Dave MacLeod
University of Oxford
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Publication
Featured researches published by Dave MacLeod.
Geophysical Research Letters | 2015
W. Shi; Nathalie Schaller; Dave MacLeod; T. N. Palmer; A. Weisheimer
It has recently been argued that single-model seasonal forecast ensembles are overdispersive, implying that the real world is more predictable than indicated by estimates of so-called perfect model predictability, particularly over the North Atlantic. However, such estimates are based on relatively short forecast data sets comprising just 20 years of seasonal predictions. Here we study longer 40 year seasonal forecast data sets from multimodel seasonal forecast ensemble projects and show that sampling uncertainty due to the length of the hindcast periods is large. The skill of forecasting the North Atlantic Oscillation during winter varies within the 40 year data sets with high levels of skill found for some subperiods. It is demonstrated that while 20 year estimates of seasonal reliability can show evidence of overdispersive behavior, the 40 year estimates are more stable and show no evidence of overdispersion. Instead, the predominant feature on these longer time scales is underdispersion, particularly in the tropics. Key Points Predictions can appear overdispersive due to hindcast length sampling error Longer hindcasts are more robust and underdispersive, especially in the tropics Twenty hindcasts are an inadequate sample size to assess seasonal forecast skill
International Journal of Environmental Research and Public Health | 2014
Cyril Caminade; Jacques A. Ndione; Mawlouth Diallo; Dave MacLeod; Ousmane Faye; Yamar Ba; Ibrahima Dia; Andrew P. Morse
Four large outbreaks of Rift Valley Fever (RVF) occurred in Mauritania in 1998, 2003, 2010 and 2012 which caused lots of animal and several human deaths. We investigated rainfall and vegetation conditions that might have impacted on RVF transmission over the affected regions. Our results corroborate that RVF transmission generally occurs during the months of September and October in Mauritania, similarly to Senegal. The four outbreaks were preceded by a rainless period lasting at least a week followed by heavy precipitation that took place during the second half of the rainy season. First human infections were generally reported three to five weeks later. By bridging the gap between meteorological forecasting centers and veterinary services, an early warning system might be developed in Senegal and Mauritania to warn decision makers and health services about the upcoming RVF risk.
Environmental Research Letters | 2015
Dave MacLeod; Anne E. Jones; Francesca Di Giuseppe; Cyril Caminade; Andrew P. Morse
The severity and timing of seasonal malaria epidemics is strongly linked with temperature and rainfall. Advance warning of meteorological conditions from seasonal climate models can therefore potentially anticipate unusually strong epidemic events, building resilience and adapting to possible changes in the frequency of such events. Here we present validation of a process-based, dynamic malaria model driven by hindcasts from a state-of-the-art seasonal climate model from the European Centre for Medium-Range Weather Forecasts. We validate the climate and malaria models against observed meteorological and incidence data for Botswana over the period 1982–2006; the longest record of observed incidence data which has been used to validate a modeling system of this kind. We consider the impact of climate model biases, the relationship between climate and epidemiological predictability and the potential for skillful malaria forecasts. Forecast skill is demonstrated for upper tercile malaria incidence for the Botswana malaria season (January–May), using forecasts issued at the start of November; the forecast system anticipates six out of the seven upper tercile malaria seasons in the observational period. The length of the validation time series gives confidence in the conclusion that it is possible to make reliable forecasts of seasonal malaria risk, forming a key part of a health early warning system for Botswana and contributing to efforts to adapt to climate change.
Journal of Applied Meteorology and Climatology | 2017
Verónica Torralba; Francisco J. Doblas-Reyes; Dave MacLeod; Isadora Christel; Melanie Davis
AbstractClimate predictions tailored to the wind energy sector represent an innovation in the use of climate information to better manage the future variability of wind energy resources. Wind energy users have traditionally employed a simple approach that is based on an estimate of retrospective climatological information. Instead, climate predictions can better support the balance between energy demand and supply, as well as decisions relative to the scheduling of maintenance work. One limitation for the use of the climate predictions is the bias, which has until now prevented their incorporation in wind energy models because they require variables with statistical properties that are similar to those observed. To overcome this problem, two techniques of probabilistic climate forecast bias adjustment are considered here: a simple bias correction and a calibration method. Both approaches assume that the seasonal distributions are Gaussian. These methods are linear and robust and neither requires parameter...
Quarterly Journal of the Royal Meteorological Society | 2018
Stephan Juricke; Dave MacLeod; A. Weisheimer; Laure Zanna; T. N. Palmer
Accurate forecasts of the ocean state and the estimation of forecast uncertainties are crucial when it comes to providing skilful seasonal predictions. In this study we analyse the predictive skill and reliability of the ocean component in a seasonal forecasting system. Furthermore, we assess the effects of accounting for model and observational uncertainties. Ensemble forcasts are carried out with an updated version of the ECMWF seasonal forecasting model System 4, with a forecast length of ten months, initialized every May between 1981 and 2010. We find that, for essential quantities such as sea surface temperature and upper ocean 300 m heat content, the ocean forecasts are generally underdispersive and skilful beyond the first month mainly in the Tropics and parts of the North Atlantic. The reference reanalysis used for the forecast evaluation considerably affects diagnostics of forecast skill and reliability, throughout the entire ten‐month forecasts but mostly during the first three months. Accounting for parametrization uncertainty by implementing stochastic parametrization perturbations has a positive impact on both reliability (from month 3 onwards) as well as forecast skill (from month 8 onwards). Skill improvements extend also to atmospheric variables such as 2 m temperature, mostly in the extratropical Pacific but also over the midlatitudes of the Americas. Hence, while model uncertainty impacts the skill of seasonal forecasts, observational uncertainty impacts our assessment of that skill. Future ocean model development should therefore aim not only to reduce model errors but to simultaneously assess and estimate uncertainties.
Meteorological Applications | 2017
Cj White; Henrik Carlsen; Andrew W. Robertson; Richard J.T. Klein; Jeffrey K. Lazo; Arun Kumar; F. Vitart; Erin Coughlan de Perez; Andrea J. Ray; Virginia Murray; Sukaina Bharwani; Dave MacLeod; Rachel James; Lora E. Fleming; Andrew P. Morse; Bernd Eggen; Richard Graham; Erik Kjellström; Emily Becker; Kathleen Pegion; Neil J. Holbrook; Darryn McEvoy; Michael H. Depledge; Sarah E. Perkins-Kirkpatrick; Timothy J. Brown; Roger Street; Lindsey Jones; Tomas Remenyi; Indi Hodgson-Johnston; Carlo Buontempo
Quarterly Journal of the Royal Meteorological Society | 2017
Martin Leutbecher; Sarah-Jane Lock; Pirkka Ollinaho; Simon T. K. Lang; Gianpaolo Balsamo; Peter Bechtold; Massimo Bonavita; H. M. Christensen; Michail Diamantakis; Emanuel Dutra; Stephen J. English; Michael Fisher; Richard M. Forbes; Jacqueline Goddard; Thomas Haiden; Robin J. Hogan; Stephan Juricke; Heather Lawrence; Dave MacLeod; Linus Magnusson; Sylvie Malardel; S. Massart; Irina Sandu; Piotr K. Smolarkiewicz; Aneesh C. Subramanian; F. Vitart; Nils P. Wedi; A. Weisheimer
Geophysical Research Letters | 2017
Christopher H. O'Reilly; James Heatley; Dave MacLeod; A. Weisheimer; T. N. Palmer; Nathalie Schaller; Tim Woollings
Hydrology and Earth System Sciences | 2016
Dave MacLeod; Hannah L. Cloke; Florian Pappenberger; A. Weisheimer
Weather and climate extremes | 2018
Dave MacLeod