Natalie Harvey | Helen Dacre Figure 1 Future Work Conduct sensitivity experiments to understand the relative importance.

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Natalie Harvey | Helen Dacre Figure 1 Future Work Conduct sensitivity experiments to understand the relative importance of each of the sources of uncertainty. Utilise in-situ, lidar and satellite observations of ash concentration to determine the skill of NAME in predicting the ash location and ash concentrations. In partnership with Durham University, develop a statistical emulator of NAME to investigate more easily the whole of parameter space and thus co-dependencies between the uncertain parameters. Create a transferable framework for assessing uncertainty in modelling natural hazards. Develop novel methods to communicate the uncertainty clearly for the end-users of the volcanic ash forecasts. One possibility is a probabilistic volcanic ash forecast. Volcanic ash modelling for aviation Why is volcanic ash a problem for aviation? Volcanic ash provides a significant hazard to aircraft by reducing visibility and causing both temporary engine failure and permanent engine damage. The presence of ash can disrupt air traffic and as a result can incur large financial losses for the aviation industry. For example, the eruption of Eyjafjallajökull in April 2010 disrupted European airspace, the busiest airspace in the world, for thirteen days, grounded over 95,000 flights (European Commission, 2011) and is estimated to have cost the airline industry up to €3.3 billion (Mazzocchi et al., 2010). What happens in the event of an eruption? In the event of an eruption the Volcanic Ash Advisory Centres (VAACs) issue hazard maps, based on forecasts of meteorological conditions, of instantaneous horizontal ash coverage in three vertically integrated layers of the atmosphere at 6 hourly- intervals. The boundaries of the ash show the maximum expected extent of the plume. Figure 1 shows the hazard map issued at 1800 on 14/04/2010 during the Eyjafjallajökull eruption. Figure 1 :The forecast hazard map issued by the London VAAC at 1800 on 14/04/2010 during the Eyjafjallajökull eruption in Contours shows the outermost extent of the volcanic ash cloud in 3 layers of the atmosphere (surface - flight level(FL) 200, FL200-FL350 and FL350-FL550). Hazard maps are created by running Volcanic Ash Transport and Dispersion (VATD) models. In the case of the London VAAC the VATD model used is the Numerical Atmospheric –Dispersion Modelling Environment (NAME) which is run at the UK Met Office. After the 2010 Eyjafjallajökull eruption the UK Civil Aviation Authority brought in new guidelines that not only require predictions of ash location but also ash concentration. VATD models can predict ash concentrations, however, currently there is no formal framework for determining the uncertainties on these forecasts. The Robust Assessment and Communication of Environmental Risk (RACER) project aims to quantify these uncertainties with a view to producing a generic framework to provide information about volcanic ash risk which is both robust and easy to communicate and transferable to other hazards. This project builds on existing work on volcanic ash carried out at Reading (e.g. Dacre et al., 2013) and new collaborations with the UK Met Office and Durham University. Sources of uncertainty in NAME The NAME model Figure 2: A schematic of NAME showing its structure and processes that are represented within it. Lagrangian particle model Particles move with the resolved wind described by the meteorology plus a random component to represent the effects of atmospheric turbulence Also includes loss processes Used to model a wide variety of atmospheric dispersion events Nuclear accidents Airborne animal diseases Routine air quality forecasts Input parameters - Are the inputs used to drive the model accurate? The accuracy of the NAME predicted ash location and concentration are extremely dependent on the accuracy of the eruption source parameters (ESPs) and the driving meteorology. Table 1 details these parameters. In an emergency response situation not all of these parameters are known so the simulations are run with pre-determined default parameters. The NAME default parameters are also outlined in Table 1. Once observational data becomes available the simulations are run with the updated ESPs to give a more accurate forecast. Table 1: Descriptions and default parameters used to initialise and drive NAME Parameter uncertainty - are the parameters used in the model correct? In NAME both advection, dispersion and loss processes are parameterised. Each parameterisation includes parameters based on empirical evidence or observation (see Table 2) that determine the motion of the particles and thus the final forecast. Each of these parameters have an associated uncertainty. ProcessParameter/s Turbulent mixing Standard deviation of horizontal /vertical velocity and Lagrangian timescale for free tropospheric turbulence and horizontal meander Vertical mixing by convectionScheme is based on presence and depth of convective cloud. Dry DepositionDeposition velocity determined using a resistance analogy Wet Deposition Scavenging coefficients based on rain rate and empirical constants SedimentationSedimentation velocity determined using a drag co-efficient Table 2: The advection, dispersion and loss processes represented in NAME and their associated parameters. The shading indicates whether it is an advective/dispersive process (green) or a loss process (blue). Structural uncertainty – the model is an approximation to reality As with any model, there are some processes that are not represented in NAME. These include: Aggregation of particles Gravity current spreading Particle diffusive convection (could rapidly remove ash near source) The empirical mass eruption relationship does not explicitly take account of atmospheric stability, wind speed and direction or ambient/source moisture References Dacre, H., Grant, A. & Johnson, B Aircraft observations and model simulations of concentration and particle size distribution in the Eyjafjallajokull volcanic ash cloud. Atmos. Chem. Phys 13, 1277–1291. European Commission Volcano Grimsvotn: How is the European response different to the Eyjafjallajökull eruption last year?, MEMO/11/346 [Available at Mazzocchi, M., Hansstein, F., Ragona, M The volcanic ash cloud and its financial impact on the European airline industry. CESifo Forum No 2: