Conference Proceedings

A randomised approach to Multiple Chance-Constrained Problems: An application to flood avoidance

HA Nasir, A Carè, E Weyer

2016 IEEE 55th Conference on Decision and Control (CDC) | IEEE | Published : 2016

Abstract

One of the major risks associated with rivers is flooding, and a desirable way to manage rivers is to reduce the risk of severe floods without affecting the normal river operations. The flood risks are mainly contributed by uncertain inflows from tributaries. Due to uncertain in- and out-flows, the river control problem is formulated in this paper as a Multiple Chance-Constrained optimisation Problem (M-CCP), within a Stochastic MPC setting. M-CCPs are difficult to solve and this paper proposes an optimisation and testing algorithm to find approximate solutions of such problems. The algorithm is a significantly improved version of our previous proposal in [1]. Each step of the algorithm is s..

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University of Melbourne Researchers

Grants

Awarded by ARC Discovery Project


Funding Acknowledgements

[ "The first author gratefully acknowledges the financial support from National ICT Australia (NICTA).", "The contribution of the second author was carried out partly while he was a Research Fellow at the University of Melbourne, supported by an ARC Discovery Project grant (DP130104028), and partly during the tenure of an 'ERCIM Alain Bensoussan' Fellowship Programme." ]