the clean air act and volatile organic compounds: did
TRANSCRIPT
The Clean Air Act and volatile organic compounds: Did plants reduce their health-indexed air emissions
or shift their emissions into other media?
Shanti Gamper-Rabindran1 Assistant Professor
GSPIA University of Pittsburgh [email protected]
Presented at the Maxwell School, Syracuse University
April 2009
Abstract
Do plants respond to medium-specific regulation of pollutants by reducing their emissions into that medium or by shifting their emissions into other media? I examine the impact of the U.S. Clean Air Act’s ground-level ozone regulations (CAA) on the chemical manufacturing sector’s health-indexed emissions of volatile organic compounds (VOC) that are reportable to the Toxic Release Inventory. I construct a database of 1,964 plants across the United States between 1988 and 2002. I estimate the CAA’s regulatory effects by comparing the changes in health-indexed emissions of plants in counties that are in non-attainment status for ground-level ozone, where the CAA regulation is stricter, with their counterparts in attainment counties. I also control for changes in plant-level output, using changes in employment as a proxy. The results indicate that the CAA reduced health-indexed VOC emissions into air and that the CAA did not increase emissions into water, onto land or to offsite transfers.
JEL codes: Q53, Q58, I18, L65 Keywords: Clean Air Act, cross-media substitution, health-indexed emissions, volatile organic compounds
1 I thank Michael Greenstone for the VOC list, Patrick Conway, James Hamilton, John Mendeloff, David Popp and colleagues at the Environmental Protection Agency and ChemAlliance for helpful comments. Funding from the National Science Foundation BCS 0351058 is gratefully acknowledged. All errors are mine.
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1 Introduction
The Environmental Protection Agency (EPA) has historically taken a single-medium
approach to regulating pollution emitted by the manufacturing sector. For example, the
Clean Air Act regulates emissions into air, while the Clean Water Act regulates emissions
into water. Despite its adoption of a few cross-media programs, 2 the EPA’s regulatory
and administrative framework constrains it to a traditional single-media approach to
regulating emissions from the manufacturing sector (Hahn and Males, 1990; Funke,
1993; Barrette, 1995; Ma and Crawford-Brown, 1997; McMahon, 2006). This approach
may lead to unintentional outcomes, i.e. plants may shift the release of their pollution
from the regulated medium into other media categories (Hendrickson and McMichael,
1985; Hahn and Males, 1990; Borys, Skarzinskas, and Green, 1996; Ma and Crawford-
Brown, 1997).
One stark example of pollutants shifting across media is the methyl tertiary-butyl ether
(MTBE) crisis in the 1990s. In response to air regulations, the petroleum industry
switched from tetra-ethyl lead to MBTE. The use of MTBE reduced emissions of lead
into the air and other smog-producing air pollutants. Unfortunately, the switch to MBTE,
alongside the problem of leaking underground storage tanks, caused groundwater
contamination and polluted the drinking water in several cities (Mcgarity, 2004). The
EPA failed to consider cross-media contamination issues in that case (Mcgarity, 2004).
Nevertheless, there is little systematic evidence on whether medium-specific regulation
has cause cross-media substitution, with Sigman (1996), Dombrowski (2000) and
Greenstone (2003) reporting contrasting results.
I study the Clean Air Act Amendments’ ground-level ozone regulation (CAA) for the
control of air emissions of non-methane volatile organic compounds (VOC).3 In
particular, I examine the impact of the CAA on the chemical manufacturing sector, which
produces VOC as a by-product of their manufacturing processes. VOC are of interest
2The EPA has taken cross-media approaches in its Persistent, Bio-accumulative and Toxic (PBT) Chemical Initiative (EPA, 2000) and the Mercury Initiative (EPA, 2006). 3 These ‘ground-level ozone’ regulations are different from those regulations governing emissions of substances that may damage the stratospheric ozone layer.
2
because they affect human health; indirectly, as precursors to ground-level ozone, and
directly, as toxins (WHO, 2006; Delfino et al, 2003; Delfino et al, 2003b). Plants can
either adopt an overall pollution reduction strategy that reduces their emissions to all
media, or adopt end-of-pipe abatement technologies that may result in the shifting of
emissions to other media. Small shifts in toxins across media can create sizable effects
(Hahn and Males, 1990). Operating alongside the CAA, the Toxic Release Inventory
program publicizes the ranking of plants according to reported pounds of emissions. This
focus on medium-specific pounds of emissions could potentially distract plants from the
goal of reducing the health impact of these pollutants. Therefore, the CAA raises two
policy questions. First, did the CAA reduce health-indexed VOC emissions into air?
Second, did the CAA cause plants to shift their health-indexed emissions of VOC from
air, which is targeted by the CAA, to other media categories?
I construct a database of plants in the chemical manufacturing sector, covering plants that
report both their emissions to the TRI and their employment to Dun & Bradstreet. I
extend two important previous studies (Greenstone, 2003; Sigman, 1996) in four ways.
First, I study the chemical manufacturing sector, which released 57% of the health-
indexed VOC emissions from the manufacturing industry in 1991.4 Second, I examine
the impact of the CAA on toxicity-weighted or health-indexed emissions. Health-index
emissions provide a better indication of the health-impact of emissions because chemicals
vary in their health-impacts
ed
5 (Bouwes and Hassur, 1997; Wright, 2007). Third, I control
for changes in output, which is an important determinant of emissions, using plant-level
changes in employment as a proxy, albeit imperfect. Fourth, in considering emissions
into non-air media, I extend my analysis beyond onsite releases, as in Greenstone (2003),
and consider offsite transfers.
Focusing on plants that report VOC emissions in at least 9 out of the 15 years between
1988 and 2001, I find that the CAA reduced health-indexed emissions into air by 1.4%
annually. Over the study period of 15 years, this figure translates to a sizable reduction of
4 My study is limited to VOC that reportable to the TRI since 1988.
3
21% of health-indexed emissions. I do not find evidence that the CAA increased health-
indexed VOC emissions into water or land or to offsite transfers. These results suggest
that the CAA ozone regulation resulted in genuine reductions in health-indexed emissions
into air.
2. The Clean Air Act and the chemical manufacturing sector
2.1 The Clean Air Act regulation
Under the Clean Air Act (CAA), the EPA sets national ambient standards for priority air
pollutants, such as ground-level ozone. The control of VOC is relevant for the attainment
of the national ozone ambient standards as VOC (along with oxides of nitrogen) form the
precursors to ozone (Henderson, 1996; Becker and Henderson, 2000). The EPA
designates counties whose ambient concentration exceeds a pollutant-specific national-
ambient-standard as non-attainment counties for that pollutant.
The CAA requires counties “that are in non-attainment to bring themselves into
attainment, or else, face federal penalties. The primary way of achieving attainment is
through the regulation of VOC-emitting … sources within one’s jurisdiction –
particularly manufacturing plants in certain industries. As a result, these plants in non-
attainment areas face much stricter environmental regulation than their counterparts in
attainment areas. For example, in non-attainment areas, plants with the potential to
pollute are subject to more stringent and more costly technological requirements on their
capital equipment” (Becker and Henderson, 1999). Table 1 highlights various aspects of
the stricter and costlier regulations in the non-attainment counties. Consistent with their
documentation that plants in non-attainment areas face stricter environmental regulations
than those in attainment areas, Becker and Henderson (1999) find that productions costs
are higher for plants in non-attainment areas.
“Both the states and the federal EPA are given substantial enforcement powers to ensure
that the CAAs’ statutes are met” (Chay and Greenstone, 2005). “Plants in non-attainment
5 A complete accounting of the health impacts would require an ecological modeling effort that is outside the scope of this paper.
4
areas face a greater likelihood of being inspected and fined than their counterparts in
attainment areas” (Becker and Henderson, 1999)
2.2 The Clean Air Act and cross-media considerations
The 1990 Clean Air Act for criteria air pollutants requires that the choice of the best
available control technology take into account “non-air quality health and environmental
impacts” (Hahn and Males, 1990). However, in practice, the technologies that have been
chosen are those that achieve the greatest reduction in air emissions without causing
major economic dislocation (Hahn and Males, 1990). In the late 1990s and in the 2000s,
the EPA began implementing Maximum Available Control Technologies for hazardous
air pollutants, which includes some VOC. In its consideration of these technologies, the
EPA has taken into account several cross-media issues (EPA, 2001). For example, the
2005 Final Rule for the Organic Chemical Industry specifies requirement for effluent
from air control devices (EPA, 2005).
2.3 Cross media substitution of VOC6
Plants in the chemical manufacturing sector emit VOC into the air as a by-product of
their manufacturing processes (Ackermann et al, 1998; Moretti, 2002; EPA, various
years). For example, in the organic chemical industry (SIC-286), VOC air emissions
include direct emissions from stacks or vents, fugitive emissions from tanks, valves and
mechanical seals, and emissions from cooling towers and wastewater treatment units. In
the plastics, resins and man-made fiber industry (SIC-282), VOC air emissions are
produced during the dry spinning process. In the pharmaceutical industry (SIC-283),
VOC emissions into air occur during chemical synthesis and natural product extraction.
In theory, plants may respond in two ways to regulations that limit VOC emissions.
Plants may adopt pollution reduction strategies, thereby, reducing overall emissions to all
categories. These strategies include product design changes, process modification, input
or material changes, in-process recycling and reuse and good operating practices, such as,
6 This section draws heavily from EPA’s sector notebooks (EPA, various years), Ackermann et al (1998) and Moretti (2002).
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waste segregation and preventative maintenance (Moretti, 2002). Under these
circumstances, reduction in air emissions would be complementary with reductions in
emissions to other media categories.
Alternatively, plants may adopt end-of-pipe abatement technologies that reduce air
emissions, but these technologies may increase emissions to water, land or offsite
transfers for treatment, recycling or disposal. Under these circumstances, substitution
from air emissions into other media may occur. Several abatement technologies exist for
VOC control (Moretti, 2002). The input and by-products of the abatement process, such
as scrubbers, solvents, coolants and wastewater, need to be treated, disposed or recycled
(Moretti, 2002). First, the thermal oxidization process oxidizes the VOC, and after the
oxidization process, water or caustic7 scrubber is used to remove highly corrosive gases
e.g. hydrochloric acid. Second, absorption or scrubbing, employing solvents such as
water, mineral oils, or other non-volatile petroleum, is used to separate gaseous streams
using solvents such as water, mineral oils, or other non-volatile petroleum. The stripping
process is then used to re-generate the solvents, and VOC are desorbed from the solvents,
and recovered as a liquid in a condenser. The stripping process may create water disposal
problems (Moretti, 2002).
Two factors limit plants’ incentives to adopt air abatement technologies that shift
emissions into other medium such as water. First, the low solubility and the high vapor
pressure of some VOC limit the extent of substitution from a technical standpoint.
Second, several VOC that face the CAA regulations are also subject to water regulations,
limiting the incentive for plants’ to shift their emissions into water. Out of the 147 VOC
in my study, only 87 are not listed as chemicals subject to water regulations, i.e., they are
not listed in the Priority Pollutant List (PPL) and in the Safe Drinking Water Act
(SDWA).
In my analysis across media, I examine emissions into water and onto land. I also
examine the category of offsite transfers. While proper recycling serves as a key waste
7 These are hydroxides of alkali and alkaline earth metals, such as sodium, potassium, calcium, and barium.
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management tool, improper recycling and disposal activities have raised concerns of a
‘toxic shell game’ (Office of Technology Assessment, 1988; Orum, 1991).
2.4 Limitations in the detection of cross-media substitution
My study can detect cross-media substitution if plants shift from TRI-reportable VOC air
emissions to TRI-reportable VOC emissions into other media. My study can also detect,
albeit with much less power, if plants switch from TRI-reportable VOC emissions to
TRI-reportable non-VOC emissions into other media. The abatement process for air VOC
may employ non-VOC scrubbers or solvents or may produce non-VOC by-products
(Moretti, 2002). If shifts across media occur, I expect in emissions of VOC into air but
an increase in emissions into other media of chemicals including non-VOC. As an
imperfect way to examine the possibility of increases in emissions of other chemicals, I
examine the impact of CAA on all TRI-reportable chemicals. Unfortunately, this analysis
is biased against finding substitution, as the non-VOC scrubbers, solvents or by-products
are likely to be a subset of the TRI chemicals.
My study cannot detect if plants substitute from VOC air emissions to releasing non-TRI-
reportable chemicals into other media. Indeed, TRI-reportable chemicals and non-TRI
reportable chemicals can serve as substitutes (Crumpler, 1996). For example, in the wood
products industry, TRI-reportable paint solvents are used (Crumpler, 1996). In addition,
“non-toxic solvents such as mineral spirits [that] are not reported on the TRI are used in
coating and gluing operations. [The latter] are significant as volatile organic compounds
(VOC) that are photo-reactive and contribute to ground-level ozone pollution”
(Crumpler, 1996).
3. Estimation strategy
As in Greenstone (2003), I compare changes in emissions from plants in counties that are
in non-attainment status for ozone ('treatment' regions) relative to changes in emissions
from plants in counties that are in attainment status for ozone ('control' regions). Previous
studies, summarized in Table 2, have documented that CAA regulations are more
stringent in non-attainment counties than attainment counties, and have implemented this
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strategy of comparing non-attainment and attainment counties in order to estimate the
regulatory impact of the CAA.
The strength of this “difference-in-difference” (DID) approach is that the estimate is not
biased by events that affect both plants in the attainment region and the non-attainment
region, for example, a recession that affected the entire US. However, the limitation in
this approach is that it cannot control for confounding factors that may have had
differential impacts on plants in non-attainment and attainment counties.8
3.1 Estimation strategy - reviewing the assumption
In my estimation strategy, I have assumed that if any impacts are detected, the direction
of causality is from the non-attainment status, through the regulatory effect described
above, to the reductions in emissions at the plant-level in the chemical manufacturing
sector. This assumption would be defensible if the direction of causality were not the
reverse, i.e. the changes in plant-level emissions in the chemical manufacturing sector did
not influence the county-level non-attainment or attainment status. As described below,
the chemical manufacturing sector contributes only a small fraction of the VOC
emissions at the county-level, and therefore, it is unlikely that the changes in the
emissions at the plant-level influence the county-level attainment or non-attainment
status.
VOC is produced by manufacturing plants, road emissions and non-road emissions, such
as agricultural activity (EPA, 1999). The National Emissions Inventory (NEI) provides
data on air toxins from all three sources (EPA, 1999). Out of the 146 VOC chemicals in
my study, the NEI has compiled data for 124 chemicals. The NEI database provides
useful information on the contribution of the chemical plants in my study to the county-
level VOC emissions. The sample of plants in the NEI is likely to be comparable to the
sample of plants in my database. As the NEI contains plants that are major sources under
the Clean Air Act regulation, the NEI is likely to contain the larger plants in the chemical
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manufacturing industry. Similarly, as larger plants are more likely to report to the D&B,
my database, which contains the TRI-reporting plants from the chemical manufacturing
industry that are successfully linked to the D&B sample of plants, contains the larger
plants in that industry. It is the larger plants are more likely to report to the D&B.
Table 3 tabulates the contribution of the chemical manufacturing plants to the county-
level health-indexed VOC emissions, as calculated from the 1999 NEI.9 The sample of
counties, described below, is restricted to those counties with at least one chemical
manufacturing plant. Table 3 shows that the chemical manufacturing plants contribute
only a small fraction of the VOC emissions at the county-level, even for those counties
which are at the 90th percentile in their share of VOC emissions from the chemical
manufacturing plant. For the counties at the median and the 75th percentile, chemical
manufacturing plants contribute only 0.05% and 0.8% of the county-level health-indexed
VOC emissions, respectively. Even for the counties at the 90th and 95th percentile, the
contributions of the chemical manufacturing plants are only 6% and 16% respectively.
Only in twelve counties at the extreme upper tail of the distribution, i.e., at and above the
99th percentile, do these contributions rise to 45%.
3.2 Estimation model
My estimation model is based on Greenstone (2003), with the following modification. I
include two additional control variables to the model: the percentage change in
employment (to proxy for output) and the demographic characteristics of the census tract
where each plant is located. These demographic factors are correlated to plant-level
emissions (Arora and Cason, 1999).
Observations are for plant k in county c at time t. The program impact is measured by the
difference in the percentage changes in emissions between plants located in non-
attainment counties and plants located in attainment counties.
8E.g., the DID approach cannot address recessions that hit the non-attainment counties but that spare the attainment counties. The fairly wide geographical variation in the location of plants may reduce this potential estimation issue. 9 The 1993 and 1996 NEI compiled data on only 33 chemicals (EPA, 2004).
9
% ∆Y k c t = [ (Yk c t – Y k c t-1 ) ÷ ( Y k c t + Y k c t-1) /2 ] --- Equation 1
= β1 Z c t-1 + β2 % ∆ L k c t + β3 T t + β4 S k + β5 X k + e k c t
where ∆ Y k c t is a measure of the percentage change in emissions of pollutant i for plant
k in county c between time t and t-1, ∆ L k c t is the percentage change in employment for
plant k in county c between time t and t-1, Z is a binary variable that takes the value 1 for
county c that is in non-attainment status in time t-1, and takes the value 0 if that county is
in attainment status at that time, T are time dummies, S are dummies at the 3-digit SIC
code, and X is a vector of the census tract characteristics where the plant is located. The
coefficient of interest, β1, measures the annual percentage change in plant-level
emissions in non-attainment counties relative to those in attainment counties. I allow the
error to be correlated for the same plant across time. The time period t is between 1989
and 2002.10 The year dummies controls for year specific variations in emissions. For
example, the year dummies can take into account the fact that offsite transfers to
recycling, treatment and energy recovery became reportable only in 1991.
The ideal analysis would control for fluctuations in emissions that are driven by changes
in output. Unfortunately, output data is not publicly available, forcing numerous studies
(e.g. Khanna and Damon, 1999; Greenstone, 2003) to study reductions in emissions
without controlling for output. I use plant-level employment to control for output. This
variable is an imperfect control for output. As an illustration, consider the following case.
For simplicity, assume that the ratio of health-indexed emissions to output is constant.
Consider the case when: (a) plant-level output in non-attainment counties are
systematically declining relative to that in attainment counties, and (b) the ratio of
employees to output is declining. Because the percentage decline in plant-level
employment does not fully account for the actual percentage decline in plant-level output
in non-attainment counties relative to attainment counties, my study would overstate the
CAA’s impact on reducing plant-level emissions. Nevertheless, some types of
manufacturing industries, such as the iron and steel industry, are more susceptible to this
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potential estimation bias. The iron and steel industry has experienced a systematic decline
in the Rust Belt counties, which are also the counties that had been in non-attainment for
criteria air pollutants (Kahn, 1999). In contrast, the geographical variation in the location
of plants in the chemical manufacturing sector serves to mitigate this estimation issue.
4. Data
My sample is restricted to plants in the chemical manufacturing sector that report their
emissions to the TRI and whose plant-level employment is reported in the Dun and
Bradstreet (D&B) database.11 Specifically, I focus on those plants that report VOC
emissions for at least nine years out of the possible fifteen years between 1988 and 2002.
The sample size is about 20,000 observations, representing 1,964 plants, between 1988
and 2002. I omit the first year of the TRI, 1987, as plants’ lack of familiarity with TRI
make that year’s data less reliable (Levinson, 2001).
I use Greenstone’s (2003) list of VOC with two modifications. A Ph.D. chemist had
produced Greenstone’s (2003) list by determining which of the chemicals reportable to
the TRI since 1988 are VOC. I shortened the VOC list in two ways. First, I omit three
chemicals that are considered non-photo-reactive by the EPA and therefore these
chemicals are not subject to the CAA regulations. Second, out of these 171 VOC
chemicals, I focus on the 146 chemicals that have been assigned oral or inhalation
toxicity-weights, in order to create the measure of health-indexed emissions.12 13
10 The first year of the analysis is for changes between 1988 and 1989. 11 As the D&B database contains employment data for larger plants, my sample is skewed towards the larger TRI plants. 12 The 18 VOC chemicals that have not been assigned oral or inhalation toxicity weights comprise a tiny fraction of the VOC non-health-indexed emissions. The efforts to assign toxicity weights have been concentrated on chemicals perceived as more harmful. These 17 chemicals comprise 1% of non-health-indexed VOC emissions in the US manufacturing sector. 13: Greenstone’s (2003) shortened list contains 171 chemicals. Among these 171 chemicals, 146 have toxicity weights. [25 do not have both oral and inhalation toxicity]. Out of the 146 VOC with tox weights, 124 of them are in the NEI. Out of the 171 VOC, 135 are in the NEI.
11
The EPA’s TRI data provides emissions information by chemical, by media, by plant and
by year.14 Plants that emit chemicals beyond a threshold self-report their emissions
(Hamilton, 2005). Most plants estimate their emissions using emission factors related to
their production processes while few plants monitor their emissions directly (Hamilton,
2005). The TRI is the only source for plant-level emissions of numerous toxic chemicals
(Hamilton, 2005). Several studies (Khanna and Damon, 1999; Greenstone, 2003;
Gamper-Rabindran, 2006; Morello-Frosch and Jesdale, 2006; Bui, 2005) have relied on
the TRI plant-level emissions. The EPA has taken several steps to improve the accuracy
of the TRI data, though limitations still exist.15 The EPA provides technical assistance to
plants on estimating their emissions.16 The Emergency Planning and Community Right-
to-Know Act, the legislation which established the TRI, authorizes the EPA to penalize
plants that fail to report their emissions and that fail to report their correct level of
emissions (EPA, 2001).17 The EPA has taken enforcement actions against some of these
plants.18
The chemical-specific toxicity weights are from the Risk Screening Environmental
Indicator (RSEI) (EPA, 2004). Emissions to air are weighted using inhalation toxicity
weights. Emissions to other media are weighted using oral toxicity weights. Using
Chemical Abstracts Service (CAS) numbers, I link the list of VOC with the chemical-
level emissions data in the TRI. Filtering for TRI chemicals that are VOC, I then
calculate health-indexed VOC emissions. I use analogous filtering techniques to calculate
health-indexed emissions for the subset of VOC that are not on the Priority Pollutant List
(PPL) and the Safe Drinking Water Act (SDWA).
14 I use the TRI data assembled by the Risk Screening Environmental Indicators (RSEI) project. Among advantages of this database is that the EPA has geo-coded the latitude and longitude of plants, ensuring more accurate linkage of the plants to their census tract locations (EPA, 2004). 15 Marchi and Hamilton (2006) report that large drops in plant-level TRI reporting for lead and nitric acid are not matched with corresponding drops in measured concentrations from EPA monitors. 16 The EPA’s sector guidance documents contain emission factors for typical processes for that particular industry. Plants can use these emission factors to estimate chemical releases (Marchi and Hamilton, 2006). The EPA has also undertaken specific projects to improve the TRI data quality, such as the National Nitrate Compliance Initiative, in which plants undertook voluntary audits of their TRI reporting (EPA, 2002). 17 The EPA is authorized to issue Civil Administrative Complaints against “data quality errors such as the failure to provide reasonable estimates of releases and off-site transfers” (EPA, 2001). 18 Data quality errors, such the failure to report or the failure to provide reasonable estimates, can result in penalties as high as $27,500 per day (EPA, 2001).
12
The D&B database provides annual plant-level employment data. The Code of Federal
Regulations provides the lists of counties that are in non-attainment for ozone by year.19
The 1990 Decennial Census provides demographic information of the census tract
surrounding each plant. I use Geographical Information System overlay tools to link
plants, using their latitude and longitude, to their census tracts.
5. Summary statistics
Table 4 shows the number and the percentage of counties that are in non-attainment or
attainment status for ground-level ozone in the period 1989-2002. Both the number and
the percentage of counties that are in non-attainment status for ground-level ozone have
declined, despite a temporary increase from 1992-1994. In the earlier period my study,
about 36% of counties were in non-attainment, but by the later period of my study, only
25-26% of the counties were in non-attainment. Table 5 tabulates the summary statistics.
Graph 1 shows the trends of health-indexed VOC emissions into air, onsite emissions and
offsite transfers. While health-indexed VOC emissions into air have gradually declined,
health-indexed VOC emissions onsite (other than air) and offsite transfers have not
declined. While onsite emissions show significant fluctuations, they have increased over
time.
Graph 2 provides a closer look at the various components of onsite health-indexed
emissions. Again, while the air component of onsite health-indexed emissions have
shown a gradual decline, emissions into underground injection and onto land has
fluctuated and not declined. The health-indexed emissions into water, however, show a
decline beginning in 1996. Graph 3 provides a closer look at the various components of
the health-indexed emissions to offsite media categories. Offsite transfers for recycling,
treatment and energy recovery became reportable in 1991. Despite a dip in 2000, offsite
transfers have increased between 1991 and 2002. While most categories for offsite
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transfer do not show a clear pattern, offsite transfers for recycling have grown between
1991 and 2002, with a dip in 2000.
6. Regression results
6.1 Health-indexed VOC emissions into air
To recall, in my regression analysis, the coefficient of interest, β1, measures the
regulatory effect of the CAA. Specifically, the coefficient measures the annual
percentage change in plant-level emissions in non-attainment counties relative to those in
attainment counties. The regression results for health-indexed air emissions for the
chemical manufacturing sector are presented in Table 6. Results from the sparser
regression model, with the non-attainment variable, employment and SIC and year
dummies, are presented in column 1. These results suggest that the non-attainment status
reduces plant-level health-indexed emissions by 1.5% annually. Results from the full
regression model, which adds the census tract characteristics where the plants are located,
presented in column 2, are similar. These results suggest that CAA reduced health-
indexed VOC emissions into air by 1.4% annually. Over the study period of 15 years, this
translates to a sizable reduction of 21% of health-indexed emissions. In both models, a
1% change in plant-level employment is positively associated with a 6.5% change in
plant-level health-indexed emissions.
6.2 Health-indexed VOC emissions into other media
The regression results for health-indexed emissions into other media are presented in
Table 7. The results for emissions into water are presented in column 1. The results for
emissions offsite (which include offsite transfers for disposal and treatment) are
presented in column 2. The results for emissions into onsite categories except air (i.e. to
water, land, and underground injection) are presented in column 3. The results for
emissions into all media categories other than air are presented in column 4. In all of
these regression models, the coefficient on the non-attainment variable is not statistically
different from zero. Therefore, I conclude that there is no evidence that the CAA caused
19 As in Greenstone (2003) I consider a county to be in non-attainment status for ozone if it is listed as nonattainment for either ozone or nitrogen dioxide. Chemical processes that involves nitrogen dioxide and VOC create ozone.
14
plants to increase their health-indexed emissions into other media. In most of these
regression models, the changes in plant-level employment are positively correlated with
changes in health-indexed emissions. For two of the regressions models (column 1 and
2), a higher proportion the population being white in the census tract where the plants are
located is associated with a decline in health-indexed emissions.
6.3 VOC unregulated under SDWA and PPL
Plants are more likely to shift their emissions of VOC from air to water for those VOC
that are unregulated by water regulations. Therefore, I examine the impact of the CAA on
health-indexed emissions of VOC that are not listed under SDWA and PPL. The results
are presented in Table 8. The coefficient for the percent change in employment is positive
and statistically significant as expected. Unfortunately, the impact of the non-attainment
status on the health-indexed emissions of VOC to air and water are not precisely
estimated for this subset of VOC.
6.4 TRI chemicals
Plants may shift from emitting VOC into the air to emitting other TRI-reportable
chemicals. For example, the solvents used to adsorb the VOC during the abatement
process may be non-VOC TRI-reportable chemicals.20 Therefore, I examine the impact
of CAA on health-indexed emissions of TRI chemicals that are reportable since 1987.
The limitation in this analysis is that the relevant solvents make up only a fraction of the
TRI emissions and thus the analysis is biased against finding evidence for cross-me
substitution. The results are presented in Table 9. The results in column 1 indicate that
the CAA reduced health-indexed TRI air emissions. Based on the results in column 4, I
conclude that there is no evidence to indicate that the CAA increased health-indexed TRI
emissions to the non-air media categories. In both regression models, I find that changes
in employment are related to changes in emissions.
dia
6.5 Scrubbers or solvents and by-products of VOC abatement – in progress
20 This study cannot detect switches to non-TRI-reportable solvents.
15
I plan to examine the subset in the TRI list of chemicals that (1) are typical scrubbers or
solvents for VOC or (2) are typical chemical by-products during the abatement processes
for air VOC emissions. Discussions are ongoing with chemical engineers in EPA and
ChemAlliance to identify a relevant list of chemicals. Hydroxides of alkali and alkaline
earth metals such as sodium, potassium, calcium and barium have been used as scrubbers
in the abatement process for VOC air emissions. Hydrochloric acid is as one by-product
of the VOC abatement process, particularly in the oxidation of VOC (Moretti, 2002).
7. Conclusion and policy implication
This study on the chemical manufacturing sector asks whether the CAA ozone
regulations reduced plant-level health-indexed air emissions, or whether the CAA caused
plants to shift their emissions to other media. The results indicate that these regulations
successfully reduced plant-level health-indexed emissions into air by 1.4% annually.
Over the study period of 15 years, this translates to a sizable reduction of 21% of health-
indexed emissions. I also do not find evidence that the CAA ozone regulations caused an
increase in the release of health-indexed VOC into other media categories. My study
provides complementary results to Greenstone’s (2003) finding that the CAA reduced
plant-level pounds of emissions into air, but did not increase those emissions to water or
land in the iron and steel industry between 1987 and 1997.
These results have two policy implications. First, the TRI, which operates alongside the
CAA and publicizes the ranking of plants based on their pounds of emissions, may create
an incentive for plants to focus on reducing their pounds of emissions instead of on
reducing their health-indexed emissions. These results indicate that, in practice, in
response to the CAA, plants have indeed reduced their health-indexed air emissions.
Second, in theory, in response to medium-specific regulations, plants may substitute their
emission from the regulated media to other media categories. These results indicate that,
in practice, for the CAA ozone regulations, plants have truly reduced their health-indexed
emissions and not simply shifted their emissions to non-air media categories.
16
17
This study has two limitations. My study finds that there is no evidence to support cross-
media substitution among TRI reportable chemicals. The study would have provided
stronger evidence for or against cross-media substitution if the results for health-indexed
emissions into other media had been statistically significant from zero. For example, if
the estimated coefficients for regressions on health-indexed emission had been negative
and statistically different from zero, one could proceed the following way. One could
apply a stronger test against cross-substitution and one could then draw the conclusion
against cross-media substitution if the CAA had reduced health-indexed emissions into
other media by a greater percentage than it had reduced health-indexed emissions.
Second, in reality, plants may shift from emitting TRI reportable VOC into the air to
releasing non-TRI reportable chemicals to other media. However, my study detects cross-
media substitution only if plants switch from TRI-reportable air VOC emissions to
emitting TRI-reportable VOC or TRI-reportable chemicals into other media.
In the future, I plan to discuss in greater detail the end-of-pipe pollution abatement
processes in the chemical industry with chemical engineers at the EPA and in the
chemical industry and at ChemAlliance. I plan to improve the study by examining
specifically TRI-reportable chemicals that serve as typical solvents for VOC or that are
emitted as typical by-products of the VOC abatement processes.
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Table 1. Comparison of the more stringent regulations in non-attainment counties and the less stringent regulations in attainment countiesStatus of county In Attainment In Non-attainmentOzone concentrationa Below the National Ambient Air Quality Standards Below the National Ambient Air Quality StandardsState Implementation SIPS have to specify details on how states will bring theirPlans (SIP)a submittted by violating counties into attainment.e The SIP outlines the the State to the Fed. EPA detailed regulatory requirements for each plant.a
Technical requirements imposed on plants' capital equipment for new plants and existing plants that are undertaking major expansion* plants emit < 100 Plants face no specific technological requirementsa Plants are subject to Lowest Achievable Emission Rates tonnes of criteria and are "essentially unregulated".d (LAER) standards.b
air pollutants. New plants are required to purchase pollution offsets fromexisting plants.e
* plants emit > 100 Plants are required to install the Best Available Control Plants are subject to Lowest Achievable Emission Rates tonnes of criteria Technology (BACT), which is negotiated on a case-by-case (LAER) standards.b
air pollutants. basis and which is sensitive to cost considerations. a New plants are required to purchase pollution offsets fromexisting plants.eLAER standards required the installation of the “cleanest” available technology that is in use in any state.The costs of such technology can be considered onlyif the costs were so high that they would prohibit the new source from operating at all.b
Technical requirements imposed on plants' capital equipment for existing plants Plants face no specific technological requirementsa Plants that are grandfathered from the LAER standards,
and are "essentially unregulated".d are required to install the Reasonably Available Control Technology (RACT), which requires retrofitting, and which takes into account the economic burden imposed
on the plants.a
State impose emission limits on plants d
EPA inspections Rates of inspection and penalties are lower Rates of inspection and penalties imposed are higher(a) Becker and Henderson (1999), Costs of Air Quality Regulations NBER; (b) Popp (2001); (c) EPA’s On-Line SIP Processing Manual, “The On-line State Implementation Plan Processing Manual”; (d) Greenstone and Chay (2000) JPE; (e) Becker and Henderson (2000) JPE
Table 2. Studies that use the county-level nonattainment/attainment status to estimate the impacts of the more stringent Clean Air Act regulations in the non-attainment counties relative to attainment counties.(1) Henderson (1996) Counties that are in non-attainment for ground-level ozone experience greater reductions
in ground-level ozone than those counties that are in attainment.(2) Becker and Henderson In a study of industries that are highly polluting in VOCs, they find counties that are
(2000) in non-attainment for ground-level ozone experience plant births that are lower by 26-45%.(3) Becker and Henderson In a study of industries that are highly polluting in VOCs, they find counties that are
(1999) in non-attainment for ground-level ozone experience greater production costs.(4) Greenstone Plants in the iron and steel industries located in counties that are in non-attainment
(2003) for ozone experienced greater reductions in their pounds of VOC emitted into air than did comparable plants in attainment counties.
(5) Chay and Greenstone Non-attainment counties experience greater reductions in the level of total suspended (2003) particulate matter and infant mortality rates than attainment counties.
(6) Chay and Greenstone Non-attainment counties experience greater reductions in the level of total suspended (2005) particulate matter and greater increases in county-level housing prices than attainment counties.
Table 3 The contribution of chemical manufacturing sector to the county-level health-indexed VOC emissions.Panel A: The contribution of the chemical manufacturing sector to the total health-indexed VOC emissions at the county-level.In counties with values at the: 50th percentile 0.05% 75th percentile 0.8% 90th percentile 6% 95th percentile 16% 99th percentile 45%Panel B: The contribution of the chemical manufacturing sector to the health-indexed emissions from point sources at the county-levelIn counties with values at the: 50th percentile 0.02% 75th percentile 1.7% 90th percentile 12% 95th percentile 32% 99th percentile 65%Notes: This analysis is restricted to counties with at least one chemical manufacturing plant.
Table 4: Percentage counties that are in attainment and non-attainment for ground-level ozone between 1989 and 2002Year 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002# attainment counties 312 327 340 319 338 348 357 389 422 439 447 448 437 442# non-attainment counties 176 182 186 235 233 233 226 204 168 160 151 159 155 151Total counties 488 509 526 554 571 581 583 593 590 599 598 607 592 593% counties in attainment 64 64 65 58 59 60 61 66 72 73 75 74 74 75% counties in non-attainment 36 36 35 42 41 40 39 34 28 27 25 26 26 25 Notes: During the latter period of our study, we have more plants in the sample and these plants are spread out in a larger number of counties.
Table 5. Summary statisticsMean Std. Deviation
% individuals that are white 0.76 0.29% individuals above 25 0.33 0.17 with less than high school education% households that are below the poverty rate 0.16 0.15 Year=1991% change in Employment 0.02 0.27Non-attainment 0.60 0.49% change in health-indexed emission Air -0.02 0.79 Water -0.05 0.62 Onsite except air -0.08 0.72 Offsite 0.46 1.16 All except air 0.42 1.19 Year=1997% change in Employment 0.02 0.23Non-attainment 0.51 0.50 % change in Health-indexed emissions Air -0.01 0.68 Water -0.03 0.46 Onsite except air -0.04 0.51 Offsite 0.06 0.89 All except air 0.06 0.88 Year=2001% change in Employment 0.00 0.25Non-attainment 0.48 0.50 % change in Health-indexed emissions Air -0.09 0.69 Water -0.01 0.48 Onsite except air -0.01 0.53 Offsite -0.05 0.86 All except air -0.05 0.85Note: The construction of the % change variable for employment and emissionsand emissions allows figures to range from +2 (for entrants) to -2 (for exiters).
%∆ = (Yt - Yt-1) / [(Yt + Y t-1)/2], where Y denotes emissions or employmentand t indexes time.
Table 6: Impact of the CAA ozone regulations on plant-level health-indexed VOC emissions into air in the chemical manufacturing sector (1) (2) Media Air Air Non-attainment -0.015* -0.014* (0.008) (0.008) White -0.003 (0.016) Low education -0.024 (0.027) Poor 0.040 (0.033) Percentage change 0.065** 0.065** in employment (0.021) (0.021) Year dummies Y Y SIC dummies Y Y Observations 20000 20000 No. of plants 1964 1964
Robust standard errors are in parenthesis. * statistically significant at the 5%** and 10% * respectively
Table 7: Impact of the CAA ozone regulations on plant-level health-indexed VOC emissions into non-air media in the chemical manufacturing sector
(1) (2) (3) (4)Media Water Offsite Onsite All
except air except airNon-attainment -0.005 0.008 -0.004 0.005
(0.005) (0.009) (0.006) (0.009)White -0.020** 0.012 -0.020* 0.009
(0.009) (0.019) (0.010) (0.019)Low education -0.008 0.008 -0.004 0.010
(0.016) (0.031) (0.019) (0.031)Poor -0.020 0.028 -0.018 0.015
(0.016) (0.037) (0.020) (0.036)Percentage change 0.029** 0.060** 0.011 0.049* in employment (0.014) (0.028) (0.017) (0.028)SIC dummies Y Y Y YYear dummies Y Y Y YObservations 20000 20000 20000 20000No. of plants 1964 1964 1964 1964 Robust standard errors are in parenthesis. * statistically significant at the 5%** and 10% * respectively
Table 8: Impact of the CAA ozone regulations on plant-level health-indexed VOC emissions: Analysis is limited to VOC that is not listed in the Safe Drinking Water Act and the Priority Pollutant List
(1) (2)Media Air WaterNon-attainment -0.010 -0.004
(0.009) (0.005)White -0.007 -0.020**
(0.019) (0.009)Low education -0.060** -0.013
(0.030) (0.017)Poverty 0.077** -0.007
(0.035) (0.015)Percent change 0.048* 0.012in employment (0.025) (0.014)No. obs. 16906 16906No. facilities 1670 1670Robust standard errors are in parenthesis. * statistically significant at the 5%** and 10% * respectively
Table 9: The impact of the CAA ozone regulations on plant-levelhealth-indexed TRI emissions in the chemical manufacturing sector
(1) (2) (3) (4)Media Air Water Onsite All except
except air air Non-attainment -0.021** 0.001 0.005 0.004
(0.008) (0.006) (0.007) (0.010)White 0.009 -0.014 -0.012 0.006
(0.017) (0.011) (0.012) (0.020)Low education -0.007 -0.022 0.005 0.000
(0.028) (0.021) (0.023) (0.031)Poor 0.027 -0.000 0.002 0.038
(0.033) (0.019) (0.021) (0.038)Percentage change 0.047** 0.026 0.011 0.051*in employment (0.022) (0.017) (0.019) (0.030)SIC dummies Y Y Y YYear dummies Y Y Y YObservations 20000 20000 20000 20000No. of plants 1964 1964 1964 1964 Robust standard errors are in parenthesis. Significant at the 5% ** and 10% * respectively.