Joint rectangular geometric chance constrained programs

نویسندگان

  • Jia Liu
  • Chuan Xu
  • Abdel Lisser
  • Zhiping Chen
چکیده

This paper discusses joint rectangular geometric chance constrained programs. When the stochastic parameters are elliptically distributed and pairwise independent, we present a reformulation of the joint rectangular geometric chance constrained programs. As the reformulation is not convex, we propose new convex approximations based on variable transformation together with piecewise linear approximation method. Our results show that the approximations are tight.

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تاریخ انتشار 2016