Encyclopedia of Environmental Science and Engineering, Volume I and II

(Ben Green) #1

830 PARTICULATE EMISSIONS


certain mathematical manipulations. A comprehensive sum-
mary of various distribution functions is given by Orr.^39 The
most useful function in emission applications seems to be the
long-normal distribution. Commercial graph paper is avail-
able having one logarithmic scale and one cumulative normal
probability scale. If particle size is plotted vs. cumulative
percentage of sample at or below that size, the log-normal
distribution gives a straight line. A large percentage of emis-
sions and ambient particulate distributions have log-normal
distributions, and plotting on log-probability paper usually
facilitates interpolation and extrapolation even when the line
is not quite straight. For a true log-normal distribution very
simple relationships permits easy conversion between distri-
butions based on number, weight, surface area, and so on,
which are covered in Orr.^39 Relationships between weight
and number distribution are shown in Figure 12.

REFERENCES


  1. Stern, A.C. 1977, Air Pollution Standards, 5 , Chapter 13 in Air Pollu-
    tion, 3rd Edition, Ed. by A.C. Stern, Academic Press, New York.

  2. Greenwood, D.R., G.L. Kingsbury, and J.G. Cleland, “A Handbook of
    Key Federal Regulations and Criteria for Multimedia Environmental
    Control” prepared for U.S. Environmental Protection Agency. Research
    Triangle Institute, Research Triangle N.C. 1979.

  3. National Center for Air Pollution Control (1968), A Compilation of
    Selected Air Pollution Emission Control Regulations and Ordinance,
    Public Health Service Publication No. 999-AP-43. Washington.

  4. National Research Council ad hoc Committee (vol. 1, 1998, vol.
    2, 1999, vol. 3, 2001) “Research Priorities for Airborne Particulate
    Matter”, National Academy Press, Washington, D.C.
    5. Friedrich, R. and Reis, S. (2004) “Emissions of Air Pollutants” Springer,
    Berlin.
    6. Katz, M. ed. “Methods of Air Sampling and Analysis” American Public
    Health Association, Washington, 1977.
    7. Powals, R.J., L.V. Zaner, and K.F. Sporck, “Handbook of Stack Sam-
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    pling Ann Arbor Science, Ann Arbor MI 1973.
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    tion Circular 7718, revised by L.R. Burdick, August, 1955.
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    18. Air Pollution Control Association Directory and Resource Book pp
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    19. Code of Federal Regulations 40:CFR 86.004–11. US Government
    Printing Office, Washington 7/1/2004.
    20. Code of Federal Regulations 40:CFR 89.112. US Government Printing
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    21. Code of Federal Regulations 40:CFR 92.8, US Government Printing
    Office, Washington 7/1/2004.


Geometric Mean
(Count Basis) And
Number-Median
Diameter

Geometric Mean
(Mass Basis)
And Mass-Median
Diameter

dgm

dgc

110100

99
98

95

90

80

70
60
50
40
30
20

10

5

2
1

LOG-NORMAL DISTRIBUTIONS

PARTICLE DIAMETER, MICRONS
(LOGARITHMIC SCALE)

(NORMAL PROBABILITY SCALE)

PERCENT UNDERSIZE

log = 6.91log

84.13
d 50

d

d gm
dgc

=

2
( ( σ

σ

Number Distributio

n

Mass Distribution

FIGURE 12

C016_001_r03.indd 830C016_001_r03.indd 830 11/18/2005 1:15:36 PM11/18/2005 1:15:36 PM

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