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John Jarvis, Claudia Johnson

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Title: John Jarvis, Claudia Johnson


1

John Jarvis, Claudia Johnson Liana Vetter
October 26, 2004
2
Presentation Overview
  • Quest Resource Corporation
  • Model Development
  • Model Implementation Results

3
Quest Resource Corporation
  • An oil and gas company whose core business is
    developing, producing and transporting natural
    gas

4
Pipeline Schematic
Pipeline
Well head/site
Delivery/Sale Point
5
Place in the Market
Quest
Pipeline Transportation
Purchaser
In-house Use
External Sales
6
Quests Financial Setting
  • Revenues of about 11.7 million
  • Access to a 150 million debt facility for
    future opportunities
  • Over 900 miles of active pipeline transporting
    gas to sale points, with further construction
    underway.
  • 380 wells planned to be drilled in 2005 in
    addition to 900 miles of pipeline construction.

7
  • Once discovered, the gas is extracted from the
    Earth and run through condensers that increase
    the pressure of the gas so that its flow through
    the pipelines is swift to one of 10 sale
    points, or gas meters, whereby the ownership is
    transferred to the gas Purchaser

8
Quest Resource Corporation
  • Agreements are made between Quest and the
    Purchaser on amounts of gas to be delivered from
    Quest via pipeline
  • That monthly agreement distinguishes a daily
    amount guaranteed by Quest to the Purchaser
    (contractual gas) from gas sold at the daily
    market price (swing gas)
  • MS/OR methods are used to optimize the solution
    the amount Quest guarantees -- and minimize the
    risk to Quest when guaranteeing gas to the
    Purchaser

9
Current Approach
  • Quests current gas marketing strategy
  • Sales of gas production
  • 85 (anticipated total produced gas) guaranteed
    monthly by Quest
  • The remainder sold daily (swing volume) via
    market price
  • Pipeline serves as middleman
  • Total produced gas gas sold on contract
    gas sold daily

10
Goals of the Project
  • Analyze the market trends and forecasting
    accuracy of Quest
  • Determine what percentage is optimal to guarantee
    on contract
  • Create optimization model Quest can use monthly

11
Model Development
12
Sale Points Evaluated
  • Two different sale points
  • RH large and unstable
  • Housel small and unstable
  • Historical data
  • Forecasted daily production by sale point (2004)
  • Actual daily production by sale point (2004)
  • Daily NYMEX prices (2002-2004)

13
Market Prices 2002-2004
14
RH Sale Point Production 2004
15
Problem Constraints
  • Maximum days and amount in debt
  • Set limit of 2 days in debt based on 2004 data
  • Set limit of 10 of production in debt
  • Conservative limits to minimize risk in case of
    unexpected changes in production
  • Bounds on percentage to guarantee
  • Set upper limit as 95, highest Quest has used
  • Set lower limit as 30 to protect against sharp
    decrease in production

16
Model Formulation
  • Zi Production May vary due to equipment
    failure, geological variations, etc.
  • X Forecasted production amount.
  • Y Contractual amount decision variable.
  • Pi Market Price Affected by many outside
    factors (see NYMEX).

17
Market Price
  • Pi Daily price assumption
  • Pi P0 (adjustment i)
  • P0 initial market price (NYMEX)

1.09
For up-market scenario
1
Adjustments
i
For down-market scenario
0.95
18
Model Formulation
  • Over the course of a month, with each day i
  • Zi actual units of gas (MCF) produced
  • If Zi Y, then, deliver all gas on contract
  • If Zi ltY, then, Quest must borrow
    difference from pipeline
  • Else Zi gtY, then, Quest repays debt to
    pipeline first, then sells remainder at
    daily market price

Zi production Pi market price Y
contractual X forecasted amt
19
Description of Regret
  • Regret difference between optimal revenue and
    actual revenue
  • Benefits of regret
  • Solution does well in rising and falling market
  • Less sensitive to predicted probabilities

20
Market Scenarios
  • Up Market Scenario
  • Optimal solution has Yup minimum
  • Put least amount possible on contract, rest on
    swing volume
  • Regretup (Revenueup) - (Revenue)
  • Down Market Scenario
  • Optimal solution for Ydn maximum
  • Put maximum possible on contract, rest on swing
    volume
  • Regretdn (Revenuedn) - (Revenue)

21
Regret Objective
  • UpRegret Revenueup(Yup) Revenueup(Y)
  • DnRegret Revenuedn(Ydn) Revenuedn(Y)
  • Min prob(up) UpRegret prob(dn) DnRegret

Zi production Pi market price Y
contractual X forecasted amt
22
Computer Implementation
  • User inputs
  • Probability the market will rise
  • Sale point
  • Month to forecast, days in month
  • Expected initial NYMEX price
  • Forecasted daily production
  • Expected beginning debt
  • Program output
  • Data file for AMPL
  • Can be run with regret model to resolve each month

23
Stochastic Model with Regret
  • Example case
  • User provided data
  • Model returns output
  • Expected revenue 1,037

24
Sensitivity Analysis
  • Optimal monthly guarantee varies little when
    expected production data changes
  • Model is more sensitive to changes in market data

25
Model Implementation and Results
26
Analysis and Recommendation
  • 50-55 should be guaranteed monthly if no market
    predictions added from Quest
  • Consequences of guaranteeing 50-55
  • 18,000 additional revenue from January March
    2004 for RH
  • 2,400 additional revenue from January March
    2004 for Housel
  • Regret model yields more profit than current
    Quest marketing and provides more consistency
    between months

27
Problems and Limitations
  • Problems encountered
  • Limited historical data
  • Multiple daily gas prices (strip price used)
  • Large variability of the gas market
  • Difference in production records from meter
    inconsistency
  • Limitations of the solution
  • Dependent on the market, which is unpredictable
  • Stochastic variables are based on limited data

28
Letter from Quest
  • Thank you for allowing your students to assist us
    on this project. The process we went through was
    in itself beneficial. They have provided us
    information and analysis that we found to be
    helpful and even somewhat unexpected. The
    program they have given us should provide a
    firmer basis for our decision making for gas
    marketing. It should get better as time passes
    and we are better able to provide historical
    information for it. It was an educational
    experience for all parties concerned. Thank you
    for sharing them with us.
  • Richard MarlinQuest Cherokee, LLC5901 N.
    Western, Suite 200Oklahoma City, Ok. 73118

29

Questions
30
Normalized Objective Function
  • Min prob(up) (UpRegret / Revenueup(Yup))
    prob(dn) (DnRegret / Revenuedn(Ydn))
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