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Statistical evaluation of model uncertainties in Copert III , by I. Kioutsioukis & S. Tarantola (JRC, I). Objectives of the statistical analyses. Sensitivity analysis tests performed using COPERT III. Interpretation of the results. Objectives.
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Statistical evaluation of model uncertainties in Copert III, by I. Kioutsioukis & S. Tarantola (JRC, I)
Objectives of the statistical analyses Sensitivity analysis tests performed using COPERT III Interpretation of the results
Objectives Precision of emission estimates depends on the assumptions made in the definition of the various model input parameters. Need to check robustness of emission estimates to poorly known parameters and model assumptions. Reflect our poor knowledge on input parameters by means probability distributions and apply Monte Carlo analysis to estimate probability distributions of emissions. Representation of a Monte Carlo simulation
Objectives Uncertainty should always accompany an estimate, as it is a measure of the quality of the estimate. Representation of the Monte Carlo simulation
Objectives Estimates (and related uncertainties) can then be used 1. to adopt traffic policy measures 2. for inventory systems 3. as input to air quality models Objective is to apply up-to-date sensitivity analysis to identify the parameters mainly responsible for uncertainty in the emissions Help us improving the quality of emission estimates if we direct efforts to improve our knowledge of the important parameters
Statistical analyses • Description of sources of uncertainty (input): - Uncertainty in traffic parameters (how to model them) - Uncertainty in average speed - Uncertainty in emission factors • Description of the set up of the analyses • Results (Figures and Tables)
Model uncertainty in traffic parameters All the categories of vehicles considered Country-specific mileage data taken from MEET deliverable #22 FBM–INFRAS used for decomposition of fleet into sub-categories
Uncertainty in traffic parameters τ: steers the technology stage percentages; τ = –1, 0 and +1 represent fleet with 'low/medium/high' amount of new technology vehicles, respectively. δ: steers the diesel share of PC and LDV; δ = –1, 0 and +1 represent fleet with 'low/medium/high' amount of diesel vehicles, respectively. σ : steers the size (weight class) distribution of HDV; σ = –1, 0 and +1 represent fleet with 'low/medium/high' amount of heavy-weight HDV's, respectively.
FBM (expensive) is only executed at selected points σ δ τ τ We feed COPERT with a representative configuration of fleet breakdown at each Monte Carlo runi. We samplea pointτi, δi, σiover the square and interpolating the FBM runs we obtain the configuration of fleet breakdown f (τi, δi, σi)
Uncertainty in average speed Currently described with rather rough statistical distributions Exploratory analyses have shown that average speed is rather an important parameter. Perform more refined analyses…
■ Average speed in rural road ● average speed in motorway More reliable pdf’s using Goodness of fit tests based on driving cycles
Uncertainty in emission factors Very low regression coefficients Not sufficient
Uncertainty in load factors Pdf=Normal; mean=50%, std = 10% (questionnaire - expert opinion) Uncertainty in meteo conditions (statistical model - INFRAS) Uncertainty in average trip length Pdf=Log-Normal; mean=12Km, std=3Km (questionnaire - expert opinion)
Results: total emissions in Italy for years 2000 and 2010 first stage: screening analyses (Morris and Standardised Regression Coefficients (SRC)) to identify the non-influential input parameters. 40 parameters 15 parameters Identified 25 parameters that do not influence the variability of the emission estimates (eg meteo variables)
Regionof the non-influential parameters Results of the screening technique – yr 2000
Regionof the non-influential parameters Results of the screening technique – yr 2010
Uncertainty analysis - 2010 over-estimation of VOC: probably l-trip is overestimated LAT value
Uncertainty analysis - 2010 LAT value
Uncertainty analysis - 2010 LAT value
Uncertainty analysis - 2010 LAT value
second phase: quantitative sensitivity analysis technique (extended-FAST) to apportion variance of emission estimates back to input parameters. 2000 2010 68% of VOC variance explained by the top- three parameters increase of ltrip and decrease of VU becomes important in 2010
The differences with the run conducted for 2000 are in the vehicle Populations, fleet breakdown and in the use of new fuel. 2000 2010 Uncertainty in diesel share of PC and LDV is important
2000 2010 becomes important important variables are eEFand MPC
2000 2010 CO2 emissions are mostly influenced by MPC (SMPC=37%) and ltrip. Situation remains unchanged in 2010 VU becomes importantin 2010
Interpretation and conclusions Output variability for each pollutant IS described by three most influential input parameters. ltrip, eEF, VU and are common to almost all the pollutants. Technological and fuel improvements will result in reduced emissions for VOC, PM and NOX (2000 2010). Quality of emission estimates can be enhanced if we direct efforts to improve our knowledge on average trip length, emission factors, diesel share between PC and LDV and the annual mileage of passenger cars
Importance of emission factors , with the current statistical model, increases 2000 2010. Uncertainty in emission factors should be explained by a set of kinetic parameters (not only average speeds). Acknowledge uncertainty in the emission factors at the level of driving cycles When driving cycles are combined to build TS, it is straightforward to calculate uncertainty bounds for TS.