How the RPM Meets the Requirements for a Risk Model Michael Schilmoeller Tuesday, February 2, 2011 SAAC.

Slides:



Advertisements
Similar presentations
ENERGY VALUE. Summary  Operational Value is a primary component in the Net Market Value (NMV) calculation used to rank competing resources in the RPS.
Advertisements

Chapter 3 Dynamic Modeling.
Experimental Design, Response Surface Analysis, and Optimization
Robert G. Ethier, Ph.D. Director, Market Monitoring May 5, 2004 ISO New England State of the Market Report 2003.
Designing a Risk Model Michael Schilmoeller Thursday, December 2, 2010 SAAC.
Northwest Power and Conservation Council Effects of Alternative Scenarios on Sixth Power Plan Northwest Power and Conservation Council Whitefish, MT June.
Announcements Be reading Chapter 6, also Chapter 2.4 (Network Equations). HW 5 is 2.38, 6.9, 6.18, 6.30, 6.34, 6.38; do by October 6 but does not need.
The Cost-Effectiveness Premium for Conservation Michael Schilmoeller Thursday May 19, 2011 SAAC.
6 - 1 ©2003 Prentice Hall Business Publishing, Cost Accounting 11/e, Horngren/Datar/Foster Chapter 6 Master Budget and Responsibility Accounting Mar 7,
© 2012 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Lecture 10 Comparison and Evaluation of Alternative System Designs.
Using ranking and DCE data to value health states on the QALY scale using conventional and Bayesian methods Theresa Cain.
Value of Information for Complex Economic Models Jeremy Oakley Department of Probability and Statistics, University of Sheffield. Paper available from.
I/O Curve The IO curve plots fuel input (in MBtu/hr) versus net MW output.
INTEGRATION COST. Integration Cost in RPS Calculator While “Integration Cost” is included in NMV formulation, the Commission stated that the Integration.
Cornerstones of Managerial Accounting, 5e
Greenhouse Gas Emissions Reductions from Wind Energy : Location, Location, Location? Duncan Callaway SNRE & Department of Mechanical Engineering
EE 369 POWER SYSTEM ANALYSIS
Lecture 16 Economic Dispatch Professor Tom Overbye Department of Electrical and Computer Engineering ECE 476 POWER SYSTEM ANALYSIS.
Preliminary Analysis of the SEE Future Infrastructure Development Plan and REM Benefits.
EE 369 POWER SYSTEM ANALYSIS
Least Cost System Operation: Economic Dispatch 1
CHAPTER TWO The Nature of Costs. McGraw-Hill/Irwin © 2003 The McGraw-Hill Companies, Inc., All Rights Reserved. 2-2 Outline of Chapter 2 The Nature of.
ECON 6012 Cost Benefit Analysis Memorial University of Newfoundland
National Renewable Energy Laboratory Innovation for Our Energy Future * NREL July 5, 2011 Tradeoffs and Synergies between CSP and PV at High Grid Penetration.
Physics 114: Lecture 15 Probability Tests & Linear Fitting Dale E. Gary NJIT Physics Department.
SAAC Review Michael Schilmoeller Thursday May 19, 2011 SAAC.
The Economics of Marine Renewable Energy Peter McGregor Fraser of Allander Institute, Department of Economics, University of Strathclyde Second Forum on.
Value at Risk.
Swing Options Structure & Pricing October 2004 Return to Risk Limited website:
©2003 PJM Factors Contributing to Wholesale Electricity Prices Howard J. Haas Market Monitoring Unit November 30, 2006.
Southern Taiwan University Department of Electrical engineering
1 System planning 2013 Lecture L8: Short term planning of hydro systems Chapter Contents: –General about short term planning –General about hydropower.
1 Regional Portfolio Model and Direct Use of Gas Assessment Michael Schilmoeller NW Power and Conservation Council for the Regional Technical Forum Tuesday,
Lecture 12 Statistical Inference (Estimation) Point and Interval estimation By Aziza Munir.
KEC Electricity Committee, March 12, 2008 Benefit Cost Study of the Governor’s 2015 Wind Challenge: 1,000 MW by 2015 Bob Glass KCC Utilities Division,
Base Case Draft – For Comment Rocky Mountain States Sub-Regional Transmission Study December 9, 2003.
SAAC Review Michael Schilmoeller Tuesday February 2, 2011 SAAC.
Copyright © 2008 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin 12 Financial and Cost- Volume-Profit Models.
The Council’s Risk Model and The Requirements of the Act Michael Schilmoeller Thursday, December 2, 2010 SAAC.
Discussion of Resource Plans Michael Schilmoeller for the Northwest Power and Conservation Council Wednesday, June 10, 2009.
Colombian Firm Energy Market: Discussion and Simulation Peter Cramton (joint with Steven Stoft and Jeffrey West) 9 August 2006.
10/4/20021 Systems Analysis Advisory Committee (SAAC) Friday, October 4, 2002 Michael Schilmoeller John Fazio.
Preliminary Results with the Regional Portfolio Model Michael Schilmoeller for the Northwest Power and Conservation Council Generation Resource Advisory.
Introduction to electricity economics1 ECON 4930 Autumn 2007 Electricity Economics Lecture 1 Lecturer: Finn R. Førsund.
Investment Analysis and Portfolio Management First Canadian Edition By Reilly, Brown, Hedges, Chang 6.
The Council’s Regional Portfolio Model Michael Schilmoeller for the Northwest Power and Conservation Council Generation Resource Advisory Committee Thursday,
1 Systems Analysis Advisory Committee (SAAC) Thursday, December 19, 2002 Michael Schilmoeller John Fazio.
© 2012 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
ECE 476 Power System Analysis Lecture 15: Power Flow Sensitivities, Economic Dispatch Prof. Tom Overbye Dept. of Electrical and Computer Engineering University.
Power Association of Northern California Maintaining Grid Reliability In An Uncertain Era May 16, 2011 PG&E Conference Center Jim Mcintosh Director, Executive.
Horizontal Axis Wind Turbine Systems: Optimization Using Genetic Algorithms J. Y. Grandidier, Valorem, 180 Rue du Marechal Leclerc, F B ´ Begles,
The Role of Energy Storage as a Renewable Integration Solution under a 50% RPS Joint California Energy Commission and California Public Utilities Commission.
V Bandi and R Lahdelma 1 Forecasting. V Bandi and R Lahdelma 2 Forecasting? Decision-making deals with future problems -Thus data describing future must.
Uncertainty in the Regional Portfolio Model Michael Schilmoeller for the Northwest Power and Conservation Council Generation Resource Advisory Committee.
Southern California Edison The San Onofre Nuclear Generating Station April 14, 2011.
Lecture 16 Economic Dispatch Professor Tom Overbye Department of Electrical and Computer Engineering ECE 476 POWER SYSTEM ANALYSIS.
The Impact of Intermittent Renewable Energy Sources on Wholesale Electricity Prices Prof. Dr. Felix Müsgens, Thomas Möbius USAEE-Conference Pittsburgh,
DSWG Update to WMS 2/9/2011. EILS Procurement Results from 1/31 Business Hours 1 HE 0900 through 1300, Monday thru Friday except ERCOT Holidays; 425 hours.
Resource Analysis. Objectives of Resource Assessment Discussion The subject of the second part of the analysis is to dig more deeply into some of the.
UNEP Collaborating Centre on Energy and Environment Use and Conceptualization of Power Sector Baselines: Methodology and Case Study from El Salvador Lasse.
Updated Energy Year 2011 Electricity Finnish Energy Industries
Sixth Northwest Conservation & Electric Power Plan Draft Wholesale Power Price Forecasts Maury Galbraith Generating Resource Advisory Committee Meeting.
Diversification of Energy Power Plants in the North of Chile Matías Raby.
Multiscale energy models for designing energy systems with electric vehicles André Pina 16/06/2010.
Estimating the resource adequacy value of demand response in the German electricity market Hamid Aghaie Research Scientist in Energy Economics, AIT Austrian.
Allocation of Support Department Costs, Common Costs, and Revenues
Part 5 - Chapter
LMP calculations Congestion evaluation
Monte Carlo Simulation
Presentation transcript:

How the RPM Meets the Requirements for a Risk Model Michael Schilmoeller Tuesday, February 2, 2011 SAAC

2 Overview Statistical distributions –Estimating hourly cost and generation –Application to limited-energy resources –The price duration curve and the revenue curve Valuation costing An open-system models Unit aggregation Performance and precision

3 Computation

4 Statistical Distributions Alternative strategies for speeding up calculation –More computer processing power Previous presentation raises concerns about the limitations of this approach –Using selected hours of each week A type of statistical sampling –Statistical distributions Origins in older production cost models that used load duration curves Statistical distributions

5 Dispatchable Resources Statistical distributions

6 Estimating Energy Generation Price duration curve (PDC) Statistical distributions

7 Estimating Energy Generation Statistical distributions

8 Estimating Energy Value Statistical distributions Price of fuel p g (h) Set of hours H={h} Price of electricity p e (h)

9 Gross Value of Resources Statistical distributions Then for a turbine with capacity C MW, the value is

10 Gross Value of Resources Statistical distributions

11 Gross Value of Resources Using Statistical Parameters of Distributions Assumes: 1)prices are lognormally distributed 2)1MW capacity 3)No outages V Statistical distributions

12 Estimating Energy Generation Applied to equation (4), this gives us a closed-form evaluation of the capacity factor and energy. Statistical distributions

13 Variable Fuel Price Assume lognormal distribution Include information about price volatility and correlation with electricity price Statistical distributions

14 Implementation in the RPM Distributions represent hourly prices for electricity and fuel over hydro year quarters, on- and off-peak –Sept-Nov, Dec-Feb, Mar-May, June-Aug –Conventional 6x16 definition –Use of “standard months” Easily verified with chronological model Execution time <30 µsecs 56 plants x 80 periods x 2 subperiods Statistical distributions

15 Application of PDC to Energy- Limited Resources Statistical distributions

16 Energy-Limited Dispatch Statistical distributions

17 Energy-Limited Dispatch Statistical distributions

18 Energy-Limited Dispatch If p g * > p g then use energy and value associated with p g * Otherwise, use energy and value associated with p g Statistical distributions

19 Application of Revenue Curve Equilibrium Prices Statistical distributions Source: page 5, Figure 3, Q:\MS\Markets and Prices\Market Price Theory MJS\Price Relationships in Equilibrium2.doc

20 Overview Statistical distributions –Estimating hourly cost and generation –Application to limited-energy resources –The price duration curve and the revenue curve Valuation costing An open-system models Unit aggregation Performance and precision

21 Challenges Using Distributions Complications arise when we use extended time periods price Loads (solid) & resources (grayed) Valuation Costing

22 Average loads and resources are the same, but in the first case, our system has net cost and in the second it has net benefit. Challenges Using Distributions Valuation Costing

23 Traditional Costing Hourly variable cost calculation: Valuation Costing

24 Traditional Costing N*(N+1)/2 correlations (upper triangular matrix) Valuation Costing

25 Traditional Costing Valuation Costing

26 “Valuation” Costing Only correlations are now those with the market Valuation Costing

27 Valuation Costing Solves the correlation problem by decoupling fuel price variation We get the value term for dispatchable resources from the earlier calculation ( V ) For wind and most renewables, the resource is non-patchable and correlation is fixed (we typically assume zero), which makes an easy calculation For the p m Q term, hourly correlation of prices and load is important Valuation Costing

28 Overview Statistical distributions –Estimating hourly cost and generation –Application to limited-energy resources –The price duration curve and the revenue curve Valuation costing An open-system models Unit aggregation Performance and precision

29 Closed-System Models Open-System Models

30 Open-System Models

31 Modeling Evolution Problems with open-system production cost models –valuing imports and exports –desire to understand the implications of events outside the “bubble” As computers became more powerful and less expensive, closed-system hourly models became more popular –better representation of operational costs and constraints (start-up, ramps, etc.) –more intuitive Open-System Models

32 Open Systems Models The treatment of the Region as an island seems like a throw-back –We give up insight into how events and circumstances outside the region affect us –We give up some dynamic feedback Open systems models, however, assist us to isolate the costs and risks of participant we call the “regional ratepayer” Any risk model must be an open-system model Open-System Models

33 Relationship of electricity price to fuel price fuel price dispatch price energy generation energy require- ments market price for electricity Only one electricity price balances requirements and generation In a closed model, there are no imports or exports (Hourly) electricity price is entirely determined by the value of other variables, such as fuel price Open-System Models

34 Closed-system models A closed system has by definition certain “constant” relationships, a preserved quantity such as energy Introducing uncertainty means introducing additional variables ε i for error or uncertain variation Doing so creates an “over-specified” system which generally has no solution Open-System Models

35 Closed-system models Consequently, when we introduce uncertainty into systems that are closed with respect to electrical energy, we are actually creating an open-system model with respect to total energy, and There is a equal and opposite response among the variables we elect to make dependent, and There is a “perfect correlation” among our “sources of uncertainty,” with unknown consequences. (CCCTs are always marginal.) Open-System Models

36 The New Open-System Model fuel price +ε i dispatch price energy generation energy require- ments market price +ε i for electricity Only one electricity price balances requirements and generation If fuel price is the only “independent” variable, the assumed source of uncertainty, electricity price will move in perfect correlation That is, outside influences drive the results We are back to an open system Open-System Models

37 The RPM Convention Respect the first law of thermodynamics: energy generated and used must balance The link to the outside world is import and export to areas outside the region Import (export) is the “free variable” that permits the system to balance generation and accommodate all sources of uncertainty We assure balance by controlling generation through electricity price. The model finds a suitable price by iteration. Open-System Models

38 Equilibrium search Open-System Models

39 Overview Statistical distributions –Estimating hourly cost and generation –Application to limited-energy resources –The price duration curve and the revenue curve Valuation costing An open-system models Unit aggregation Performance and precision

40 Unit Aggregation Forty-three dispatchable regional gas-fired generation units are aggregated by heat rate and variable operation cost The following illustration assumes $4.00/MMBTU gas price for scaling Source: C:\Backups\Plan 6\Studies\Data Development\Resources\Existing Non-Hydro\ Update\Cluster_Chart_100528_ xls Unit Aggregation

41 Cluster Analysis Source: C:\Backups\Plan 6\Studies\Data Development\Resources\Existing Non-Hydro\ Update\R Agnes cluster analysis\Cluster Analysis on units.doc Unit Aggregation

42 Overview Statistical distributions –Estimating hourly cost and generation –Application to limited-energy resources –The price duration curve and the revenue curve Valuation costing An open-system models Unit aggregation Performance and precision

43 Performance The RPM performs a 20-year simulation of one plan under one future in 0.4 seconds A server and nine worker computers provide “trivially parallel” processing on bundles of futures. A master unit summarizes and hosts the optimizer. The distributed computation system completes simulations for one plan under the 750 futures in 30 seconds Results for 3500 plans require about 29 hours Performance and Precision

44 Repeatability Over Futures Source: C:\Backups\Olivia\SAAC 2010\ SAAC First Meeting\Presentation materials\Reproducibility restored for illustration xls Performance and Precision

45 Precision Source: from Schilmoeller, Michael, Monday, December 14, :01 PM, to Power Planning Division, based on Q:\SixthPlan\AdminRecord\t6 Regional Portfolio Model\L812\Analysis of Optimization Run_L812.xls Performance and Precision

46 Model Resolution: At Least $10 million NPV Typically, plans have over 70 of the 75 high-cost futures in common The model results then come to resemble sensitivity analyses, rather than statistical sampling Of course, we could not have anticipated this beforehand The most interesting results occur when the high-cost futures differ Performance and Precision

47 End