1 / 17

Analyzing Air Combat Simulation Results with Dynamic Bayesian Networks

Study on analyzing air combat simulation results, modeling time progress, and using DBNs for efficient analysis. Explore AC tactics, hardware configurations, and progress indicators.

Download Presentation

Analyzing Air Combat Simulation Results with Dynamic Bayesian Networks

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Jirka Poropudas and Kai VirtanenSystems Analysis LaboratoryHelsinki University of TechnologyP.O. Box 1100, 02015 TKK, Finlandhttp://www.sal.tkk.fi/forename.surname@tkk.fi Analyzing Air Combat Simulation Results with Dynamic Bayesian Networks

  2. Outline • Air combat (AC) simulation • Analysis of simulation results • Modelling the progress of AC in time • Dynamic Bayesian network (DBN) • Modelling AC using DBN • Summary

  3. Analysis of AC Using Simulation • Most cost-efficient and flexible method • Commonly used models based on discrete event simulation Objectives for AC simulation study: • Acquire information on systems performance • Compare tactics and hardware configurations • Increase understanding of AC and its progress

  4. Simulation input Aircraft and hardware configurations Tactics Decision making parameters Simulation output Number of kills and losses Aircraft trajectories AC events etc. Aircraft, weapons, and hardware models Decision making logic Discrete Event AC Simulation

  5. Traditional Statistical Models Turn AC into a Static Event Simulation data has to be analyzed statistically Statistically reliable AC simulation may require tens of thousands of simulation replications Descriptive statistics and empirical distributions for the simulation output, e.g., kills and losses Regression models describe the dependence between simulation input and output These models do not show the progress of AC in time or the effect of AC events on AC and its outcome

  6. Overwhelming Amount of Simulation Data Not possible, e.g., to watch animations and observe trends or phenomena in the simulated AC How should the progress of AC be analyzed? How different AC events affect the outcome of the AC?

  7. Modelling the Progress of AC in Time • State of AC • Definition depends on, e.g., the goal of analysis and the simulation model properties • Outcome of AC • Measure for success in AC? • Definition depends on, e.g., the goal of analysis • Dynamics of AC must be included • How does AC state change in time? • How does a given AC state affect AC outcome?

  8. Definition for the State of AC • 1 vs. 1 AC, blue and red • Btand Rt are AC state variables at time t • State variable values • “Phases” of simulated pilots • Are a part of the decision making model • Determine behavior and phase transitions for individual pilots • Answer the question ”What is the pilot doing at time t?” Example of AC phases in X-Brawlersimulation model

  9. Outcome of AC • Outcome Ot is described by a variable with four possible values • Blue advantage: blue is alive, red is shot down • Red advantage: blue is shot down, red is alive • Mutual disadvantage: both sides have been shot down • Neutral: Both sides are alive • Outcome at time t is a function of state variables Bt and Rt

  10. Probability Distribution of AC State Changes in Time Dynamic Bayesian Network  • State variables are random • Probability distribution estimated from simulation data • Distributions change in time = Progress of AC • What-if analysis • Conditional distributions are estimated • Estimation must be repeated for all analyzed cases, ineffective

  11. Dynamic Bayesian Network Model for AC • Dynamic Bayesian network • Nodes = variables • Arcs = dependencies • Dependence between variables described by • Network structure • Conditional probability tables • Time instant t presented by single time slice • Outcome Ot depends on Bt and Rt time slice

  12. Dynamic Bayesian Network Is Fitted to Simulation Data • Basic structure of DBN is assumed • Additional arcs added to improve fit • Probability tables estimated from simulation data

  13. Progress of AC Tracked by DBN • Continuous probability curves estimated from simulation data • DBN model re-produces probabilities at discrete times • DBN gives compact and efficient model for the progress of AC

  14. DBN Enables Effective What-If Analysis • Evidenceon state of AC fed to DBN • For example, blue is engaged within visual range combat at time 125 s • How does this affect the progress of AC? • Or the outcome of AC? • DBN allows fast and efficientupdating of probability distributions • More efficient what-if analysis • No need for repeated re-screening simulation data

  15. Future Development of Existing Models • Other definitions for AC state, e.g., based on geometry and dynamics of AC • Extension to n vs. m scenarios • Optimized time discretization • In existing models time instants have been distributed uniformly

  16. Summary Progress of simulated AC studied by estimating time-varying probability distributions for AC state Probability distributions presented using a Dynamic Bayesian network DBN model approximates the distribution of AC state Progress of AC Dependencies between state variables Dependence between AC events and outcome DBN used for effective what-if analysis

  17. References Anon. 2002. The X-Brawler air combat simulator management summary. Vienna, VA, USA: L-3 Communications Analytics Corporation. Feuchter, C.A. 2000. Air force analyst’s handbook: on understanding the nature of analysis. Kirtland, NM. USA: Office of Aerospace Studies, Air Force Material Command. Jensen, F.V. 2001. Bayesian networks and decision graphs (Information Science and Statistics). Secaucus, NJ, USA: Springer-Verlag New York, Inc. Law, A.M. and W.D. Kelton. 2000. Simulation modelling and analysis. New York, NY, USA: McGraw-Hill Higher Education. Poropudas, J. and K. Virtanen. 2006. Game Theoretic Analysis of Air Combat Simulation Model. In Proceedings of the 12th International Symposium of Dynamic Games and Applications. The International Society of Dynamic Games. Virtanen, K., T. Raivio, and R.P. Hämäläinen. 1999. Decision theoretical approach to pilot simulation. Journal of Aircraft 26 (4):632-641.

More Related