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The Nature of Monte Carlo Mine Burial Prediction

The Nature of Monte Carlo Mine Burial Prediction. P.A. Elmore and M.D. Richardson Marine Geosciences Division Naval Research Laboratory Stennis Space Center, MS. The Nature of the Problem. Mine burial is stochastic Large number of physical influences, some of which are stochastic

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The Nature of Monte Carlo Mine Burial Prediction

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  1. The Nature of Monte Carlo Mine Burial Prediction P.A. Elmore and M.D. Richardson Marine Geosciences Division Naval Research Laboratory Stennis Space Center, MS

  2. The Nature of the Problem • Mine burial is stochastic • Large number of physical influences, some of which are stochastic • Initial conditions at deployment uncertain (small changes initially may result in very large differences in the end state). • Best possible prediction: probabilities for different states of burial.

  3. Monte Carlo Approach Use deterministic models of impact and subsequent burial in a Monte Carlo simulation to calculate burial of a large number of mines. • Random numbers generator - > probability density • for each initial variable. • Direct computation of burial over the life of each mine. • End result: final states of a large number of mines.

  4. Monte Carlo Approach (cont.) • Results are used to determine probability for different states of burial in a particular region of interest over time. • Probabilities are associated with lat/long positions to form maps of mine burial probabilities in operational area. • An analyst can then use these maps to plan mine clearance or avoidance (go/no go).

  5. Monte Carlo – High Level View Mission planning NAVO DB and model results Front end of MC model MC Run(s) End result and analysis

  6. NAVO Model and DB Input Mine Type DB Bathy DBDB-V Waves ST-WAVE Currents SWAFS Geotechnical DB Fall dynamics Impact Scour Scour Bedform Migration Liquefaction Scour Bedform Migration Everything Everything Model Front End

  7. Scour Liquefaction Bedform migration Sediment Influx Model Mechanics(one run) Impact Burial • Model Front End • DB and model ingest • PDF’s (models, historical • data, intelligence) • Monte Carlo

  8. Scour Liquefaction Bedform migration Sediment Influx Model Mechanics(Subsequent Burial Process) Turn-based coupling of post-impact processes. Processes “take turns”- operate one at a time cyclically. Period of the cyclic made small relative to mine life so that a continuous coupled process is approximated. Analogy: Card game. Each player is idle at the table until it is their turn to play a card.

  9. Model Mechanics(Saving Intermediate and Final Results) Mine Burial Model Map positions and % burial after scour and sediment transport dynamics have been calculated. yes End of time step? Scour no At last day? Liquefaction Bedform migration no yes Store intermediate result. Sediment Influx Collate intermediate and final results. End of run.

  10. Some Currently Available Components • Impact Burial: Batch 28 • IMPACT 28 with Monte Carlo shell • Coded in QBASIC and MATLAB • Scour: HR Wallingford Equations • Validation and “tweaking” against NRL mine data • Coded in MATLAB • Sand Ridge Migration: Mulhearn model • Australian defense research • Currently in a technical report, needs coding

  11. Process models (Impact and Post-Impact) Form the parts required by holistic models. Q/A of physics and define applicability Holistic models (Expert System, Monte Carlo Sim) Use process models as parts in an overall model Integration, statistics, and end product Leveraging MBP Modeling Efforts Car factory analogy: Process models form the car parts (brakes, transmission, etc.). Holistic models are the assembled car.

  12. The Nature of the Prediction • Stochastic problem -> probabilistic prediction. • Probabilities for different states of burial • Time dependent • Risk analysis and planning required afterwards • Uncertainties • Convergence of a solution • Sensitivity of variables to change • Accuracy of the impact and subsequent burial models • Capabilities/Limitations of databases

  13. End Goal – Avoid This!

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