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Published byMelanie Montgomery Modified over 9 years ago
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12-1988: High-Resolution Destination Choice in Agent-Based Demand Models A. Horni K. Nagel K.W. Axhausen destinations persons 00 nn 10 ij i j
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MATSim Shopping and Leisure Destination Choice destination choice MATSim utility function (absolute utilities) Multi-Agent Transport Simulation MATSim
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3 day plans fixed and discretionary activities travel time budget relatively small set of locations per iteration step time geography Hägerstrand Earlier MATSim Destination Choice Approach: Local Search Competition effects at destinations -> utility reduction +
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4 V + implicit + explicit MATSim and Heterogeneity why not only random coefficients? -> bipolar distance distribution due to iterative approach
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5 A Step Back Adding heterogeneity: conceptually easy, full compatibility with DCM framework But: technically tricky for large-scale application
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Repeated Draws: Quenched vs. Annealed Randomness fixed initial random seed freezing the generating order of ij storing all ij destinations persons 00 nn 10 ij i j person i alternative j store seed k i store seed k j regenerate ij on the fly with random seed f(k i,k j ) one additional random number can destroy «quench» i,j ~ O(10 6 ) -> 4x10 12 Byte (4TByte)
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Search Method: Local vs. Best Response
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costs(destination( max )) estimate by distance realized utilities pre-process once for every person max – t travel = 0 search space boundary d max = … distance to dest with max Search Space Boundary
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Search Space Optimum t departure t arrival Dijkstra forwards 1-nDijkstra backwards 1-n approximation probabilistic choice search space workhomeshopping
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Results: Synthetic Small-Scale Scenario
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Results: 10% Zurich Scenario shopping leisure link volumes 70K agents 25min/iteration 100 iterations
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Next Steps utf estimation: running survey probabilistic choice set generation approaches (-> search space) variability analysis: ij person i alternative j seed Random draws from DCM microsimulation results = random variables X -> microsimulations are a sampling tool estimation of parameters for X (=statistic) with random sampling
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