An Introduction to Stochastic Vehicle Routing

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Presentation transcript:

An Introduction to Stochastic Vehicle Routing Michel Gendreau CIRRELT and MAGI École Polytechnique de Montréal PhD course on Local Distribution Planning Molde University College − March 12-16, 2012

Introduction to Stochastic Vehicle Routing Outline Introduction Basic Concepts in Stochastic Optimization Modeling Paradigms Problems with Stochastic Demands Problems with Stochastic Customers Problems with Stochastic Service or Travel Times Conclusion and perspectives Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Acknowledgements Walter Rei CIRRELT and ESG UQÀM Ola Jabali CIRRELT and HEC Montréal Tom van Woensel and Ton de Kok School of Industrial Engineering Eindhoven University of Technology Introduction to Stochastic Vehicle Routing

Introduction

Vehicle Routing Problems Introduced by Dantzig and Ramser in 1959 One of the most studied problem in the area of logistics The basic problem involves delivering given quantities of some product to a given set of customers using a fleet of vehicles with limited capacities. The objective is to determine a set of minimum- cost routes to satisfy customer demands. Introduction to Stochastic Vehicle Routing

Vehicle Routing Problems Many variants involving different constraints or parameters: Introduction of travel and service times with route duration or time window constraints Multiple depots Multiple types of vehicles ... Introduction to Stochastic Vehicle Routing

What is Stochastic Vehicle Routing? Basically, any vehicle routing problem in which one or several of the parameters are not deterministic: Demands Travel or service times Presence of customers … Introduction to Stochastic Vehicle Routing

Basic Concepts in Stochastic Optimization

Dealing with uncertainty in optimization Very early in the development of operations research, some top contributors realized that : In many problems there is very significant uncertainty in key parameters; This uncertainty must be dealt with explicitly. This led to the development of : Chance-constrained programming (1951) Stochastic programming with recourse (1955) Dynamic programming (1958) Robust optimization (more recently) Introduction to Stochastic Vehicle Routing

Information and decision-making In any stochastic optimization problem, a key issue is: How do the revelation of information on the uncertain parameters and decision-making (optimization) interact? When do the values taken by the uncertain parameters become known? What changes can I (must I) make in my plans on the basis of new information that I obtain? Introduction to Stochastic Vehicle Routing

Chance-constrained programming Proposed by Charnes and Cooper in 1951. The key idea is to allow some constraints to be satisfied only with some probability. E.g., in VRP with stochastic demands, Pr{total demand assigned to route r ≤ capacity } ≥ 1-α Introduction to Stochastic Vehicle Routing

Stochastic programming with recourse Proposed separately by Dantzig and by Beale in 1955. The key idea is to divide problems in different stages, between which information is revealed. The simplest case is with only two stages. The second stage deals with recourse actions, which are undertaken to adapt plans to the realization of uncertainty. Basic reference: J.R. Birge and F. Louveaux, Introduction to Stochastic Programming, 2nd edition, Springer, 2011. Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Dynamic programming Proposed by Bellman in 1958. A method developed to tackle effectively sequential decision problems. The solution method relies on a time decomposition of the problem according to stages. It exploits the so-called Principle of Optimality. Good for problems with limited number of possible states and actions. Basic reference: D.P. Bertsekas, Dynamic Programming and Optimal Control, 3rd edition, Athena Scientific, 2005. Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Robust optimization Here, uncertainty is represented by the fact that the uncertain parameter vector must belong to a given polyhedral set (without any probability defined) E.g., in VRP with stochastic demands, having set upper and lower bounds for each demand, together with an upper bound on total demand. Robust optimization looks in a minimax fashion for the solution that provides the best “worst case”. Introduction to Stochastic Vehicle Routing

Modelling paradigms

Real-time optimization Also called re-optimization Based on the implicit assumption that information is revealed over time as the vehicles perform their assigned routes. Relies on Dynamic programming and related approaches (Secomandi et al.) Routes are created piece by piece on the basis on the information currently available. Not always practical (e.g., recurrent situations) Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing A priori optimization A solution must be determined beforehand; this solution is “confronted” to the realization of the stochastic parameters in a second step. Approaches: Chance-constrained programming (Two-stage) stochastic programming with recourse Robust optimization [“Ad hoc” approaches] Introduction to Stochastic Vehicle Routing

Chance-constrained programming Probabilistic constraints can sometimes be transfor- med into deterministic ones (e.g., in the case above if customer demands are independent and Poisson). This model completely ignores what happens when things do not “turn out correctly”. Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Robust optimization Not used very much in stochastic VRP up to now. Model may be overly pessimistic. Introduction to Stochastic Vehicle Routing

Stochastic programming with recourse Recourse is a key concept in a priori optimization What must be done to “adjust” the a priori solution to the values observed for the stochastic parameters! Another key issue is deciding when information on the uncertain parameters is provided to decision-makers. Solution methods: Integer L-shaped (Laporte and Louveaux) Heuristics (including metaheuristics) Probably closer to actual industrial practices, if recourse actions are correctly defined! Introduction to Stochastic Vehicle Routing

VRP with stochastic demands

VRP with stochastic demands (VRPSD) A probability distribution is specified for the demand of each customer. One usually assumes that demands are independent (this may not always be very realistic...). Probably, the most extensively studied SVRP: Under the reoptimization approach (Secomandi) Under the a priori approach (several authors) using both the chance-constrained and the recourse models. Introduction to Stochastic Vehicle Routing

VRP with stochastic demands Probably, the most extensively studied SVRP: Under the reoptimization approach (Secomandi et al.) Under the a priori approach (several authors) using both the chance-constrained and the recourse models. Classical recourse strategy: Return to depot to restore vehicle capacity Does not always seem very appropriate or “intelligent” However, recently many authors have started proposing more creative recourse schemes: Pairing routes (Erera et al.) Preventive restocking (Yang, Ballou, and Mathur) Introduction to Stochastic Vehicle Routing

VRP with stochastic demands Additional material: M. Gendreau, W. Rei and P. Soriano, “A Hybrid Monte Carlo Local Branching Algorithm for the Single Vehicle Routing Problem with Stochastic Demands”, presented at GOM 2008, August 2008. W. Rei and M. Gendreau, “An Exact Algorithm for the Multi-Vehicle Routing Problem with Stochastic Demands”, presented at the TU Eindhoven, November 2009. Introduction to Stochastic Vehicle Routing

VRP with stochastic customers

VRP with stochastic customers (VPRSC) Each customer has a given probability of requiring a visit. Problem grounded in the pioneering work of Jaillet (1985) on the Probabilistic Traveling Salesman Problem (PTSP). At first sight, the VRPSC is of no interest under the reoptimization approach. Introduction to Stochastic Vehicle Routing

VRP with stochastic customers (VPRSC) Recourse action: “Skip” absent customers Has been extensively studied by Gendreau, Laporte and Séguin in the 1990’s: Exact and heuristic solution approaches Has also been used to model the Consistent VRP (following slides). Introduction to Stochastic Vehicle Routing

The Consistent VRP with Stochastic Customers The consistent vehicle routing problem First introduced by Groër, Golden, and Wasil (2009) Have the same driver visiting the same customers at roughly the same time each day that these customers need service Focus is on the customer Planning is done for D periods, known demand, m vehicles Arrival time variation is no more than L Minimize travel time over D periods day 1 day 2 Depot Depot Introduction to Stochastic Vehicle Routing

Problem definition The consistent vehicle routing problem with stochastic customers Each customer has a probability of occurring Same driver visits the same customers A delivery time window is quoted to the customer → (Self-imposed TW) Cost structure Penalties for early and late arrivals Travel times Depot a priori approach Stage 1 Plan routes and set targets Stage 2 Compute travel times and penalties Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Problem data An undirected graph G=(V,A) V={v1,..,vn} is a set of vertices E={(vi, vj): vi, vj V, i<j} is a set of edges Vertex v1 corresponds to the depot Verticesv2,..,vn correspond to the potential clients cij is the travel time between i and j m is the number of available vehicles A vehicle can travel at most λ hours pi is the probability that client i places an order Ω is the set of possible scenarios associated with the occurrences for all customers Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model First-stage decision variables : xij = 1, if client j is visited immediately after client i for 2 ≤ i<j≤ n, and 0 otherwise x1j can take the values 0,1 or 2 ti , target arrival time at customer i ξ : a random vector containing all Bernoulli random variables associated with the customers. For each scenario ω Ω, let ξ(ω)T=[ξ2(ω), …, ξn(ω)] ξi(ω) = 1, if customer i is present and 0 otherwise. Q(x) : second-stage cost (recourse) Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model Reformulation the objective function: is a lower bound on the expected travel time Gendreau, Laporte and Séguin (1995) And Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model Assumption: early arrivals do not wait for the time window Evaluation of the second stage cost Qr,δ: expected recourse cost corresponding to route r if orientation δ is chosen QPr,δ: total average penalties associated with time window deviations for route r if orientation δ is chosen QTr: total average travel time for route for route r Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model Given a route r, we relabel the vertices on the route according to a given orientation δ as follows: : the minimum expected penalty associated with customer Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Model v0 v5 v4 v7 v0 v5 v4 Setting of and evaluation of v0 v7 v4 Parameters: – the collection of random events where customer requires a visit w – half length of the time window pω – probability of – arrival time at considering β – late arrival penalty Variables: – target arrival time at customer – early arrival at customer by – late arrival at customer by v0 v4 Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Solution procedure Based on the Integer 0-1 L-Shaped Method proposed by Laporte and Louveaux (1993) Variant of branch-and-cut Assumption 1: Q(x) is computable Assumption 2: There exists a finite value L = general lower bound for the recourse function. Operates on the current problem (CP) on each node of the search tree In the VRP context, CP is relaxed: Integrality constraints Subtour elimination and route duration constraints Introduction to Stochastic Vehicle Routing

0-1 Integer L-Shaped Algorithm List contains initial relaxed CP Choose next pendent node yes Fathom node no Introduce violated feasibility constraints and LBF no Apply branching yes Integer Update Introduce optimality cuts Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing General lower bound We create an auxiliary graph with all distances equal to l and all probabilities are set to p and q → a lower bound on average travel time is (n-1)pl → a lower bound on the penalties associated with time window deviations can be determined also Introduction to Stochastic Vehicle Routing

Lower bounding functionals Introduced by Hjorring and Holt (1999) bound Q(x) using partial routes Partial route h consist of: v0 v5 v4 v7 v8 v9 v1 v0 v3 v2 v6 Introduction to Stochastic Vehicle Routing

Lower bounding functionals We look for a lower bound on the recourse associated with route h, Ph Bounds on S → compute exactly Bounds on U: assume each node, separately, directly succeeds vS → → compute for each node in U Bounds on T: assume general sequence with U as in L → compute for a subset of scenarios where at most one customer is absent v0 v5 v4 v7 v0 v5 v4 v7 v6 v0 v5 v4 v7 v8 v9 v1 vg Introduction to Stochastic Vehicle Routing

Lower bounding functionals Let Let or if and are consecutive in and For r partial routes the following is a valid inequality: Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Preliminary results Experimental sets: Vertices were generated similar to Laporte, Louveaux and van Hamme (2002) p values are randomly generated within 0.6 and 0.9 20 customers with 4 vehicles or 15 with 3 vehicles Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Preliminary results Set N Initial best integer Initial best node Initial GAP Final solution Final GAP Run time 1 15 356.7 303.1 15.0% 332.8 <1% 64 2 352.5 264.3 25.0% 285.2 55 3 397.3 360.3 9.3% 388.1 263 4 363.3 303.0 16.6% 312.8 69 5 407.7 357.0 12.4% 393.3 <1 97 6 20 616.2 554.1 10.1% 597.2 879 7 486.4 6.2% 461.0 340 9 476.5 405.4 14.9% 451.3 27564 10 520.0 414.0 20.4% 455.1 64638 11 449.4 368.5 18.0% 397.8 67501 12 526.9 475.3 9.8% 478.6 2242 13 474.0 436.5 7.9% 448.0 1244 571.9 472.1 17.5% 486.7 9.35% 25200 16 444.3 397.7 10.5% 416.2 17 442.5 390.9 11.7% 414.2 3.13% 8 494.4 401.0 18.9% 433.1 3.41% 86400 14 522.8 449.5 14.0% 503.5 1.53% Introduction to Stochastic Vehicle Routing

Introduction to Stochastic Vehicle Routing Future research A subset of customers that occur with probability 1 Multiple partial routes Improving the LBF Improving the bound on the objective function Sampling approach for larger sets Introduction to Stochastic Vehicle Routing

VRP with stochastic service or travel times

VRP with stochastic service or travel times The travel times required to move between vertices and/or service times are random variables. The least studied, but possibly the most interesting of all SVRP variants. Reason: it is much more difficult than others, because delays “propagate” along a route. Usual recourse: Pay penalties for soft time windows or overtime. All solution approaches seem relevant, but present significant implementation challenges. Introduction to Stochastic Vehicle Routing

Conclusions and perspectives

Conclusion and perspectives Stochastic vehicle routing is a rich and promising research area. Much work remains to be done in the area of recourse definition. SVRP models and solution techniques may also be useful for tackling problems that are not really stochastic, but which exhibit similar structures Up to now, very little work on problems with stochastic travel and service times, while one may argue that travel or service times are uncertain in most routing problems! Correlation between uncertain parameters is possibly a major stumbling block in many application areas, but no one seems to work on ways to deal with it. Introduction to Stochastic Vehicle Routing