Journées de l'optimisation 2016

HEC Montréal, Québec, Canada, 2 — 4 mai 2016

Horaire Auteurs Mon horaire

TB5 Stochastic Optimization

3 mai 2016 15h30 – 17h10

Salle: Marie-Husny

Présidée par Claudio Petucco

3 présentations

  • 15h30 - 15h55

    Land expectation value and optimal rotation age of forest plantations under multiple risks

    • Claudio Petucco, prés., Laboratoire d'Economie Forestière, AgroParisTech, INRA

    This study analyses the optimal management for forest plantations under pest and storm disturbances. Using simulations, we analyse different scenarios of pest-outbreak intensities and storm frequencies. We introduce an endogenous rule for deciding, after a storm, whether keeping the standing trees until the rotation end or clear-cutting and replanting.

  • 15h55 - 16h20

    Chance-constrained staffing with recourse for multi-skill call centers with arrival rate and absenteeism uncertainty

    • Thuy Anh Ta, prés., Université de Montréal
    • Wyean Chan, Université de Montréal
    • Pierre L'Ecuyer, Université de Montréal
    • Fabian Bastin, Université de Montréal

    We consider a chance-constrained two-stage stochastic staffing problem for multi-skill call centers with uncertainty on arrival rate and absenteeism. We first determine an initial staffing based on an imperfect forecast on arrival rate and absenteeism. Then, this staffing is corrected applying recourse actions when the forecast becomes more accurate. We propose a method that combines simulation with integer programming and cut generation to solve the problem.

  • 16h20 - 16h45

    Optimal bidding strategies for an EV fleet operator

    • Ahmed Chaouachi, prés., Université de Montréal

    In this paper, we address the issue of bidirectional energy transfer between a fleet of electric vehicles and the grid, from the point of view of an operator that plays the twin role of consumer (G2V transfer) and producer (V2G). In this setting, we propose a bilevel programming formulation where the fleet operator (FO), who acts as the leader, sets G2V and V2G profit maximizing price bids. At the lower level, a smart grid (follower) sets quantities transferred to and from the fleet of electric vehicles, with the aim of maximizing social welfare. The bilevel model is then transformed into a mixed integer program that is solved by an off-the-shelf solver. The approach is illustrated by numerical experiments based on the Ontario power grid.

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