Transcript Slide 1

Modeling Electricity Prices in
Rhode Island
Jeremey Anderson
Ross Pelletier
Juan Hernandez
Christopher Riely
Table of Contents
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Topic Overview
Research History
Data
Methodology and Model
Results and Elasticity Estimates
Conclusions and Policy Implications
Topic Overview
• Attempt to explain variability in RI spot market
electricity prices by a variety of independent
variables
• Electricity – demand drives price (upward sloping
demand curve) as opposed to most goods where
price drives demand
• De-regulation of electricity markets in 1999
• ISO-NE (Independent Systems Operator)
▫ Independent entity that ensures reliable operation of
New England’s power generation and transmission
system
▫ Oversees fair administration of regions wholesale
electricity markets
Research History
• Econometric analysis of real-time pricing for
residential customers - Aubin et al. (1995)
▫ Experiment by French state-owned electric utility
▫ Six different rates instead of two:
 three types of days, two periods per day (peak and off-peak)
▫ Direct similarities to our model (regression) but more complex
▫ Set of flexible rate periods is more practical than true real-time pricing
▫ Conclusion: real-time pricing improved welfare of majority of customers
(measured by discounted present value of daily electricity expense)
Research History
• Long-Run Effects and Efficiency of RTEP
and Wealth Transfer - Borenstein (2004, 2005)
▫ Cites confusion between economic efficiency gains and wealth transfers
▫ RTP removes subsidies to customers who consume disproportionately
more electricity when prices are highest
▫ Significant efficiency gains even if demand is not very elastic
▫ Benefits of RTP are likely to far outweigh costs for largest customers
▫ “Time of use” rates a poor substitute for RTP (only 20% as efficient)
▫ Implementing RTP may be difficult without sister program
compensating customers made worse off by the change
▫ Suggests two-part programs: baseline quantity at set rates + RTP
Research History
• Important variables explaining real-time price
peak in independent power market of Ontario
- Rueda and Marathe (2005)
▫ Conventional statistical analysis ruled out due to lack of validity
▫ Used alternative technique to select important variables
 a “support vector machines” based learning algorithm
▫ Sensitivity analysis to determine most important variables:
 Pre-dispatch average price peak
 Actual import peak volume
 Peak load of market
 Net available supply after accounting for load (i.e. excess energy)
Research History
• RTP and Electricity Markets – Allcott (2009)
▫ Applied results of residential RTP experiment to simulations using
model of Pennsylvania-New Jersey-Maryland electricity market
▫ Another highly complex model with four central results
 Customer Behavior:
 Energy conservation during peak hours, not a switch from peak to off-peak
 Under certain conditions, RTP could actually increase wholesale electricity
prices during peak hours
 Increased demand elasticity from RTP reduces producers’ market power, but
no spectacular efficiency gains
 Welfare gains from residential RTP likely to outweigh costs of hourly meters
Data
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Hourly time series data
RI Zone
Originally looked at full year period 2008-2010
Due to size of dataset we focused on one year
(December 2009- November 2010) and split data
into 4 quarters to compare similarities/differences
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Winter (December – February)
Spring (March – May)
Summer (June – August)
Fall (September – November)
Data
• Plot below demonstrates unique demand vs.
price relationship
Methodology and Model
• Demand theoretic model
• Preliminary Investigation
▫ Can’t make any final conclusions from results
• Used Ordinary Least Squares
▫ May not be most efficient model for high frequency
time series data due to high presence of
autocorrelation and heteroskedasticity
▫ Non parametric model may be preferable
𝑃𝐸 = 𝛼 + 𝛽𝑋1 + 𝛽𝑋2 + 𝛽𝑋𝑛 + 𝜀
Methodology and Model
• Dependent Variable: Price (PE)
• Potential Independent Variables:
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Real Time Demand
Day Ahead Price
Day Ahead Demand
System Congestion
Temperature
90F+ dummy (hot days)
Time of day dummy (11am – 4pm)
Seasonal dummy (winter/summer)
Price in neighboring zones (CT and SE MASS)
 Created interaction variable; multiplied two values
together to form one and used that in regression
Hypotheses
• H0: The price of electricity is explained by the
demand for electricity
• H1: The price of electricity is explained by the
dry bulb temperature
• H2: The price of electricity is explained by the
time of day
• H3: The price of electricity is explained by the
congestion on the system
Results
• Winter
• Spring
Results
• Summer
• Fall
Results
• F-Test (Overall Model Fit)
▫ All 4 quarters <0.05 (significant); model overall is
good
• Adjusted R2: represents variability in dependent
variable explained by the variability in the
independent variables
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Winter: 93.9%
Spring: 90.4%
Summer: 94.4%
Fall: 88.8%
Multi-Collinearity
• Two or more independent variables are
correlated
• VIF (<10, ideally <=5)
• Average VIF
▫ All 4 quarters <5
• Individual variable VIFs
▫ Demand in summer and fall slightly over 5 but
still <10
▫ All others <5
Autocorrelation
• Correlation between error terms in time series
data
• Two tailed Durbin Watson Test
• All 4 models rejected null hypothesis
▫ Presence of serial/autocorrelation
▫ More advanced model would attempt to correct
for this
Constant Variance
• Whites Test – Tests for constant variance in the
error/residual term
• H0: Error terms are homoscedastic
• Want p-value>0.05 to accept null hypothesis
• All four models produce p-value <0.05
• No constant variance in error terms
Normality
• Displays if error terms are normally distributed
• Winter
• Spring
Normality
• Summer
• Fall
Elasticity Estimates
• Demand: Positive, 0<x<1
▫ Highest during summer, slowly falls to lowest point of 0.08
in spring
• Day Ahead Price: Positive, 0<x<1
▫ No clear pattern between quarters
• Congestion: Negative, -1<x<0
▫ Very small elasticity (inelastic)
• Temperature: Negative, -1<x<0
▫ Negative and small
• Dew Point: Positive, 0<x<1
▫ Positive and small
• Time of Day Dummy: Positive, 0<x<1
▫ Positive and small
• Neighboring Price: Positive, 0<x<1
▫ Positive around 0.2-0.25
Conclusions and Policy Implications
• Modeling electricity prices and demand is difficult
• More advanced analysis would include ability to look over
multiple years of data
▫ Non OLS method
▫ Better correct for autocorrelation and heteroskedasticity
• Demand and Capacity Planning
▫ If/when to build new generation
▫ Most efficient time to take units offline for maintenance
• Demand Response
▫ Ability to model what price would have been absent demand
response and measure value gained by the system vs. payments
made
• Real Time Pricing
▫ Customers can shift or reduce usage according to their price
sensitivity (elasticity)
▫ Incentive to move to off-peak hours
Research Citations
Allcott, Hunt (2009). Real-Time Pricing and Electricity Markets. (unpublished).
Aubin, Christophe, Denis Fougere, Emmanuel Husson, and Mrac Ivaldi (1995). RealTime Pricing of Electricity for Residential Customers: Econometric Analysis of an
Experiment. Journal of Applied Econometrics, 10, S171-S191.
Borenstein, Severin (2004). The Long-Run Effects of Real-Time Electricity Pricing.
University of California Energy Institute, Center for the Study of Energy Markets,
Working Paper 133.
Borenstein, Severin (2005). The Long-Run Efficiency of Real-Time Electricity Pricing.
The Energy Journal, 26(3), 93-116.
Borenstein, Severin (2005). Wealth Transfers from Implementing Real-Time Retail
Electricity Pricing. University of California Energy Institute, Center for the Study of
Energy Markets, Working Paper 147.
Rueda, Ismael E. Arcinieagas and Achla Marathe (2005). Important variables in
explaining real-time peak price in the independent power market of Ontario.
Utilities Policy, 13, 27-39.