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American Petroleum Institute Air Research Programs

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July 27, 2005. 1. American Petroleum Institute Air Research Programs. Howard Feldman, Director ... Study used Conventional Bagging Methodologies to Capture Emissions ... – PowerPoint PPT presentation

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Title: American Petroleum Institute Air Research Programs


1
American Petroleum Institute Air Research
Programs
  • Howard Feldman, Director
  • Regulatory Analysis and Scientific Affairs

Palo Alto, CA July 27, 2005
2
March 2005 PERF Meeting
  • Two Research Programs
  • Smart LDAR (Leak Detection and Repair)
  • Mobile Source Air Toxics

3
Characterization of PM2.5 from Stationary
Sources
4
Background
  • Chemically speciated PM2.5 emissions data are
    needed
  • for SIP development
  • environmental assessments
  • emission inventories
  • source species fingerprints
  • source apportionment

5
Background
  • Traditional air emissions test methods for
    stationary sources (hot filter/iced impinger
    methods e.g. EPA 5 202, ARB 5, etc.)
  • Not accurate or precise enough for low
    concentrations of many current sources (e.g.,
    gas-fired power plants)
  • Bias due to background and artifacts can be very
    significant
  • Contributes significantly to larger-than-expected
    range of results for similar sources e.g.
    gas-fired power generation
  • Limited capability for chemical/physical
    characterization of PM2.5

6
Project Overview
  • Goals
  • Develop and standardize improved dilution
    sampling technology/methods for PM
  • Develop preliminary emission factors and
    speciation profiles for PM2.5 and precursors
  • 4-year project (2000-2004)
  • Build on prior work sponsored by API, GRI and DOE
  • Laboratory (pilot-scale) tests method
    development
  • Field tests emissions and species
  • 3 Combined cycle and cogeneration power plants
    (gas)
  • 1 Diesel engine for backup generator (no
    controls DPF)
  • 1 boiler (gas No. 6 oil)
  • 2 process heaters (gas)

7
Field Tests
Dilution Sampler
Traditional Stack Sampling
  • PRIMARY PM2.5
  • PM2.5 mass (gravimetric)
  • 40 Elements Al-Zn (XRF)
  • OC/EC (TOR)
  • SVOC (PUF/XAD, GC/MS)
  • Ions SO4, NO3-, Cl- (IC) NH4 (colorimetry)
  • Chemically-speciated ultrafine particles (MOUDI)
  • Ultrafine size distribution (SMPS)
  • PM2.5 PRECURSORS
  • SO2, NH3 (impregnated filters, IC, colorimetry)
  • VOCC8 (Tenax, GC/MS)
  • OTHER
  • Carbonyls (sorbent tube, HPLC)
  • VOCC2 (canisters, GC/MS)

stack
PM10, PM2.5, filterable and Condensable
Particulate (cyclones, heated filter, Impinger
train)
NO, NOx, SO2, CO, CO2, O2 (continuous gas
analyzers)
Solid/Condensable Particle size dist. (dual
cascade impactors)
Ammonia (in-stack filter, impingers)
SO3 (controlled condensation)
Ambient Air and Stack
Combustion Sources
8
PM2.5 Mass Gas Combustion
  • In-stack method results dominated by sulfate in
    impingers (SO2 artifact)

Dilution results for gas combustion consistently
1/10 or lower compared to hot filter/iced
impinger method results
9
Speciated PM2.5 Natural Gas
OC accounts for gt90 of PM2.5 mass (measurement
background and artifact?)
10
Speciated PM2.5 Natural Gas
Elements
Most elements except S not significant
11
Summary
  • Developed a compact dilution sampler technology
    for PM2.5 stationary source stack sampling
  • Improved portability, accuracy sensitivity for
    stationary source PM2.5 measurements
  • ASTM standard development in progress
    (D22.03/WI752)
  • Developed new speciated PM2.5 and precursor
    emissions data for power plants and other sources
    (7 field tests)
  • PM2.5 mass from gas-fired sources is much lower
    using dilution sampling than traditional hot
    filter/iced impinger methods
  • Chemical/physical sampling artifacts positively
    bias iced impinger results
  • PM2.5 mass speciation vary with source type
    fuel
  • Carbon sulfate are important components

12
Recommendation
  • Further validation refinement, especially for
    very clean sources
  • Background levels in dilution air probe
    recovery solvent
  • Organic carbon artifacts
  • Relative variability of results

13
Emissions of Polyaromatic Hydrocarbons from
Refinery Heavy Liquid Streams
14
Background
  • Actual PAH Emission Rates not Known
  • Existing Estimation Techniques Likely
    Overestimate, Particularly Heavy Molecular Weight
    PAHs
  • Growing Concerns about PAH Emissions,
    particularly Naphthalene
  • Potentially Large Expense by Industry to Quantify
    PAH Emissions

15
Current Work
  • 2004 Study Evaluated Five Leaks and Two Heavy
    Liquid Types
  • Study Evaluated Volatile Emissions, Liquid
    Deposition, and Stream Composition
  • Study used Conventional Bagging Methodologies to
    Capture Emissions
  • Samples were Collected over an Approximate
    24-Hour Period

16
Preliminary Results
  • Only the Lighter Molecular Weight PAHs Enter the
    Air Pathway
  • Partitioning of Individual PAHs between Vapor and
    Liquid Phase Dependent on Molecular Weight
  • None of the Carcinogenic PAHs Detected in Vapor
    Phase Emissions, All in Liquid Deposited on Valve

17
Next Steps
  • Additional Study Scheduled for Summer 2005
  • Eight More Sources to be Evaluated
  • Additional Heavy Liquid Types
  • Increase Concentration (Method 21) Range of
    Leaking Components to get Better Method 21 vs
    Emission Rate Correlations

18
Development of SO3/SOX Emission Factors for
Gas-Fired Sources FCCUs
19
Background
  • TRI requires H2SO4 emissions reporting for
    refineries, power plants and other sources
  • Future PM2.5 issues
  • Key Refinery Sources
  • Gas combustion (process and natural gas)
  • Fluid Catalytic Cracking Units (FCCUs)
  • Emission factors may be biased
  • No data or validated methods for gas
  • Potential positive bias in Method 8 (SO2 to SO4)
  • Old data/less sensitive methods
  • Need improved SO3/SOX factors for more reliable
    estimates

20
FCCU SO2 to SO3 Conversion
  • FCCUs burn coke to to regenerate catalyst
  • Sulfur and trace elements tend to concentrate in
    the coke
  • Some elements catalyze SO2 to SO3 conversion
  • Literature review shows high SO3 conversions
    (gtgt2-3) for some sources esp. for low
    concentrations

SO2 gt 200 ppm
(Nie et al., Oil Gas Journal, Feb 2004)
21
Objectives
  • Lab Study
  • Evaluate potential SO2 and NH3 bias in EPA Method
    8 and controlled condensation method
  • SO2 conversion to SO4 accelerated by NH3?
  • Field Study
  • Develop SO3/SOX factors for gas combustion and
    FCCU
  • Compare Method 8 and controlled condensation

22
Field Tests
  • Refinery sources
  • 2 gas-fired units
  • FCCU
  • Simultaneous Method 8 and Controlled Condensation
  • Paired sampling trains
  • 1-hour test runs

23
Next Steps
  • Complete lab tests (2Q 2005)
  • Conduct field tests (3Q 2005)
  • Data Analysis (4Q 2005)
  • Report (1Q 2006)

24
MERCURY in U.S. CRUDE OIL
25
PARTICIPANTS
  • U.S. EPA Office of Research and Development
  • David Kirchgessner, Program Manager
  • Mercury Technology Services
  • S. Mark Wilhelm, Project Manager
  • American Petroleum Institute
  • National Petrochemical and Refiners Association

26
OBJECTIVES
  • Determine the mean concentration and range of
    concentrations of mercury in crude oil processed
    in the U.S.
  • Data must be statistically significant
  • Sampling and analysis methods must reflect the
    best science currently available

27
LABORATORIES
  • CEBAM ANALYTICAL (Lian Liang)
  • FRONTIER GEOSCIENCES (Carl Hensman)

28
TECHNICAL APPROACH
  •  Phase 1 Analytical Methods
  • Phase 2 Sampling Methods and Oil Variability
  • Phase 3 Statistical Sampling and Analysis

29
STATUS
  • Approximately 100 market-named oils have been
    sampled and analyzed.
  • Oils come from both domestic and foreign sources.
  • The goal for statistical certainty is
    approximately 200 - 300 oils.
  • Each oil is sampled and analyzed a minimum of 3
    times
  • The presently estimated mean is less than 10 ppb

30
Ozone Health Impacts
31
O3 Airway Inflammation (AI)
  • Goal - Optimize noninvasive AI assay
  • Study Assay AI breath markers, lung
    function-symptoms in responders non-responders
    to 0.35 ppm-hr O3 exposures
  • Anticipated Findings Responders have elevated
    AI (lagged 4 hrs) function-symptom responses
    but non-responders do not

32
AI Biomarker Response
33
Lung Function Response
34
6.6-Hr O3 Chamber Study
  • Goal Alternative O3 standard format
  • Study Assay airway inflammation, lung function,
    symptoms in 30 subjects at variable hourly O3
    levels ventilation for 0.08 ppm average 6-hour
    exposures
  • Anticipated Findings Weighted form of standard
    provides better metric of acute (1-hr) and
    prolonged (8-hr) responses

35
Ambient O3 Monitor Bias
  • Goal Assess design value day bias
  • Study Compare collocated smog chamber
    reference network monitors
  • Findings Monitors susceptible to 20-40 ppb
    positive bias from Hg organics (naphthalene,
    phenols, nitro-aromatics) during hot, stagnant,
    polluted conditions

36
Smog Chamber Response
37
O3 "Delta" (UV-CL) by Collocated FRM/FEM
250
200
150
ppb
3
O
100
50
0
1
13
25
37
49
61
73
85
97
109
121
133
145
157
Hour
38
O3 Rollback Model
  • Goal Improve risk-benefit assessment
  • Study Develop 3-parameter algorithm projecting
    annual hourly O3 time-series at attainment of
    alternative standards
  • Anticipated Finding Currently used 2-parameter
    algorithms overestimate the risks benefits at
    standard compliance

39
PM Health Impacts
40
Fine Particles from Showers
  • Goal Assess aqueous FP emissions
  • Study Assay shower FP (0.3-10 um) mass as
    function of spray flow, splash, temperature, and
    total dissolved solids
  • Findings Mg/m3 levels of PM10 (300 ug/m3 PM2.5)
    accumulate in ventilated (6/hr) bathrooms during
    showering

41
Shower PM Production
42
API Contacts
  • Stationary Source Emissions
  • Karin Ritter (ritterk_at_api.org)
  • NAAQS Health Effects
  • Will Ollison (ollisonw_at_api.org)
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