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Coping with Variability in Dynamic Routing Problems Tom Van Woensel (TU/e) Christophe Lecluyse (UA), Herbert Peremans (UA), Laoucine Kerbache (HEC) and Nico Vandaele (UA)
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Problem Definition
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Previous work Deterministic Dynamic Routing Problems Inherent stochastic nature of the routing problem due to travel times Average travel times modeled using queueing models Heuristics used: Ant Colony Optimization Tabu Search Significant gains in travel time observed Did not include variability of the travel times
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A refresher on the queueing approach to traffic flows q max q k j Traffic flow k 1 k 2 v2v2 v1v1 qq max vfvf Traffic flow Speed Speed-flow diagramSpeed-density diagram Flow-density diagram Density
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Queueing framework Queueing QueueService Station (1/k j ) T: Congestion parameter
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Travel Time Distribution: Mean P periods of equal length Δp with a different travel speed associated with each time period p (1 < p < P) TT k * p Decision variable is number of time zones k Depends upon the speeds in each time zone and the distance to be crossed
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Travel Time Distribution: Variance I TT k * p (Previous slide) Var(TT) p 2 Var(k) Variance of TT is dependent on the variance of k, which depends on changes in speeds i.e. Var(k) is a function of Var(v) Relationship between (changes in k) as a result of (changes in v) needs to be determined: k = v
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Travel Time Distribution: Variance III Speed v t0t0 v avg vv Time zones k A B Area A + Area B = 0 k = v
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Travel Time Distribution: Variance IV k v (and ~ f(v, k avg, p)) Var( k) 2 Var( v) Var(v) ?
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Travel Time Distribution: Variance V What is Var(1/W)? Not a physical meaning in queueing theory Distribution is unknown but: Assume that W follows a lognormal distribution (with parameters and ) Then it can be proven that: (1/W) also follows a lognormal distribution with (parameters - and ) See Papoulis (1991), Probability, Random Variables and Stochastic Processes, McGraw-Hill for general results.
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Travel Time Distribution: Variance VI With (1/W) following a Lognormal distribution, the moments of its distribution can be related to the moments of the distribution for W as follows: W ~ LN
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Travel Time Distribution If W ~ LN 1/W ~ LN v ~ LN TT ~ LN Assumption is acceptable: Production management often W ~ LN E.g. Vandaele (1996); Simulation + Empirics Traffic Theory often TT ~ LN Empirical research: e.g. Taniguchi et al. (2001) in City Logistics
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Travel Time Distribution: Overview TT ~ Lognormal distribution E(W) and Var(W) see e.g. approximations Whitt for GI/G/K queues
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Data generation: Routing problem Traffic generation Finding solutions for the Stochastic Dynamic Routing Problem Solutions Heuristics Tabu Search Ant Colony Optimization
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Objective Functions I Results for F 1 (S): Significant and consistent improvements in travel times observed (>15% gains) Different routes
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Objective Functions II Objective Function F 2 (S) No complete results available yet Preliminary insights: Not necessarily minimal in Total Travel Time Variability in Travel Times is reduced Recourse: Less re-planning is needed Robust solutions
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Conclusions Travel Time Variability in Routing Problems Travel Times Lognormal distribution Expected Travel Times and Variance of the Travel Times via a Queueing approach Stochastic Routing Problems Time Windows !
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Questions? ?
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