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Air Transportation Network Load Balancing using Auction-Based Slot Allocation for Demand Management George L. Donohue Loan Le and C-H. Chen Air Transportation.

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Presentation on theme: "Air Transportation Network Load Balancing using Auction-Based Slot Allocation for Demand Management George L. Donohue Loan Le and C-H. Chen Air Transportation."— Presentation transcript:

1 Air Transportation Network Load Balancing using Auction-Based Slot Allocation for Demand Management George L. Donohue Loan Le and C-H. Chen Air Transportation Systems Engineering Laboratory Dept. of Systems Engineering & Operations Research George Mason University Fairfax, VA Harvard University 18 March, 2004

2 Outline  Necessity of Demand Management  History of US Demand Management  Auction model for airport arrival slots  auctioneer optimization model  airline optimization model  Atlanta airport case study  simulated scenarios  results and interpretation  Observations

3 Why Demand Management? Atlanta Airport - FAA Airport Capacity Benchmark 2001  Over-scheduling causes delay and potentially compromises safety

4 Data Indicates Loss of Separation Increases at High Capacity Fraction Statistics at ATL, BWI, DCA and LGA airports (Haynie)  Over-scheduling causes accident pre-cursor events and potentially compromises safety

5 Observed WV Separation Violations vs. Capacity Ratio Haynie, GMU 2002

6 Atlanta Airport - FAA Airport Capacity Benchmark 2001 Flight Banking at Fortress Hubs Creates Inefficient Runway Utilization  Over-scheduling causes accident pre-cursor events and potentially compromises safety  Under-scheduling wastes runway capacity

7 Enplanement Capacity is More Important than Operational Capacity  Small aircraft make inefficient use of runway capacity seats/aircraft Cumulative Seat Share vs. Cumulative Flight Share and Aircraft Size ATL total operations (OAG Summer 2000) Cumulative flight share Cumulative seat share

8 Excess Market Concentration May Lead to Inefficient Use of Scare Resources HHI is a Metric used to Measure Market Concentration  Hirschman-Herfindahl Index (HHI) is standard measure of market concentration  Department of Justice uses to measure the competition within a market place  HHI=  (100*s i ) 2 with s i is market share of airline i  Ranging between 100 (perfect competitiveness) and 10000 (perfect monopoly)  In a market place with an index over 1800, the market begins to demonstrate a lack of competition

9 History of US Demand Management - Limited #IFR slots during specific time periods - Negotiation-based allocation 1968 High-Density- Rule Apr 2000 Exempted from HDR certain flights to address competition and small market access AIR-21 Jan 2001 Cap of the #exemption slots Lottery 1978 Deregulation Use-it-or- lose-it rule based on 80% usage 1985 Slot ownership 2007 End of HDR. What’s next? -Congestion pricing? -Auction? LGA Airport Slot Control

10 Demand Management Approaches  Administrative  negotiation-based IATA biannual conferences  Economic  weight-based landing fee: no incentive for large aircraft – inefficient Enplanement capacity  time-based congestion pricing: not reveal the true value of scarce resources Market-based Auctions  DoT supervised Market-based Auctions of Arrival Metering-Fix Time Slots  Hybrid

11 Auction Model Design Issues  Feasibility  package slot allocation for arrival and/or departure slots  politically acceptable prices  Optimality  efficiency: throughput (enplanement opportunity) and delay  regulatory standards: safety, flight priorities  equity:  stability in schedule  airlines’ need to leverage investments  airlines’ competitiveness : new-entrants vs. incumbents  Flexibility  primary market at strategic level  secondary market at tactical level

12 Design Approach  Objective: Network Load Balancing  Obtain Better Utilization of Nation’s Airport Network Infrastructure – Network Load Balancing Optimum FleetSafe Arrival Capacity  Provide an Optimum Fleet Mix at Safe Arrival Capacity Fair Market Access  Ensure Fair Market Access Opportunity Schedule Predictability  Increase Schedule Predictability - reduced queuing delays  Assumptions  Airlines will make optimum use of slots they license  Auction rules: Bidders are ranked using a linear combination of:  monetary offer (combination of A/C equipage credit and cash)  flight OD pair (e.g. international agreements, etc.)  throughput (aircraft size) ?  airline’s prior investment ?  on-time performance ?

13 Strategic Auction Analytical Approach NAS Auction Model Schedules Analysis & Feedback Bids Slots Airlines Auctioneers Network Model -Auctions only at Capacitated Airports -Auction Licenses good for 5 to 10 years

14 Auction Model Process More bids than capacity Call for bids End auction process Submit information and bids Yes No Auctioneer’s action Airline’s action Simultaneous bidding of 15-min intervals Determine factor weights, initial bids and increments Sort the bids in decreasing ranks Sequence flights for each intervals Local optimum fleet mix order: small  large  757  heavy

15 ARR DEP X= (x 1 … x j … x n ) T xj=xj= 1 if P j wins a round 0 otherwise money #seats … Bid vector P j = Weight vector W = (w 1 w 2 ) T Rank of a bid vector : W·P j C = (W T ·P 1 … W T ·P j … W T ·P n ) T LP : max z = C T X s.t. (ARR·X) i, (DEP·X) i lies within the Pareto frontier i airlines’ combinatorial constraints Auctioneer Model

16 Capacity constraints for 15-min bins: (ARR·X) i  25 (DEP·X) i  25 max z = C T X s.t. A  X  b airlines combinatorial constraints A = ARR DEP, b = 25 Let: Atlanta’s VMC Auction Model departure per hour arrival per hour 100,100 ATL’s VMC capacity (April 2000)

17 Airline Bidding Model  Determine markets, legs, frequencies and departure times  Fleet assignment :  (aircraft type,leg)  line-of-flying (LOF): sequence of legs to be flown by an aircraft in the course of its day Bidding is all about scheduling 1,5 2,6 3,7 4,8 1,3 2,4 B C D A E F

18  Determine markets, legs, frequencies and departure times  Fleet assignment :  (aircraft type,leg)  line-of-flying (LOF): sequence of legs to be flown by an aircraft in the course of its day time ARR DEP 1 1 1 1 1 1 simple package bidding Bidding is all about scheduling Simple Flight Schedule Example 1,5 2,6 3,7 4,8 1,3 2,4 B C D A E F Daily arrivals and departures at A of one LOF:

19  Determine markets, legs, frequencies and departure times  Fleet assignment :  (aircraft type,leg)  line-of-flying (LOF): sequence of legs to be flown by an aircraft in the course of its day time ARR DEP 1 1 1 1 1 1 complex package bidding Bidding is all about scheduling Schedule Banking Constraints 1,5 2,6 3,7 4,8 1,3 2,4 B C D A E F Daily arrivals and departures at A of one LOF:

20 Assume the Airlines have a Near Optimal Schedule and Try to Maintain in Auction  Airlines’ elasticity for changing schedule original scheduled 15-min interval 15min bids withdrawn  Airlines bid reasonably and homogeneously by setting an upper bid threshold proportional to #seats (revenue)  No fleet mix change

21 Airline Agent Tries to Maximize Profit Objective function: Maximize revenue and ultimately maximize profit Maximise Subject to: Airlines’ package bidding constraints To bid or not to bid Upper bound for bids Lower bound for bids M big positive value y s binary value B o T airport threshold vector  airline threshold fraction B s ’ old bid for slot s in previous round if airline bids for slot s otherwise {B s } set of monetary bids {P s } airline expected profit by using a slot Variables:

22 Network Model used to Evaluate Auction Effectiveness LGA ORD MSP DTW ATL DFW LAX IAD BWI DEN PHX SFO 11-node network departure separation arrival separation Runway capacity determined by  Wake Vortex Separation Standards (nmiles/seconds) (M. Hanson)  and a scale factor to account for runway dependency

23 Simulation scenarios  Assumptions:  Aircraft can arrive within allocated slots with Required Time-of- Arrival errors of 20 seconds (using Aircraft RTA Capabilities)  Auction items: Metering Fix Arrival Slots  No combinatorial package bidding  Bid values and minimum increments are relative to the value of initial bid  Input:  Summer 2000 OAG schedule of arrivals to ATL (1160 flights)  Scenario 1 (Baseline):  OAG schedule  Scenario 2 (Simple auction):  Monetary Offer is the only determining factor  Auction-produced schedule

24 Traffic levels and estimated queuing delays during VMC 45 min maximum schedule deviation allowed, no flights are rerouted Scheduled arrivals (#operations/quarter hour) Estimated Average Runway Queuing Delay (min) ATL reported optimum rate

25 Results : Flight Deviations min 15-min max allowed 30-min max allowed45-min max allowed  Bell-shaped curves are consistent to the model assumption about airline bidding behavior  Curves are skewed to the right due to optimum sequencing that shifts aircraft toward the end of 15-min intervals ~70%

26 Results : Auction metrics #Flights to be rerouted #Seats to be rerouted #Rounds Average Auction Revenue Per Flight (x $Initial Bid) Maximum schedule deviation allowed (min) 23 Average cancelled arrivals in summer 2000: 23 #seats of rerouted flights

27 Observations on Research to Date  Simple Auctions could Exclude small airlines and/or small markets from Hub Airports  Simple Bidding Rules can Prevent this Problem  Number of flights to be rerouted is comparable to the number of cancelled flights  Combinatorial Clock Auctions Offer a Promising Market-Based approach to Demand Management  Auction Proceeds could be used as Incentives to the Airports for Infrastructure Investments and to the Airlines for Avionics Investments

28 Airlines Could bid with Avionics Investment Promissory Notes  Increased Hub airport capacity is Dependent on Aircraft being able to maintain Accurate Time- Based Separation (ROT and WV safety constraints)  Data Links, ADS-B, FMS-RTA and New Operational Procedures will be required  Airlines could Bid with Script that constituted a contract to equip their Aircraft with-in X years (i.e. ½ bid price)  Cash Bids could be used to replace PFC’s and go directly to the Capacitated Airport’s Infrastructure Investment Accounts

29 Future work  More airline and airport inputs  Experimental auction Participation  Include Efficiency Rules  Include combinatorial bidding  Include pricing  Conduct experimental auctions

30  Backup

31 Observed Runway Incursions One formal simultaneous runway occupancy Several “near” simultaneous runway occupancies Out of 364 valid data points -14 sec

32 ATL and LGA Aircraft Inter-arrival Times

33 LGA Arrival Histograms Normalized by Arrival Rate Displaying Positive or Negative Deviation from WVSS Adherence Perfect WVSS Adherence = 0

34 ATL Arrival Histograms RW 27 Normalized by Arrival Rate Displaying Positive or Negative Deviation from WVSS Adherence Perfect WVSS Adherence Value = 0

35 ATL Arrival Histograms RW 26 Normalized by Arrival Rate Displaying Positive or Negative Deviation from WVSS Adherence Perfect WVSS Adherence Value = 0

36 Aircraft Wake Vortex Separation Violations : LGA & BWI Perfect WVSS Adherence Value = 0

37 FAA Barriers to Change  FAA has an Operational and Regulatory Culture  Inclination to follow training that has seemed to be Safe in the Past  FAR has NOT Changed to Provide Operational Benefits from Introduction of New Technology  Assumption that Aircraft Equipage would be Benefits Driven did not account for Lack of an ECONOMIC and/or SAFETY Bootstrapping Requirement

38 FAA Investment Analysis Primarily focus on Capacity and Delay  OMB requirement to have a B/C ratio > 1 leads to a modernization emphasis on Decreasing Delay  In an Asynchronous Transportation Network operating near it’s capacity margin, Delay is Inevitable  Delay Costs Airlines Money and is an Annoyance to Passengers BUT  is Usually Politically and Socially Acceptable

39 Safety Concerns Hypothesis: Most Major Changes to the NAS have been due to Safety Concerns  1960’s Mandated Introduction of Radar Separation  1970’s Decrease in Oceanic Separation Standards Required a Landmark Safety Analysis  1970’s Required A/C Transponder Equipage  1970’s Required A/C Ground Proximity Equipage  1990’s Required A/C TCAS Equipage  1990’s Required A/C Enhanced Ground Prox. Equipage  1990’s TDWR & ITWS Introduction  1990’s Mandated Development of GPS/WAAS


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