Optimal Model of Resource Planning for Collaborative Logistics Network Considering Robust Constraints

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Abstract:

Uncertainty factors which influence the resource plan for collaborative logistics network, is the completely uncertain problem that parameter status and probability distribution are unknown, but traditional plan methods can’t ensure the robustness of plan implementation. Based on robust optimal control, the paper carries on simulation about uncertain parameters with Monte Carlo method, and proposes a expected model of robust restraint, the robustness constrains realizes to contract the feasible region and improve robustness of model. Finally, The simulation results illustrate the validity of the improved model.

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Advanced Materials Research (Volumes 403-408)

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3642-3646

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November 2011

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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