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Published byJodie Lawrence Modified over 8 years ago
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Study of PM10 Annual Arithmetic Mean in USA Particulate matter is the term for solid or liquid particles found in the air The smaller particles penetrate deep in the respiratory systems causing adverse health effect PM10: Particulate matter in the air with aerodynamic size less than or equal to 10 micrometers PM2.5: diameter < 2.5 microns
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Standards for PM10 National Standards –24-hour Average 150 g/m 3 –Annual Arithmetic Mean 50 g/m 3 California Standard –Annual Geometric Mean 35 g/m 3 Egypt Standard –24-hour Average 70 g/m 3 Set of limits established to protect human health :
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Location of the 1168 monitoring stations in the US
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The annual arithmetic average of PM10 Z(p)= Z(s,t)= where s = spatial coordinate, t = time, T=1 year, C(s,u) = instantaneous PM10 concentration at s and time u Obtaining Z from monitoring station s, year t At a monitoring station s, throughout a year [t, t+T] we have n obvs, number of PM10 observations, C i, i=1,…, n obvs C 0.95, 95% quantile of the C i observation values C ave =, average of the C i observation values C ave is a measurement of Z at the space/time point (s,t) n obvs and (C 0.95 -C ave ) characterize the uncertainty of C ave
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The dataset of annual PM10 data Disparity of n obvs from data point to data point: n obvs varies from 1 to over 300 there are 46 data points with n obvs =1 Frequency distribution of the number of observations, n obvs n obvs 1168 Monitoring Stations with (n obvs, C 0.95, C ave ) from 1984 to 2000 we need to use soft data The uncertainty associated with the C ave varies significantly!
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Obtaining the soft data For a data point p=(s,t), we know n obvs, C 0.95 and C ave Under ergotic assumption that, the soft PDF for Z at p =(s,t) is given by f S (Z)=1 /sn t( (Z- C ave )/sn ) where sn = s/ s = (C 0.95 -C ave ) / 1.65 t(.) = student-t PDF of degree n obvs -1 This soft PDF is wider (has more uncertainty) for small n obvs and large (C 0.95 -C ave )
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Soft data for monitoring station 1
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Soft data for monitoring station 829
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Soft data in California in 1997
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Movie of soft data for California,1987-1997
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BME space/time mapping Random Field representation Y(s,t)=m(s,t)+ X(s,t) Modeling of the spatial and seasonal trend m(s,t)= m s (s)+ m t (t) Covariance modeling of the Space/time variability c x (s,t; s’,t’)=E [ (X(s,t)- m x (s,t)) (X(s’,t’)- m x (s’,t’)) ]
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Movie of the Y space/time mean trend m(s,t)= m s (s) + m t (t)
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Covariance: the model selected c x (r, )= c 1 exp(-3r/a r1 -3 /a t1 ) + c 2 exp(-3r/a r2 -3 /a t2 ) First component represents weather related fluctuations (448 Km / 1 years) c 1 =0.0141 (log g/m 3 ) 2, a r1 =448 Km, a t1 =1 years Second component represents large scale fluctuations (16.8 Km / 45 years) c 2 =0.0798 (log g/m 3 ) 2, a r2 =16.8 Km, a t2 =45 years We hypothesize that the first component (448 Km /1 years) is related to the physical environment (weather) the second component (16.8 Km / 45 years) is linked to human activity Lasting effect of human activity (urbanism, pollution) on air quality
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Covariance: experimental data and model
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Space/time composite view of covariance c X (r, ) A composite space/time view lead to more accurate analysis then a purely spatial or purely temporal approach Time lag (years) Spatial lag r (Km)
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BME estimation of PM10 annual arithmetic average Using BMElib (the numerical implementation of BME) we estimate Z across space and time t Specificatory knowledge Soft probabilistic data General knowledge m(s,t) c x (r, ) BME estimate of PM10 Posterior pdf at the estimation point BMElib fK(k)fK(k) 68 % BME confidence interval
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BME estimation at monitoring station 1
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BME estimation at monitoring station 829
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Spatiotemporal map of the BME median estimate Annual PM10 arithmetic average ( g/m 3 )
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Spatiotemporal map of mapping estimation error Length of the 68% confidence interval ( g/m 3 )
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Spatiotemporal map of normalized estimation error Ratio of posterior error variance by prior variance
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Spatiotemporal map of non-attainment areas Areas not-attaining the 35 g/m 3 limit with a confidence of at least 50%
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Spatiotemporal map of the 80% quantile PM10 80% quantile ( g/m 3 ) such that Prob [Annual PM10 arithmetic average < PM10 80% quantile]=0.8
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Spatiotemporal map of non-attainment areas Areas not-attaining the 35 g/m 3 limit with a confidence of at least 80%
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Spatiotemporal map of non-attainment areas Areas not-attaining the 35 g/m 3 limit with a confidence of at least 99%
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Conclusions of the PM10 study in the US Soft probabilistic data are useful to represent the information available about the annual arithmetic mean of PM10 in the US A composite space/time analysis provides a realistic view of the distribution of the PM10 arithmetic mean across space and time The BME posterior pdf allows to efficiently delineate non- attainment area at any confidence level required BMElib provides an efficient library for Computational Geostatistics that is particularly useful for space/time analysis and for dealing with hard and soft data
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