Title: Characterizing Ambient PM Concentrations and Processes
1Characterizing Ambient PM Concentrations and
Processes
- Overview (pp. 1-4)
- Temporal Patterns of Primary and Secondary PM
Components (pp. 5-22) - Spatial Patterns (pp. 23-39)
- Compositional Patterns (pp. 40-42)
- Discerning Influences (pp. 43-53)
- Methods, tools, references (pp. 54-59)
- What are the temporal, spatial, chemical, and
size characteristics of suspended particles and
precursor gases? - By understanding these characteristics, we can
begin to understand the sources, transport
properties, formation and health effects of PM.
2Overview
- Spatial and temporal analyses of PM data are the
basis for improving our understanding of
emissions and the dynamic atmospheric processes
that influence particle formation and
distribution. Goals of the data analyst
performing these investigations can include - identify possible important sources of PM and
precursors - determine chemical and physical processes that
lead to high PM concentrations - assess efficacy of existing control strategies
- Analyses help one to develop a conceptual model
of processes affecting PM concentrations.
Questions the analyst could be addressing with
the data include the following - What is the chemical composition of PM and how
does the composition change with time and by
site? - What are the statistical characteristics of
pollutant concentrations and how do they change
from site to site and from time to time? - How do different pollutant concentrations vary in
space and time relative to each other? - What spatial and temporal scales are represented
by pollutant measurements at each site? - What local or regional sources influence a given
measurement site? - How did meteorology, nearby precursor and PM
emissions, and natural events influence both
spatial and temporal characteristics of the PM
data? - Many of the more detailed analyses discussed
later in this workbook, such as source
apportionment, are improved by a thorough
understanding of spatial and temporal
characteristics. For example, the analyst can
point out key features in the data that need to
be reproduced in modeling efforts used to assess
control strategies or can identify key components
of PM for source apportionment. Clearly, spatial
and temporal characterization of the data is a
fundamental part of all the workbook chapters.
Key reference Solomon, 1994
3Decision Matrix for Spatial and Temporal Analyses
Decision matrix to be used to select analysis
objectives for the characterization of PM. To use
the matrix, find your analysis objective across
the top. Follow this column down to see which
technical topic areas at the left illustrate
analyses pertaining to the objective. For each
of these analysis objectives, go to the next page
to see which data and data analysis tools might
be needed to meet the objective.
4Decision Matrix for Spatial and Temporal Analyses
For each of the analysis objectives that are of
interest to you, follow down the column to see
which data and data analysis tools might be
needed.
5Temporal Patterns
- Diurnal patterns explore the daily cycle of PM
and its relationship to emissions and
meteorology. - Day of week patterns explore the weekly cycle
of PM and its relationship to emissions. - Episodic patterns explore differences between
episodes of high PM concentrations and
non-episodes. - Seasonal patterns explore differences in
seasonal PM concentrations and the causal factors.
6Diurnal Patterns of PM
- Since the ambient PM standard is expressed as a
daily average (65 ?g/m3), most measurements of PM
are 24-hr averages. Hourly values are not
relevant for regulating compliance purposes. - When measurements with shorter averaging times
than 24-hr are available, analysts have observed
a significant diurnal pattern of PM at most
locations. - The diurnal PM variation is due to the daily
cycle of emissions, dispersion, and PM formation
and removal processes. - The diurnal variation of PM is not well
understood, mostly because of data limitations.
However, the limited data can be used to suggest
possible influences.
7Diurnal Pattern of PM in an Urban Setting
In the winter, the PM2.5 appears to have small
peaks during the rush hours. In contrast, the
PM10 concentration doubles during the day due to
increases in coarse particle concentrations.
In the summer in Hartford, CT, the PM2.5
concentrations are nearly constant throughout the
day while the PM10 concentrations peak during the
day due to increases in the coarse particle
fraction.
Key reference Capita
8Diurnal Pattern of PM in a Rural Setting
In the summer in Liberty, PA, the PM2.5 and PM10
concentrations peak at night and decrease during
the daytime. The daily cycle of nighttime
boundary layer formation and daytime mixing
height growth appear to drive PM concentrations.
In the winter, the PM2.5 and PM10 concentrations
show a mild diurnal fluctuation because there is
a smaller difference between daytime and
nighttime inversion heights.
Key reference Capita
9Diurnal Pattern of PM in S. California
In Long Beach, CA, the PM10 concentration is low
at night and peaks at about 1400, followed by a
sharp drop with the arrival of the sea breeze.
The sea breeze is composed of relatively clean,
cool air that does not mix significantly with the
more-polluted mixed layer.
At Indio, CA, in the California desert, the PM10
concentration peaks in the afternoon. Is this
increase caused by wind-blown dust? By
transported PM from the upwind urban area ?
Key reference
10Some Causes of Diurnal PM Variation
In urban areas, during the afternoon, vertical
mixing and horizontal transport tend to dilute
concentrations. During the night and early
morning, the emissions are trapped by poor
ventilation.
In the afternoon, vertical mixing may carry
pollutants above topographical barriers. During
the night and early morning, dispersion may be
hampered by topography.
11Diurnal Patterns Summary
- When PM measurements are made on a lt24-hr
time-scale, daily cycles in concentration are
observed. These daily cycles are attributable to
daily cycles in emissions, dispersion, and PM
formation and removal processes. - Meteorological information is critical to a
complete understanding of daily cycles in the
meteorological data, including mixing height,
temperature, relative humidity, and wind speed
and direction changes with time of day. Mountain
barriers and large bodies of water are also
factors to be considered. - Add a motivating factor for performing hourly
measurement??? - Examples only deal with mass however,
composition changes with time of day - any
examples of this? - Brief statement of emissions, transport issues at
urban and rural sites and how they might be
observed in the diurnal patterns?
12Day-of-Week Patterns in PM
- There is a measurable weekly cycle of PM at most
monitoring sites. - The weekly periodicity of PM is explicitly
attributable to the weekly cycling of
anthropogenic emission sources and it is not
influenced by weather. - Hence, the weekly cycle can reveal features of PM
emissions such as weekday peaks in concentration
at industrial sites and weekend peaks at
recreational sites. - At this time, the weekly cycle has been analyzed
for PM10 but not for PM2.5.
13Weekly Pattern of PM10 in Northeast
Within Boston, MA urban area, the daily average
PM10 concentration (?g/m3) in the city center
during the week is about 33 higher than on
weekends. At Boston suburban sites, daily
average weekday PM10 concentrations are about
10-20 higher than on weekends. These patterns
are consistent with weekly emission cycles.
At remote monitoring sites (e.g., Thomaston, ME),
the overall PM10 concentrations are lower than
urban sites and there is no discernable weekly
cycle.
Key reference
14Weekly Pattern of PM10 in West
(?g/m3)
(?g/m3)
In some urban areas, such as Tacoma, WA, the
amplitude of the PM10 cycle may be up to 50 of
the weekly average.
At Yosemite NP, the highest concentrations occur
on Sundays. This site is near major recreational
facilities that experience a large weekend influx
of visitors.
Key reference
15Other Day-of-Week Issues
- Discuss minimum data requirements issues to
assess day of week - Show example of emissions day of week cycle and
why we would expect a cycle in PM.
16Day-of-Week Summary
- At remote locations, the PM10 concentration can
be uniform during the entire week. - Most urban centers have higher concentrations
during the workweek and reduced values on
weekends, consistent with activity patterns. - At recreational locations, the PM10
concentrations may peak during the weekend. - The existence of a weekly cycle of PM in urban
and at some rural areas is evidence that the PM
concentrations are influenced by human
activities. - It is important to have a sufficient number of
measurements on weekends versus weekdays to
assess this issue. Also, activity patterns and
emissions should be compared to the ambient data
for corroboration.
17Episodic Patterns in PM
18Seasonal Pattern of PM2.5
- The seasonal cycle results from changes in PM
background levels, emissions, atmospheric
dilution, and chemical reaction, formation, and
removal processes. - Examining the seasonal cycles of PM2.5 mass and
its elemental constituents can provide insights
into these causal factors. - The season with the highest concentrations is a
good candidate for PM2.5 control actions.
Key reference CAPITA
19Some Causes of Seasonal PM Variation
PM primary and precursor emissions are dependent
on seasonal energy consumption for heating and
cooling, occurrence of fires, etc. Many of the
gas-to-particle transformation rates are
photochemically driven and peak in the summer.
In urban areas, the winter mixing heights are
low, trapping emissions. In the summer, intense
vertical mixing raises the mixing heights which,
in turn, tends to dilute the concentrations.
Key reference CAPITA
20PM10-PM2.5 Relationship in the Northeast and
Southern California
In Southern California, the PM2.5 concentrations
peak in the winter with 2.5 times more mass than
during the spring and summer. The PM10 peaks in
the fall.
In the Northeast PM2.5 and PM10 concentrations
peak in the summer with approximately 30 more
mass in the summer than the winter.
Key reference CAPITA
21Seasonal PM2.5 During 1988
- At Washington DC and Philadelphia, (Mid-Atlantic)
the PM2.5 concentrations are 60 higher in summer
than in winter. - In the rural Appalachians, the summer PM2.5
concentrations are a factor of three higher than
during the winter.
- At urban Southwestern sites, PM2.5 concentrations
in the winter are 50 higher than in the summer. - At rural Southwestern sites, PM2.5 concentrations
are 50 higher during June than January.
Key reference CAPITA
22Seasonal Pattern Summary
- Summertime photochemical production of secondary
PM can be important at some sites. - Summertime PM concentrations can be high because
of dust events and secondary PM formation. - Wintertime fog chemistry - not discussed here
- Wintertime PM concentrations can be high because
of lower inversions and changes in emissions such
as the use of wood-burning for home heating. - Because of the potentially different sources of
PM on a seasonal basis, different controls may be
appropriate, depending on when PM exceedances are
observed.