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Title: Challenges in Capital Adequacy UH-GEMI 3rd Annual Energy


1
Challenges in Capital AdequacyUH-GEMI 3rd Annual
Energy Trading Marketing Conference Rebuilding
the BusinessHouston, TexasJanuary 20, 2005
  • Laurie Brooks
  • VP Risk Management and Chief Risk Officer
  • Public Service Enterprise Group

UNIVERSITY of HOUSTON Global Energy Management
Institute
2
Capital Adequacy and Capital AllocationConnected?
  • Capital Adequacy
  • How much capital is required to achieve the
    companys stated goals and objectives?
  • Capital Allocation
  • How should corporations allocate capital between
    competing demands?

3
Capital Adequacy for Energy Transactors
  1.  Capital for what?         Business models
regulated utilities, merchant generators,  marketi
ng and trading entities         Economic capital
vs liquidity adequacy                 Banking
models                 SP liquidity survey
Measures - EaR vs CFaR, role of stress
testing, market risk vs credit risk trade-offs,
role of ECE and PFE 2.    Why energy is
different - impact of following on margin/cash
requirements                  volatilities       
           sector ratings      
storability                  regulatory
intervention                  age and depth of
markets                  contract terms
                 risk  mgt tool
availability  3.    Capital how?         Access
to capital markets         Diversification of
cash flows         Credit mitigations             
    role of netting and clearing                
stair stepped margining agts.  
4
Capital Use by Activity
5
Market Risk Trading vs. Non-Trading Activities
Non-Trading
Trading
  • Positions to facilitate marketing
  • Proprietary trading positions
  • Positions generated by asset/customer business
  • Strategic buy and hold hedges

Purpose
  • Illiquid or buy and hold positions
  • Holding period measured in months/years
  • Liquid, actively funded positions across many
    markets
  • Holding period measured in days/weeks

Liquidity
  • Asset/customer-driven embedded options
  • Long holding period makes non-linearity material
  • Price-driven exchange traded or OTC options
  • Short holding period allows linear approximations

Optionality
  • Long-term volatilities and correlation
  • Mean reversion, seasonality simulation, Earnings
    at Risk
  • Short-term volatilities and correlation
  • Jump diffusion, intra-day VaR analytical,
    simulation

Valuation
Risk Management/ Intervention
  • Structured solutions, contract renegotiations,
    asset sales and purchases
  • Management of regulatory process
  • VaR limit reduction, stop loss limits, hedging
    with traded instruments

6
Key Concepts of Capital Adequacy Three Risk Types
The framework for determining capital adequacy
for economic value requires an estimation of
economic capital and thus quantifying the
following significant risks
  • Market Risk - Variation of portfolio market value
    due to a change in a market price or rate, as
    well as a change in energy demand
  • Credit Risk - Variation of portfolio market value
    due to default or a credit downgrade of an issuer
    or counterparty
  • Operative Risk (term to address Operations and
    Operational risk collectively)
  • Operations - The risk associated with delivering
    or producing physical energy
  • Operational - The risk of direct or indirect loss
    resulting from inadequate or failed internal
    processes, people, and systems or from external
    events

7
Key Concepts of Economic Capital Adequacy Market
Risk
Modeling Approaches
Price Behavior Process
Market Exposures
Pros/Cons
Comments
Analytical
Closed-form approach for modeling price movements
Works well for linear type exposures
  • Pros
  • Simple and fast
  • Easy to change as assumptions change
  • Cons
  • Does not capture optionality well
  • Minimal ability to model complexities over a
    longer period of time
  • Works well for determining shorter-term price
    moves for a trading portfolio
  • Can be used as a quick metric to help manage
    portfolio positions

Simulation
Robust methodology for mean reversion, jumps,
linking, spot, and forward prices
Full revaluation at each price iteration better
approximates nonlinearity of asset/option
positions
  • Pros
  • Robust
  • Captures optionality
  • Provides a full distribution of outcomes
  • Cons
  • Complex to construct the simulation model
  • Only as good as model input parameters
  • For historical simulation, values are constrained
    to conform to history which may be irrelevant due
    to market, economic, or regulatory changes
  • As the time horizon is extended and the need to
    model certain energy price characteristics
    increases, simulation becomes a more suitable
    solution. Meanwhile, the technical difficulties
    increase and the model needs to be modified to
    fit the long-term simulation purpose.

8
Key Concepts of Economic Capital Adequacy Credit
Risk
  • Expected Loss
  • Represents the average loss that a company could
    expect to incur over a given horizon
  • Unexpected Loss
  • Measures the uncertainty of losses around the
    expected loss

9
Key Concepts of Economic Capital Adequacy
Operative Risk Scorecard
CA Framework Key Concepts
  • Scorecard Approach
  • Can be used for operations and operational risk
    to identify risks, determine frequency and range
    of costs, and assesses the effectiveness of
    controls and mitigation techniques in place. It
    is subjective, but now that the SEC has mandated
    the COSO framework for Sarbanes Oxley 404
    compliance, standards will be set. In particular,
    the Capability Maturity Model can be adapted to
    set standards for a scorecard approach and is
    already used by many audit firms. Additionally, a
    company may want to use CCRO Best Practices from
    earlier white papers as a qualitative assessment
    of where companies stand with regard to CCRO
    recommendations.
  • Regardless of the scorecard criteria used, a
    scorecard approach can form the basis for
    continuous improvement processes for internal
    controls to mitigate operative risk. It can also
    reflect improvement in the risk-control
    environment in reducing the severity and
    frequency of future losses.

10
Key Concepts of Economic Capital
AdequacyOperative Risk Risk Taxonomy
CA Framework Key Concepts
  • The risk taxonomy is a system for organizing
    types of operative risks by serving as a family
    tree, aggregating risks by various
    characteristics. The level of aggregation at
    which each characteristic presents itself may be
    determined individually.
  • There is no standardized risk taxonomy, but
    certain characteristics should be used to create
    the groupings
  • Risk classes (people, processes, systems, asset
    damages) the broadest classes of risks
  • Subcategories could include whether the risk is
    internal or external, a type of fraud, or a
    natural disaster
  • Risk activity examples specific activities or
    events that could cause a loss, such as rogue
    trading, hurricane, model risk, or pipeline
    rupture.

11
Key Concepts of Liquidity Adequacy
  • Fixed Payments - This would include, but is not
    limited to fixed charges such as debt service,
    dividends, debt/equity retirement and current
    portion of committed, maintenance and
    non-discretionary capital expenditures.
  • Contingent Liquidity Contingent liquidity is
    synonymous with unexpected change or variation in
    liquidity. While economic capital protects
    against losses in the companys economic value,
    contingent liquidity is held to support the risk
    of unexpected reduction in cash. Includes
  • Cash Flow at Risk
  • Trigger events
  • Downgrade event
  • Loss of threshold
  • Adequate assurance
  • Debt/equity trigger
  • Contingency events
  • Operational/Operations Risk
  • Credit/counterparty termination default

12
Key Concepts Combined Capital
CA Framework Key Concepts
Methodology
Description
Advantages
Disadvantages
Assumption
Simple Sum
Derive economic capital for credit, market, and
operative risk, then sum them
  • Easy to implement
  • Most conservative view of risk
  • Overestimates risk
  • Results in the lowest level of capital adequacy

Correlation assumed to be perfect among risk
components
Modern Portfolio Theory
From historical data, determine an explicit
correlation among credit, market, and operative
risk economic capital
Attempts to represent the actual correlation
among risks, rather than a conservative assumption
Requires a time series of credit, market, and
operative risk economic capital that is
reasonably robust
Assumes that some risks are uncorrelated,
allowing for lower risk and improved capital
adequacy
Monte Carlo Simulation
Using consistent parameters, simulate risk
factors to produce a joint distribution of
outcomes
The most robust perspective of risks and their
interaction if modeled correctly
  • Requires a large amount of research, analytical,
    and technical resources
  • Ensuring assumptions are correct is critical

Material risk inputs can be parameterized
accurately
13
Key Concepts Correlation Math Refresher
CA Framework Key Concepts
  • In a two asset portfolio with equal investment in
    assets A and B, the VaR of the portfolio (at 95
    confidence) VaRAB 1.65 ?AB where ?AB is the
    standard deviation of returns of the portfolio
  • where ?AB is the correlation between AB
    (do the returns move together?)
  • Remember (ab)2 a22abb2 and
  • Then if ?AB 1
  • So Portfolio VaR VaRA VaRB!
  • If ?AB0, (Square root sum of squares)
  • The truth 0 lt ?AB lt 1 lies somewhere in between
    and
  • lt ?AB lt ?A?B
  • Square root sum of squares Simple Sum

14
The Risk Management team at PSEG demonstrated the
CCROs framework using a sample asset portfolio.

Example
  • This example illustrates how the CCRO framework
    can be used in practice
  • We will walk you through the following
    implementation steps
  • Portfolio setup
  • Methodology
  • Pre-simulation
  • Simulation
  • Results
  • We will also discuss some of the firm and systems
    resources required

Please refer to pages 61-67 of the white paper
for a full description of the example.
15
We chose to model the asset-level impacts over a
year of different risks on a company over time.
Example Setup
  • We modeled market, credit and operative risks
    jointly in one simulation versus separately
  • Felt there was better intuition and that we could
    better justify a choice of the assumptions
  • Calculation process seemed clear based on this
    approach
  • Used a 1-year holding period and ran 5,000 trials
    with a 95 CI
  • We modeled a five-year time horizon, with price
    changes modeled as follows
  • Year 1 spot
  • Year 2-5 forward prices
  • We chose a variety of assets and parameters.
  • Three different generating assets and fuel types
  • Assets are in three different pools

Generating Plant
Power Pool
Capacity
VOM
Heat Rate
Fuel Type
Book Value
Gas-fired combined cycle
ECAR
850
3.98
7.25
Natural Gas
510,448,931
Coal-fired, base load
NEPool
375
2.51
10.3
Coal
49,720,351
Jet kero-fired peaking
PJM
500
34.48
15.7
Jet Kero
11,094,684
16
Market Risk Calculations
Example Setup
  • Unhedged market risk
  • Minimum (realized generation over 12 months)
    (Expected generation value of the remaining
    term) (Initial expected value of the
    generation)
  • Hedged market risk
  • (Unhedged market risk) (Realized and unrealized
    trading profit or loss)

17
Credit Risk Calculations
Example Setup
Counterparty
Rating
1-Year Probability of Default
Commodity
Counterparty A
CCC
27.87
Fuel coal, natural gas, jet kero
Counterparty B
BBB
0.34
Power NEPool, PJM, Cinergy
Counterparty C
BB
1.16
Fuel and power
  • Calculated as the sum of credit loss across the
    twelve months of simulations, as a function of
    counterparty risk and power pool risk
  • The company has three counterparties
  • Counterparty A is used for fuel procurement
  • Counterparty B is used for power sales
  • Counterparty C is used for speculative trading.
  • The recovery rate is assumed to be 10.
  • Each power pool has collateral requirements that
    are a function of the companys credit rating,
    tangible net worth and activity in the pool
  • Value is calculated under two potential ratings,
    BBB (credit limit 80,000,000) and BB (credit
    limit 4,000,000)

18
Operative Risk Calculations
Example Setup
  • Operations loss
  • Sum of lost profit from plants not running at
    full capacity
  • Operational loss (if applicable)
  • Hidden trade on the books whose value is set to
    the largest negative value of all the trading
    positions on the book.

19
Liquidity calculations
Example Setup
Liquidity risk is defined as the minimum cash
flow point in a simulation.
  • Prior month realized P/L (retained earnings)
  • Current month generation P/L
  • Collateral posted
  • Accounts receivable
  • Accounts payable
  • Full margin on mark-to-market
  • Credit loss
  • Operations loss
  • Operational loss

Monthly cash flow
20
Hedging affects liquidity in offsetting ways.
Example Setup
  • Liquidity risk is increased by hedging in the
    following ways
  • Creates cash outflows due to full margining on
    mark-to-market
  • Creates the possibility of credit loss
  • Liquidity risk is decreased by hedging in the
    following ways
  • Decreases the amount of cash needed to be posted
    to power pools since that is determined by net
    activity.
  • Decreases the distribution of realized P/L from
    generation

The net effect of hedging was a decrease in the
liquidity risk.
21
Three key methodology choices drive our model
Example Methodology
Method
Pros
Cons
Joint simulation of credit, market, and operative
risks (versus assumed correlations)
  • Consistency
  • More data available to check micro relationships
    rather than portfolio relationship
  • Can change micro assumption and rerun
  • Are not assuming answer
  • Increases memory need and computer time
  • Necessitates more simplifying assumptions,
    leading to less accurate estimates of component
    risks

Risk modeling
Correlated Brownian Motion for Energy Forward
Prices
  • Most practical method with 3 power pools and 3
    types of fuel for 5 years
  • Would be difficult to jointly calibrate more
    complex model for diversity and tenure of
    portfolio
  • Easier to believe for forward prices rather than
    spot prices still oversimplifies reality
  • Probably overstates volatility for longer-dated
    contracts

Energy forward prices
Daily power prices are normally distributed with
mean equal to forward price and standard
deviation equal to historical daily spot standard
deviation
  • Allows for analytical determination of MWs of
    generation and generation value
  • No need to do daily simulation
  • Ignores operating constraints on plants
  • Splitting monthly prices into two normal
    distributions (normal and extreme days) captures
    peaking value more accurately
  • Does not allow for fuels to vary by day

Daily power prices
22
Pre-Simulation prior to running our simulations,
we calculated a number of initial values.
Example Pre-Simulation
Pre-Simulation Calculations
  • Initial expected value of the assets
  • Calculated based on the current forward prices
    for fuels and power
  • Expected fuel purchases and expected output to be
    sold to counterparties
  • Calculated based on current forward prices
  • Randomly-generated positions in power and fuels
  • Constrained to be a quarter of the size of
    outright positions
  • Used to simulate a speculative trading operation

23
Simulation we generated the inputs to credit and
operational performance.
Example Simulation
Correlated
Market risk simulation
Generation model
forward prices
Market risk
- power
Marginal cost
of fuel (VOM
Correlated
heat rate)
forward
prices - fuel
MTM - A/R -
A/P on trading
Credit excess/loss
contracts
Credit risk simulation
Probability
of default
Operational profit/loss
Probability
of outage
Operative risk simulation
Probability of trader misconduct
60 product months x 6 products x 12 monthly
steps of random standard normal pulls 7 risks
x 12 monthly steps of uniform random variables
pulled
24
Results Unhedged vs. Hedged Assets
Example Results
By hedging assets, market risk is reduced by less
than the additional economic capital required for
credit risk, increasing economic capital adequacy.

Note the simulation was also run with all
counterparties set at BBB to reflect the average
rating of many portfolios. The credit risk
remained at zero with a 95 confidence level,
while market risk was reduced from 23 million to
6 million.
25
Results Portfolio Effect
Example Results
Illustration of the mathematical factEC? 0
(square root sum of squares) lt EC lt ? lt 1 (Monte
Carlo simulation) lt EC?1 (simple sum)
Available vs. Required Capital
Sq. Root
Monte Carlo
( millions)
Sum of Squares
Simulation
Simple Sum
By analyzing capital requirements for unhedged
assets as part of a portfolio vs. individually,
the example illustrates how diversification
reduces the economic capital required for market
and operative risks.
Net Assets - Debt
285.6
285.6
285.6
Required Economical Capital
Market Risk
22.5
22.5
22.5
Credit Risk
0.0
0.0
0.0
Operative Risk
23.2
23.2
23.2
Diversification Effect - Across Risks
-13.4
-11.8
0.0
Total Required Economic Capital
32.3
33.9
45.7
Economic Capital Adequacy
253.3
251.7
239.9
Diversified
Available vs. Required Capital
Combined-
Total Individual
Component
( millions)
Disclaimer the closeness of the Monte Carlo (MC)
and Square Root Sum of Squares is not
representative. In general, one shouldnt assume
that SRSS is a good proxy for MC.
Coal
Cycle
Peaking
Assets
Total Portfolio
Risk
Net Assets
49.7
510.4
11.1
571.3
571.3
Debt
24.9
255.2
5.5
285.6
285.6
Required Economical Capital
Market Risk
7.0
27.6
3.5
38.1
22.5
-15.7
Credit Risk
0.0
0.0
0.0
0.0
0.0
0.0
Operative Risk
22.3
3.4
2.3
27.9
23.2
-4.7
Diversification Effect - Across Risks
-11.1
-2.9
-1.6
-15.6
-11.8
3.8
Total Required Economic Capital
18.2
28.1
4.1
50.5
33.9
-16.5
Economic Capital Adequacy
6.6
227.1
1.4
235.2
251.7
26
Why Emerging Practices?
Example Results
  • These are recommendations for internal use and
    experimentation for companies to better
    understand and quantify the capital and cash
    requirements of the merchant energy business
    these are not recommendations for external
    communication or new disclosure.
  • No one is going to implement all of these
    recommendations over night.
  • Most of us have some capability to begin looking
    at the components of Capital Adequacy and
    liquidity requirements through the use of tools
    that we already have in place but which require
    extension and modification to achieve the more
    sophisticated views that result from the white
    paper recommendations. This should be a
    controlled evolutionary process - in most cases,
    the less sophisticated tools that we already have
    in place generate more conservative answers than
    the sophisticated approaches do.
  • Why we will implement these ideas over time
  • Better than what we have now
  • Emphasize need to look both long term and short
    and to look at cash flow as well as earnings and
    value
  • Ideas and methodologies useful in decision making
  •  
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