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Kawika Pierson MIT System Dynamics Group 3 nd Year PhD Fall 2008 Albany-MIT PhD Colloquium The Cyclical Nature of Airline Industry Profits.

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Presentation on theme: "Kawika Pierson MIT System Dynamics Group 3 nd Year PhD Fall 2008 Albany-MIT PhD Colloquium The Cyclical Nature of Airline Industry Profits."— Presentation transcript:

1 Kawika Pierson MIT System Dynamics Group 3 nd Year PhD Fall 2008 Albany-MIT PhD Colloquium The Cyclical Nature of Airline Industry Profits

2 Outline Relevant Literature Reference Mode for Airline Profits Digging Deeper The Model Demand Price Capacity Costs Profit Results

3 Relevant Literature “Cycles in the sky: understanding and managing business cycles in the airline market” M Liehr, A Groessler, M Klein, PM Milling - System Dynamics Review, 2001 Made for Lufthansa as a guide for strategy Very limited scope (only one feedback loop)

4 Relevant Literature “System dynamics for market forecasting and structural analysis” James Lyneis - System Dynamics Review, 2000 Commercial jet aircraft industry Focused on use of SD models as forecasts for Jet Orders Proprietary, but potentially similar to our work "Analysis of Profit Cycles in the Airline Industry" 2004 Helen Jiang, R. John Hansman Very simple model, two stocks one feedback loop Control theory perspective

5 Reference Mode The data for US airline industry profits shows some cyclicality since before deregulation Taken from a presentation by Prof. R. John Hansman and Helen Jiang Nov. 2004

6 Digging Deeper Profit = Revenue – Costs Revenue = Price * sales in units Costs = unit cost * production Sales is Revenue Passenger Miles Price is the Price of Tickets Production is Available Seat Miles This gives us Profit How does financial reporting effect our modeling?

7 Capacity – Causal Loop Diagram

8 Capacity - Model Structure

9 Third Order Stocks –Cancellation and Mothballing

10 Forecasting Demand

11 Correction For Growth

12 Fitting to Data Get historical data on important stocks Airlines are great for this Airlines.org, MIT Airline Data Project, BTS Set up summary statistics John Sterman’s Book plus MAE, RMSE, %E, Thiel, SSE/M^2 Drive each model sector with historical variables Use Vensim’s model fitting functions Lets walk through this

13 Summary Statistics

14 Example of Fitting the Model 1. Open Simulation Control 2. Create a Payoff

15 Example of Fitting the Model 3. Run “Policy” Negative

16 Example of Fitting the Model 4. Set Parameters

17 Example of Fitting the Model 5.

18 Capacity Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.995 0.0224 0.0309 0.0043 0.7475 0.2480

19 Demand – Causal Loop Diagram

20 Demand – Model Structure

21 Demand Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.99 0.0273 0.0356 0.0033 0.9595 0.0371

22 Price – Model Structure

23 Price Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.98 0.0583 0.0710 0.0004 0.2980 0.7015

24 Costs – Causal Loop Diagram

25 Costs - Model Structure

26 Cost Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.99 0.055 0.0719 0.0603 0.6697 0.2698

27 Wages – Model Structure

28 Profits – Model Structure

29 Wages Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.99 0.0278 0.0398 0.0294 0.9426 0.0278

30 Real Wages Fit – Historical Inputs “R^2” MAE/Mean RMSE/Mean Um Uc Us 0.68 0.0262 0.0339 0.0290 0.9370 0.0339

31 Full model Optimization Move from partial model tests to full model parameterization Fits are slightly worse, parameters more believable MAE/Mean RMSE/Mean 0.0459 0.0564 0.0508 0.0595

32 Full model Optimization MAE/Mean RMSE/Mean 0.0345 0.0434 0.0372 0.0465

33 Parameters More Believable In Partial Model Test SLAT = 0.05 TAC = 1 Theoretically should be very similar In Full Model Parameterization SLAT = 0.18 TAC = 0.19 Time to Adjust Prices Partial = 0.05 Full =0.64 Sensitivity of Price to Cost Partial = 3 Full = 0

34 Profits Still Questionable

35 Conclusions Growth Correction Partial Model Tests with Historical Inputs Cyclical Nature not alleviated by Cancellations or Mothballing Standard SD Structures fit the industry reasonably well More dynamics exist in the real system Comments? Questions?


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