Dispersion Modeling A Brief Introduction A Brief Introduction Image from Univ. of Waterloo Environmental Sciences Marti Blad.

Slides:



Advertisements
Similar presentations
Phoenics User Conference on CFD May 2004 Vipac Engineers & Scientists Ltd COMPUTATIONAL FLUID DYNAMICS Simulation of Turbulent Flows and Pollutant Dispersion.
Advertisements

FE Review for Environmental Engineering Problems, problems, problems Presented by L.R. Chevalier, Ph.D., P.E. Department of Civil and Environmental Engineering.
Experiments and Variables
Introduction to SCREEN3 smokestacks image from Univ. of Waterloo Environmental Sciences Marti Blad NAU College of Engineering and Technology.
Introduction to SCREEN3 smokestacks image from Univ. of Waterloo Environmental Sciences Marti Blad.
Meteorological Data Issues for Class II Increment Analysis.
2. Dispersion We’re going to move on to the second major step in doing dose assessment.
Transport of Air Pollutants
Module 9 Atmospheric Stability Photochemistry Dispersion Modeling.
Chapter 1 Ways of Seeing. Ways of Seeing the Atmosphere The behavior of the atmosphere is very complex. Different ways of displaying the characteristics.
1 AirWare : R elease R5.3 beta AERMOD/AERMET DDr. Kurt Fedra Environmental Software & Services GmbH A-2352 Gumpoldskirchen AUSTRIA
Toxic Release and Dispersion Models
CHAPTER 6 Statistical Analysis of Experimental Data
Introduction to the ISC Model Marti Blad NAU College of Engineering.
Derivation of the Gaussian plume model Distribution of pollutant concentration c in the flow field (velocity vector u ≡ u x, u y, u z ) in PBL can be generally.
CHAPTER 6 Statistical Analysis of Experimental Data
Calculation of wildfire Plume Rise Bo Yan School of Earth and Atmospheric Sciences Georgia Institute of Technology.
8 th Conference on Air Quality Modeling – A&WMA AB3 Comments on Nonstandard Modeling Approaches By Ron Petersen, CPP Inc Blue Spruce Drive Fort Collins.
Radionuclide dispersion modelling
V. Rouillard  Introduction to measurement and statistical analysis ASSESSING EXPERIMENTAL DATA : ERRORS Remember: no measurement is perfect – errors.
Air Quality Modeling.
Air Quality Modeling Dr. Wesam Al Madhoun 8/30/20151.
Session 1, Unit 1 Course Overview. Introduction Course – ENV 7335 Air Quality Modeling Instructor – Yousheng Zeng, Ph.D., P.E. Prerequisite – ENV 7331.
Environmental Modeling Steven I. Gordon Ohio Supercomputer Center June, 2004.
CHAPTER 5 Concentration Models: Diffusion Model.
Session 4, Unit 7 Plume Rise
AMBIENT AIR CONCENTRATION MODELING Types of Pollutant Sources Point Sources e.g., stacks or vents Area Sources e.g., landfills, ponds, storage piles Volume.
Dispersion of Air Pollutants The dispersion of air pollutants is primarily determined by atmospheric conditions. If conditions are superadiabatic a great.
BsysE595 Lecture Basic modeling approaches for engineering systems – Summary and Review Shulin Chen January 10, 2013.
Earth System Sciences, LLC Suggested Analyses of WRAP Drilling Rig Databases Doug Blewitt, CCM 1.
Cases 1 through 10 above all depend on the specification of a value for the eddy diffusivity, K j. In general, K j changes with position, time, wind velocity,
Air Dispersion Primer Deposition begins when material reaches the ground Material from the lower stack reaches the ground before that of the taller stack.
Ashok Kumar Kanwar Siddharth Bhardwaj Abhilash Vijayan
Understanding the USEPA’s AERMOD Modeling System for Environmental Managers Ashok Kumar Abhilash Vijayan Kanwar Siddharth Bhardwaj University of Toledo.
Quality by Design (QbD) Myth : An expensive development tool ! Fact : A tool that makes product development and commercial scale manufacturing simple !
Understanding the USEPA’s AERMOD Modeling System for Environmental Managers Ashok Kumar University of Toledo Introduction.
Meteorology & Air Pollution Dr. Wesam Al Madhoun.
Building Aware Flow and T&D Modeling Sensor Data Fusion NCAR/RAL March
4. Atmospheric chemical transport models 4.1 Introduction 4.2 Box model 4.3 Three dimensional atmospheric chemical transport model.
11/17/ Air Quality Modeling Overview of AQ Models Gaussian Dispersion Model Chemical Mass Balance (CMB) Models.
Session 3, Unit 5 Dispersion Modeling. The Box Model Description and assumption Box model For line source with line strength of Q L Example.
Prof. Jiakuan Yang Huazhong University of Science and Technology Air Pollution Control Engineering.
1 Atmospheric Dispersion (AD) Seinfeld & Pandis: Atmospheric Chemistry and Physics Nov 29, 2007 Matus Martini.
LECTURE 3: ANALYSIS OF EXPERIMENTAL DATA
Introduction to Modeling – Part II Marti Blad Northern Arizona University College of Engineering & Technology Dept. of Civil & Environmental Engineering.
Regional Modeling Joseph Cassmassi South Coast Air Quality Management District USA.
Introduction to Modeling – Part II
Model Evaluation and Assessment ALBERT EINSTEINALBERT EINSTEIN: Things should be made as simple as possible, but not any simpler. Theodore A. Haigh Confederated.
Air quality models DETERMINISTIC MODELS EULERIAN MODELS
Tracers for Flow and Mass Transport
Yanjmaa Jutmaan  Department of Applied mathematics Some mathematical models related to physics and biology.
Lagrangian particle models are three-dimensional models for the simulation of airborne pollutant dispersion, able to account for flow and turbulence space-time.
Types of Models Marti Blad Northern Arizona University College of Engineering & Technology.
Consequence Analysis 2.2.
Meteorology for modeling AP Marti Blad PhD PE. Meteorology Study of Earth’s atmosphere Weather science Climatology and study of weather patterns Study.
Air Pollution Meteorology Ñ Atmospheric thermodynamics Ñ Atmospheric stability Ñ Boundary layer development Ñ Effect of meteorology on plume dispersion.
© GexCon AS JIP Meeting, May 2011, Bergen, Norway 1 Ichard M. 1, Hansen O.R. 1, Middha P. 1 and Willoughby D. 2 1 GexCon AS 2 HSL.
Intro to Modeling – Terms & concepts Marti Blad, Ph.D., P.E. ITEP
NPS Source Attribution Modeling Deterministic Models Dispersion or deterministic models Receptor Models Analysis of Spatial & Temporal Patterns Back Trajectory.
Statistical Analysis for Air Quality Management Prof. Shin’ichi Okamoto Tokyo University of Information Sciences 9:30-10:10, 4 march, 2008.
Regulatory background How these standards could impact the permitting process How is compliance with the standards assessed.
7. Air Quality Modeling Laboratory: individual processes Field: system observations Numerical Models: Enable description of complex, interacting, often.
Types of Models Marti Blad PhD PE
Suggested Analyses of WRAP Drilling Rig Databases
Models of atmospheric chemistry
PURPOSE OF AIR QUALITY MODELING Policy Analysis
Introduction to Modeling – Part II
Meteorology & Air Pollution Dr. Wesam Al Madhoun
Wind Velocity One of the effects of wind speed is to dilute continuously released pollutants at the point of emission. Whether a source is at the surface.
Dispersion Models Dispersion of pollutants in the atmosphere Models
Presentation transcript:

Dispersion Modeling A Brief Introduction A Brief Introduction Image from Univ. of Waterloo Environmental Sciences Marti Blad

2 Transport of Air Pollution  Plumes tell story  Ambient vs DALR  Models predict air pollution concentrations  Input knowledge of sources and meteorology  Chemical reactions may need to be addressed

3 Outline  Transport phenomena review  Why use dispersion models?  Many different types of models  Limitations & assumptions  Math & science behind models  Gaussian dispersion models  Screen3 model information

4 Momentum, Heat & Mass Transport  Advection  Movement by flow (wind)  Convection  Movement by heat  Heat island  Radiation  Diffusion  Movement from high to low concentration  Dispersion  Tortuous path, spreading out because goes around obstacles

5 Diffusion & dispersion

6 Why Use Dispersion Models?  Predict impact from proposed and/or existing development  NSR- new source review  PSD- prevention of significant deterioration  Assess air quality monitoring data  Monitor location  Assess air quality standards or guidelines  Compliance and regulatory  Evaluate AP control strategies  Look for change after implementation

7 Why Use Dispersion Models?  Evaluate receptor exposure  Monitoring network design  Review data  Peak locations  Spatial patterns  Model Verification image from collection of Pittsburgh Photographic Library, Carnegie Library of Pittsburgh

8 Types of Models  Gaussian Plume  Mathematical approximation of dispersion  Numerical Grid Models  Transport & diffusional flow fields  Stochastic  Statistical or probability based  Empirical  Based on experimental or field data  Physical  Flow visualization in wind tunnels, scale models,etc.

9 Limitations & Assumptions  Useful tools: right model for your needs  Allows quantification of air quality problem  Space – different distances, scale  Time – different time scales  Steady state conditions?  Understand limitations  Mathematics-different types  Chemistry-reactive or non-reactive  Meteorology-Climatology

10 Recall Data Distribution  Linear: y = mx + b  Equation of a line  Polynomial: y = x 2 + 3x  Curved lines  Draw shape  Poisson; exponential, saturation  In natural populations  Draw shapes  Gaussian (Bell or Normal Curve)

11 Normal Distribution  Gaussian Distribution  Normal or Bell shaped curve  Assumes measurement varies randomly  Commonly characteristic of data error  Mean= Average = center of “bell”  Mu = μ  Std. Dev. = variation from average  Precision or spread  Sigma = σ  Skew = bias  Describes curve or point(s)  Equipment calibration

Normal Curve Sample Mean = 20, Std Dev = 5 Area =.05 on each side is 

13 Different Sigma: watch scale

14 The Gaussian Plume Model  The mathematical shape of the curve is similar to that of Gaussian curve hence the model is called by that name.

15 Gaussian-Based Dispersion Models  Plume dispersion in lateral & horizontal planes characterized by a Gaussian distribution  Picture  Pollutant concentrations predicted are estimations  Uncertainty of input data values  approximations used in the mathematics  intrinsic variability of dispersion process

z hh h H x y   h = plume rise h = stack height H = effective stack height H = h +  h C(x,y,z) Downwind at (x,y,z)? Gaussian Dispersion

Gaussian Dispersion Concentration Solution

18 Gaussian Plume Dispersion  One approach: assume each individual plume behaves in Gaussian manner  Results in concentration profile with bell-shaped curve

19 Is this clear?  Time averaged concentration profiles about plume centerline  Recall limitations  Normal Distribution is used to describe random processes  Recall bell shaped curves in 3-D  Maximum concentration occurs at the center of the plume  See up coming model pictures  Dispersion is in 3 directions

20 Graphic Gaussian Dispersion  Gaussian behavior extends in 3 dimensions

21 Simple Gaussian Model Assumptions  Continuous constant pollutant emissions  Conservation of mass in atmosphere  No reactions occurring between pollutants  When pollutants hit ground: reflected, or absorbed  Steady-state meteorological conditions  Short term assumption  Concentration profiles are represented by Gaussian distribution—bell curve shape

22 What is a Dispersion Model?  Repetitious solution of dispersion equations  Computer solves over and over again  Compare and contrast different conditions  Based on principles of transport  Complex mathematical equations  Previously discussed meteorological conditions  Computer-aided simulation of atmosphere based on inputs  Best models need good quality and site specific data

23 Computer Model Structure INPUT DATA: Operator experience METEROLOGY EMISSIONS RECEPTORS Model Output: Estimates of Concentrations at Receptors Model does calculations

24 Models allow multiple mechanisms Models describe this situation mathematically

25 Screen 3 model  Understand spatial and temporal relationships  One hour concentration estimates  Caveat in program  Meteorology  Source type and specific information  Point, flare, area and volume  Receptor distance  Discrete vs automated  Receptor height

26 Meteorological Inputs  Actual pattern of dispersion depends on atmospheric conditions prevailing during the release  Appropriate meteorological conditions  Wind rose  Speed and direction  Stability class  Mixing Height  Appropriate time period

Point Source  Source emission data  Pollutant emission data  Rate or emission factors  Stack or source specific data  Temperature in stack  Velocity out of stack  Building dimensions  Building location  Release Height  Terrain  More complex scenarios 27

28 Model Inputs Effect Outputs  Height of plume rise calculated  Momentum and buoyancy  Can significantly alter dispersion & location of downwind maximum ground-level concentration  Effects of nearby buildings estimated  Downwash wake effects  Can significantly alter dispersion & location of downwind max. ground-level concentration

29 Buoyancy =Plume rise

30 Different Stack Scenarios

31 Conceptual Effect of Buildings

Spatial Relationships 32

33 Review  Transport Phenomena  Meteorology and climatology  Add convection, pressure changes  Gaussian = even spreading directions  Highest along axis  Not as scary as sounds  Input data quality critical to model quality  Screen 3 limitation for reactive chemicals  No reactions assumed to create or destroy  Create picture for Screen3 word problems

34 Screen3: Area Source 1 st  Emission rate  Area  Longest side, shortest side  Release height  Terrain  Simple Flat  Reflection and absorption  Distances  Discrete vs automated  Receptor height