in each test. It incorporates Correlogram test. Mann-Kendall test with its suggested
modifications, Pettitt-Mann-Whitney test and moving t test for detection of shift alongwith
several other popular tests.
In the studies of climate change and hydrological change analyses, mostly Mann-
Kendall test has been used for detection of trend. However, it has been shown by many
researchers that in the presence of autocorrelation it generates incorrect results. Hydrometeorological
data series, particularly average temperature, relative humidity are
generally autocorrelated in nature. Therefore, several modifications have been suggested in
literature for its improvement. The tests which have been considered in this study are listed
below:
(i) Mann-Kendall test (original),
(ii) Modified Mann-Kendall test,
(iii) Pre-whitened Mann-Kendall test,
(iv) Mann-Kendall test modified by effective sample size following Bayley and
Hammersley, and
(v) Mann-Kendall test with Trend-free pre-whitening.
Limited number of sensitivity studies (power of test studies) in the presence of
autocorrelation is available. Hence, in-depth study of alternative tests for handling such
data was necessary. In this study, autoregressive process of First Order (ie. AR(1)), with
values -0.9 to 0.9 in steps of 0.1, for which the improved methods were suggested, is dealt
with, concentrating on a series length of 100. The power of tests to detect a trend that starts
at time lags of 0 to 90 in steps of 10 has also been compared. For all the processes and lags,
trend values were varied from -0.05 a to 0.05 a in steps of 0.01 a , measured in terms of
standard deviation of the series concerned. The capability to detect shift as nonrandomness
in the series has also been considered with shift introduced at time lags of 10-
10-90. For this purpose, synthetic series were generated by addition of shifts having
magnitude of 3a to -3a in steps of -0.5 a, for all the lags and processes. For each
combination of trend or shift, 2500 series were generated. As a result, 10.78 million series
were analysed at 10% Significance level. The results of the analysis indicate that
(i) none of the method considered are able to fully counteract the effect of
autoregression in detecting presence of trend, particularly for series with high
magnitudes of autocorrelation,
(ii) non-detection of change by statistical tests does not imply absence of change as
tests fail to detect (i) weak changes (ii) changes that start late relative to the
length of the time series.
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(iii) original Mann-Kendall test is the best for analysis of non-autocorrelated series,
and Pre-whitened Mann Kendall test is suitable for series with low levels of
autocorrelation.
For statistical analysis of trend in observed meteorological data series, Pre -
Whitened Mann Kendall test has been used because (i) results of the tests do not differ
widely at low levels of autocorrelation which are commonly observed; and (ii) for
autocorrelated series this yields better results being least influenced by autocorrelation.
This has been employed for trend detection in sub divisional rainfall and regional
temperature series of India, multi-parameter meteorological dataset of North India and
rainfall series of Uttarakhand.
A number of climate change studies over India have been reported in literature. The
conclusions reported in literature are diversified in nature. Most of the studies have not
considered the autocorrelation aspect. Hence, in the present work, studies have been
conducted on an extensive database comprising of annual time series of each month and
season, in addition to the annual values.
Sub-divisional rainfall and regional temperature analysis:
Monthly rainfall data from 30 homogeneous subdivisions (http://www.tropmet.res.in) and
monthly temperature (maximum and minimum temperature - available, average
temperature and temperature range - derived) data from seven temperature regions were
analysed over the period 1902-2003. The analysis brings out that
(i) there are indications of change in rainfall pattern over the century. It was
observed that May is receiving more rains and August is receiving less,
(ii) variability of temperature has increased over the recent period (1990-2003),
evident by a loss of autocorrelation,
(iii) rainfall trends are significant in a few subdivisions only,
(iv) temperatures continued to increase over the century, however, rise in
maximum temperature are more prominent. It is reflected through an increase
in temperature range.
(v) November and December witnessed most of the rise in minimum temperature,
whilethe majority of falls were observed in January and June.
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(vi) the rise of maximum and minimum temperatures resulted in rise in monthly
average temperature (i.e., in December, January and February).
(vii) change in temperature is more prominent than change in rainfall.
(viii) the patterns of change in rainfall and temperature are far from homogeneous,
both in space and time; more so over the recent past.
Analysis of North Indian climate data:
In recent times, climate change in North India has been attracting interest particularly due
to observations of increased aerosol (measured in terms of optical depth) during winter
season. Therefore, trend detection studies have been further extended by considering
several meteorological parameters: (i) Monthly rainfall, (ii) Monthly number of rainy days
(days recording rainfall of 2.4 mm or more), (iii) Heaviest rainfall recorded in 24 hour for
each month, (iv) Monthly average temperature, (v) Monthly mean maximum temperature,
(vi) Monthly mean minimum temperature, (vii) Monthly temperature range, (viii) Monthly
highest maximum temperature, (ix) Monthly lowest minimum temperature, (x) dew point
temperature at 8:30 hours, and (xi) dew point temperature at 17:30 hours.
All monthly, seasonal and annual series for the period 1902-2005 were studied. The
results reveal that
(i) over the century, decrease in monsoon rainfall and rainy days are evident in
terms of statistical trend. The percentage change results indicate high spatial
variability of rainfall,
(ii) all the meteorological variables show increased variation over the more recent
period (1990-2005).
(iii) reduction of number of rainy days without decrease in total rainfall is indicative
of increasing intensities,
(iv) majority of rainfall series indicates absence of trend; changes (wherever
present) in all three rainfall parameters (rainfall totals, number of rainy days
and heaviest 24 hour rainfall) appear to be more of local nature.
(v) over the century long period, increase in extreme rainfall (heaviest 24 hour
event) is not major,
(vi) the monthly patterns of change are most vivid, which somewhat get moderated
at annual level. The trends lack homogeneity over the months and seasons.
(vii) temperatures and humidity continued to rise in general.
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(viii) increase of highest maximum is modest as compared to increase of mean
maximum temperature,
(ix) lowest minimumtemperatures are generally rising.
Spatio-temporal analysis of rainfall in Uttarakhand region:
Studies on the Himalayan region have been very limited, primarily due to lack of
availability of data. In the region. India Meteorological Department maintains
observatories / raingauge stations, which are inadequate in number for the mountainous
terrain. Data from 44 stations were used in this study. A review of literature reveals that
studies related to spatial distribution were carried out in other parts of the Himalayan
range, but the spatial variability of rainfall over the state of Uttarakhand is still unexplored.
Continuous rainfall data in grid format are required to run models for hydrological and
agricultural research as well as water resources planning and management. The present
work attempted to prepare a normal annual rainfall map in Himalayan region of India lying
in Uttarakhand state at 1km spatial resolution which currently is not available.
A comparative analysis of interpolation techniques like Inverse Distance Weighted.
Polynomial, Splines, Ordinary Kriging and Universal Kriging shows that Universal
Kriging with hole-effect model and natural logarithmic transformation with constant trend
having Root Mean Square Error (RMSE) of 328.7 mm is the best choice. This is followed
by Ordinary Kriging (RMSE 329.1 mm), Splines (RMSE 392.4 mm). Inverse Distance
Weighted (RMSE 409.8 mm) and Polynomial Interpolation (RMSE 418.5 mm). Cross
validation of the results shows the largest over prediction at Tehri rainfall station (62.5%)
and largest under prediction at Nainital station (-36.5%).
Attempts have been made to explore changes in rainfall pattern over Uttarakhand
during twentieth century using data of 79 years (1902-1980) from 30 raingauge stations
maintained by India Meteorological Department. Pre-Whitened Mann-Kendall test was
applied to detect trend and Pettitt-Mann-Whitney test was employed to detect possible
shift. Implication of the change was discussed in terms of percentage change over mean.
The results show that the most probable year of change in annual as well as monsoon
rainfall in the region is 1964. There was an increasing trend upto 1964 (corroborating with
All India and nearby plains), followed by a decreasing trend in 1965-80 (exclusive to this
region). In the entire region, changes are most conspicuous over the Shivaliks and southern
part of the Lesser Himalayas.
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The major findings of the research are summarised as:
(i) The prevalent modifications of Mann-Kendall test are insufficientto counteract
the effect of autocorrelation, thereby yielding incorrect results for highly
autocorrelated series; original Mann-Kendall test is best for analysing nonautocorrelated
series, whereas Pre-Whitened Mann-Kendall test is suitable
choice for series with autocorrelation levels normally encountered in nature;
(ii) There are indications of change in seasonal pattern over the country; the
patterns are heterogeneous over the months as well as over the regions;
(iii) Warming winter average temperatures and cooling in early summer, with
highly variable spatial patterns of decrease in monsoon rainfall are evident in
North India;
(iv) Universal Kriging method with Hole-Effect model and natural logarithmic
transformation incorporating constant trend is the best suitable method for
interpolation of normal annual rainfall over Uttarakhand, and
(v) The decrease in monsoon rainfall observed over Uttarakhand (particularly, the
Shivaliks and southern part of the Lesser Himalayas) during 1965-1980
indicates a divergent behaviour from the adjoining plains.
This work revealed the necessity of future studies in the following directions: (i)
improving trend detection in presence of autocorrelation, probably through modification of
Pre-Whitened Mann-Kendall test, (ii) undertaking detailed climatological analysis which
considers the linkage between the change recorded in different climatological parameters
and their possible causes, (iii) analysing discharge data to investigate climate change
effects, (iv) interpolating Uttarakhand rainfall in monthly and seasonal scale, preferably
incorporating effects of topography, and (v) analysing satellite data (NDVI series) to assess
the impact of climate change on agriculture.