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Featured researches published by M. R. Haylock.


Journal of Geophysical Research | 2006

Global observed changes in daily climate extremes of temperature and precipitation

Lisa V. Alexander; Xuebin Zhang; Thomas C. Peterson; John Caesar; Byron E. Gleason; A. M. G. Klein Tank; M. R. Haylock; Dean Collins; Blair Trewin; F. Rahimzadeh; A. Tagipour; K. Rupa Kumar; J. V. Revadekar; G. Griffiths; Lucie A. Vincent; David B. Stephenson; J. Burn; Enric Aguilar; Manola Brunet; Michael A. Taylor; Mark New; P. Zhai; Matilde Rusticucci; J. L. Vazquez‐Aguirre

A suite of climate change indices derived from daily temperature and precipitation data, with a primary focus on extreme events, were computed and analyzed. By setting an exact formula for each index and using specially designed software, analyses done in different countries have been combined seamlessly. This has enabled the presentation of the most up-to-date and comprehensive global picture of trends in extreme temperature and precipitation indices using results from a number of workshops held in data-sparse regions and high-quality station data supplied by numerous scientists world wide. Seasonal and annual indices for the period 1951-2003 were gridded. Trends in the gridded fields were computed and tested for statistical significance. Results showed widespread significant changes in temperature extremes associated with warming, especially for those indices derived from daily minimum temperature. Over 70% of the global land area sampled showed a significant decrease in the annual occurrence of cold nights and a significant increase in the annual occurrence of warm nights. Some regions experienced a more than doubling of these indices. This implies a positive shift in the distribution of daily minimum temperature throughout the globe. Daily maximum temperature indices showed similar changes but with smaller magnitudes. Precipitation changes showed a widespread and significant increase, but the changes are much less spatially coherent compared with temperature change. Probability distributions of indices derived from approximately 200 temperature and 600 precipitation stations, with near-complete data for 1901-2003 and covering a very large region of the Northern Hemisphere midlatitudes (and parts of Australia for precipitation) were analyzed for the periods 1901-1950, 1951-1978 and 1979-2003. Results indicate a significant warming throughout the 20th century. Differences in temperature indices distributions are particularly pronounced between the most recent two periods and for those indices related to minimum temperature. An analysis of those indices for which seasonal time series are available shows that these changes occur for all seasons although they are generally least pronounced for September to November. Precipitation indices show a tendency toward wetter conditions throughout the 20th century.


Journal of Geophysical Research | 2008

A European daily high-resolution gridded data set of surface temperature and precipitation for 1950-2006

M. R. Haylock; Nynke Hofstra; A. M. G. Klein Tank; E. J. Klok; P. D. Jones; Mark New

We present a European land-only daily high-resolution gridded data set for precipitation and minimum, maximum, and mean surface temperature for the period 1950-2006. This data set improves on previous products in its spatial resolution and extent, time period, number of contributing stations, and attention to finding the most appropriate method for spatial interpolation of daily climate observations. The gridded data are delivered on four spatial resolutions to match the grids used in previous products as well as many of the rotated pole Regional Climate Models (RCMs) currently in use. Each data set has been designed to provide the best estimate of grid box averages rather than point values to enable direct comparison with RCMs. We employ a three-step process of interpolation, by first interpolating the monthly precipitation totals and monthly mean temperature using three-dimensional thin-plate splines, then interpolating the daily anomalies using indicator and universal kriging for precipitation and kriging with an external drift for temperature, then combining the monthly and daily estimates. Interpolation uncertainty is quantified by the provision of daily standard errors for every grid square. The daily uncertainty averaged across the entire region is shown to be largely dependent on the season and number of contributing observations. We examine the effect that interpolation has on the magnitude of the extremes in the observations by calculating areal reduction factors for daily maximum temperature and precipitation events with return periods up to 10 years. Copyright 2008 by the American Geophysical Union.


Journal of Climate | 2006

Trends in Total and Extreme South American Rainfall in 1960–2000 and Links with Sea Surface Temperature

M. R. Haylock; Thomas C. Peterson; L. M. Alves; T. Ambrizzi; Y. M. T. Anunciação; J. Baez; Vicente R. Barros; M. A. Berlato; Mario Bidegain; Genaro Coronel; V. Corradi; V. J. Garcia; Alice M. Grimm; David J. Karoly; J. A. Marengo; M. B. Marino; D. F. Moncunill; D. Nechet; J. Quintana; E. Rebello; Matilde Rusticucci; José Luis Santos; I. Trebejo; Lucie A. Vincent

A weeklong workshop in Brazil in August 2004 provided the opportunity for 28 scientists from southern South America to examine daily rainfall observations to determine changes in both total and extreme rainfall. Twelve annual indices of daily rainfall were calculated over the period 1960 to 2000, examining changes to both the entire distribution as well as the extremes. Maps of trends in the 12 rainfall indices showed large regions of coherent change, with many stations showing statistically significant changes in some of the indices. The pattern of trends for the extremes was generally the same as that for total annual rainfall, with a change to wetter conditions in Ecuador and northern Peru and the region of southern Brazil, Paraguay, Uruguay, and northern and central Argentina. A decrease was observed in southern Peru and southern Chile, with the latter showing significant decreases in many indices. A canonical correlation analysis between each of the indices and sea surface temperatures (SSTs) revealed two large-scale patterns that have contributed to the observed trends in the rainfall indices. A coupled pattern with ENSO-like SST loadings and rainfall loadings showing similarities with the pattern of the observed trend reveals that the change to a generally more negative Southern Oscillation index (SOI) has had an important effect on regional rainfall trends. A significant decrease in many of the rainfall indices at several stations in southern Chile and Argentina can be explained by a canonical pattern reflecting a weakening of the continental trough leading to a southward shift in storm tracks. This latter signal is a change that has been seen at similar latitudes in other parts of the Southern Hemisphere. A similar analysis was carried out for eastern Brazil using gridded indices calculated from 354 stations from the Global Historical Climatology Network (GHCN) database. The observed trend toward wetter conditions in the southwest and drier conditions in the northeast could again be explained by changes in ENSO.


Journal of Climate | 2005

Observed Trends in Indices of Daily Temperature Extremes in South America 1960–2000

Lucie A. Vincent; Thomas C. Peterson; Vicente R. Barros; M. B. Marino; Matilde Rusticucci; G. Carrasco; E. Ramirez; L. M. Alves; T. Ambrizzi; M. A. Berlato; Alice M. Grimm; J. A. Marengo; L. Molion; D. F. Moncunill; E. Rebello; Y. M. T. Anunciação; J. Quintana; José Luis Santos; J. Baez; Genaro Coronel; J. Garcia; I. Trebejo; Mario Bidegain; M. R. Haylock; David J. Karoly

Abstract A workshop on enhancing climate change indices in South America was held in Maceio, Brazil, in August 2004. Scientists from eight southern countries brought daily climatological data from their region for a meticulous assessment of data quality and homogeneity, and for the preparation of climate change indices that can be used for analyses of changes in climate extremes. This study presents an examination of the trends over 1960–2000 in the indices of daily temperature extremes. The results indicate no consistent changes in the indices based on daily maximum temperature while significant trends were found in the indices based on daily minimum temperature. Significant increasing trends in the percentage of warm nights and decreasing trends in the percentage of cold nights were observed at many stations. It seems that this warming is mostly due to more warm nights and fewer cold nights during the summer (December–February) and fall (March–May). The stations with significant trends appear to be loca...


Journal of Geophysical Research | 2007

Statistical and dynamical downscaling of precipitation: An evaluation and comparison of scenarios for the European Alps

Jürg Schmidli; C. M. Goodess; Christoph Frei; M. R. Haylock; Y. Hundecha; J. Ribalaygua; Torben Schmith

[1] This paper compares six statistical downscaling models (SDMs) and three regional climate models (RCMs) in their ability to downscale daily precipitation statistics in a region of complex topography. The six SDMs include regression methods, weather typing methods, a conditional weather generator, and a bias correction and spatial disaggregation approach. The comparison is carried out over the European Alps for current and future (2071–2100) climate. The evaluation of simulated precipitation for the current climate shows that the SDMs and RCMs tend to have similar biases but that they differ with respect to interannual variations. The SDMs strongly underestimate the magnitude of the year-to-year variations. Clear differences emerge also with respect to the year-to-year anomaly correlation skill: In winter, over complex terrain, the better RCMs achieve significantly higher skills than the SDMs. Over flat terrain and in summer, the differences are smaller. Scenario results using A2 emissions show that in winter mean precipitation tends to increase north of about 45N and insignificant or opposite changes are found to the south. There is good agreement between the downscaling models for most precipitation statistics. In summer, there is still good qualitative agreement between the RCMs but large differences between the SDMs and between the SDMs and the RCMs. According to the RCMs, there is a strong trend toward drier conditions including longer periods of drought. The SDMs, on the other hand, show mostly nonsignificant or even opposite changes. Overall, the present analysis suggests that downscaling does significantly contribute to the uncertainty in regional climate scenarios, especially for the summer precipitation climate.


Journal of Geophysical Research | 2009

Testing E-OBS European high-resolution gridded data set of daily precipitation and surface temperature

Nynke Hofstra; M. R. Haylock; Mark New; Phil D. Jones

Gridded data sets derived through interpolation of station data have a number of potential inaccuracies and errors. These errors can be introduced either by the propagation of errors in the station data into derived gridded data or by limitations in the ability of the interpolation method to estimate grid values from the underlying station network. Recently, Haylock et al. (2008) reported on the development of a new high-resolution gridded data set of daily climate over Europe (termed E-OBS). E-OBS is based on the largest available pan-European data set, and the interpolation methods used were chosen after careful evaluation of a number of alternatives, yet the data set will inevitably have errors and uncertainties. In this paper we assess the E-OBS data set with respect to: (1) homogeneity of the gridded data; (2) evaluation of inaccuracies arising from available network density, through comparison with existing data sets that have been developed with much denser station networks; and (3) the accuracy of the estimates of interpolation uncertainty that are provided as part of E-OBS. We find many inhomogeneities in the gridded data that are primarily caused by inhomogeneities in the underlying station data. In the comparison of existing data with E-OBS, we find that while correlations overall are high, relative differences in precipitation are large, and usually biased toward lower values in E-OBS. From the analysis of the interpolation uncertainties provided as part of E-OBS, we conclude that the interpolation standard deviation provided with the data significantly underestimates the true interpolation error when cross validated using station data, and therefore will similarly underestimate the interpolation error in the gridded E-OBS data. While E-OBS represents a valuable new resource for climate research in Europe, users of the data need to be aware of the limitations in the data set and use the data appropriately.


Neural Networks | 2007

2007 Special Issue: Predictive uncertainty in environmental modelling

Gavin C. Cawley; Gareth J. Janacek; M. R. Haylock; Stephen Dorling

Artificial neural networks have proved an attractive approach to non-linear regression problems arising in environmental modelling, such as statistical downscaling, short-term forecasting of atmospheric pollutant concentrations and rainfall run-off modelling. However, environmental datasets are frequently very noisy and characterised by a noise process that may be heteroscedastic (having input dependent variance) and/or non-Gaussian. The aim of this paper is to review an existing methodology for estimating predictive uncertainty in such situations, and more importantly illustrate how a model of the predictive distribution may be exploited in assessing the possible impacts of climate change and to improve current decision making processes. The results of the WCCI-2006 predictive uncertainty in environmental modelling challenge are also reviewed and some areas suggested where further research may provide significant benefits.


international joint conference on neural network | 2006

Predictive Uncertainty in Environmental Modelling

Gavin C. Cawley; M. R. Haylock; Stephen Dorling

Artificial neural networks have proved an attractive approach to non-linear regression problems arising in environmental modelling, such as statistical downscaling, short-term forecasting of atmospheric pollutant concentrations and rainfall run-off modelling. However, environmental datasets are frequently very noisy and characterised by a noise process that may be heteroscedastic (having input dependent variance) and/or non-Gaussian. The aim of this paper is to review an existing methodology for estimating predictive uncertainty in such situations, and more importantly illustrate how a model of the predictive distribution may be exploited in assessing the possible impacts of climate change and to improve current decision making processes. The results of the WCCI-2006 predictive uncertainty in environmental modelling challenge are also reviewed and some areas suggested where further research may provide significant benefits.


Bulletin of the American Meteorological Society | 2004

Data Rescue in the Southeast Asia and South Pacific Region: Challenges and Opportunities

Cher Page; Neville Nicholls; Neil Plummer; Blair Trewin; Mike Manton; Lisa V. Alexander; Lynda E. Chambers; Youngeun Choi; Dean Collins; Paul M. Della-Marta; M. R. Haylock; Kasis Inape; Victoire Laurent; Luc Maitrepierre; Hiroshi Nakamigawa; Simon McGree; Janita Pahalad; Lourdes Tibig; Trong D. Tran; P. Zhai

BY CHER M. PAGE, NEVILLE NICHOLLS, NEIL PLUMMER, BLAIR TREWIN, MIKE MANTON, LISA ALEXANDER, LYNDA E. CHAMBERS, YOUNGEUN CHOI, DEAN A. COLLINS, ASHMITA GOSAI, PAUL DELLA-MARTA, MALCOLM R. HAYLOCK, KASIS INAPE, VICTOIRE LAURENT, LUC MAITREPIERRE, ERWIN E.P. MAKMUR, HIROSHI NAKAMIGAWA, NONGNAT OUPRASITWONG, SIMON MCGREE, JANITA PAHALAD, M.J. SALINGER, LOURDES TIBIG, TRONG D. TRAN, KALIAPAN VEDIAPAN, AND PANMAO ZHAI


Journal of Geophysical Research | 2005

Changes in precipitation and temperature extremes in Central America and northern South America, 1961–2003

Enric Aguilar; Thomas C. Peterson; P. Ramı́rez Obando; R. Frutos; J. A. Retana; M. Solera; J. Soley; I. González Garcı́a; R. Araujo; A. Rosa Santos; V. E. Valle; Manola Brunet; L. Aguilar; Lázaro Álvarez; María Bautista; C. Castañón; Leonor Herrera; E. Ruano; J. J. Sinay; Eduardo Sánchez; G. I. Hernández Oviedo; F. Obed; J. E. Salgado; Juan Vázquez; M. Baca; Miguel Gutiérrez; C. Centella; J. R. Espinosa; Domingo Martínez; B. Olmedo

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C. M. Goodess

University of East Anglia

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Gavin C. Cawley

University of East Anglia

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Thomas C. Peterson

National Oceanic and Atmospheric Administration

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Mark New

University of Cape Town

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P. D. Jones

University of East Anglia

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