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M E 433 Professor John M. Cimbala Lecture 40 Today, we will: • Continue discussing aerosol particle statistics • Introduce and define mass distribution and cumulative mass distribution. Review so far of statistical definitions (aerosol particle statistics): • Dp,50 = median particle diameter (half are bigger and half are smaller) • Dp,am = arithmetic mean particle diameter (simple average diameter) • Dp,gm = geometric mean particle diameter (like an average, but with products, not sums) • σg = geometric standard deviation [lnσg is the standard deviation of ln(Dp) instead of the standard deviation of Dp itself] • ln(Dp),am = arithmetic mean of ln(Dp) [simple average of ln(Dp)] For our sample aerosol distribution on the class handout: Dp,50 = 9.0 µm, Dp,am = 11.2 µm, Dp,gm = 8.98 µm, σg = 1.97 µm, and ln(Dp),am = 2.2. Example: Log-probability plots Given: A sample (in terms of grouped data) is shown below. To do: Calculate the geometric standard deviation σg (to 3 significant digits). = σg Solution: D p ,84.1 (number) D p ,50 (number) = = D p ,50 (number) D p ,15.9 (number) D p ,84.1 (number) D p ,15.9 (number) Log-probability paper for particle distributions (created by J. M. Cimbala) Dp,max,j Dp,84.1 Dp,50 Dp,15.9 Mass Distribution Additional analysis of the sample particle data (class handout; also see Excel spreadsheet): Mass of particles in class j: mj Mass of particles in class j divided by class width: mj /(∆Dp, j) Cumulative mass distribution function: G(Dp) [sometimes written as Mj/mt] Mass fraction of particles in class j: g(Dp, j) = mj/mt When plot this on logprobability paper, remember to use Dp,max, j, not Dp, j since the cumulative distribution function includes the entire bin from min to max. Number distribution and mass distribution for the sample data of the class handout Mass distribution Number distribution