The development of advanced and efficient tools for uncertainty quantification and design optimization under uncertainty of ships operating in a real scenario are described. Under the assumption that objective functions and constraints are evaluated via high-fidelity, computationally expensive, unsteady Reynolds averaged Navier-Stokes equations solvers (URANSE), the complexity of the task - compared to deterministic approaches - requires a significant mathematical reformulation of the optimization problem and of the solution methods. To afford the cost of the stochastic optimization process, a number of advancements have been developed by the authors and their co-workers: (i) dynamic metamodels for the high-fidelity solvers and associated uncertainty quantification of stochastic simulation outputs; (ii) progress in evolutionary type derivative-free algorithms for global optimization; (iii) a new application of the Karhunen-Loève Expansion (KLE) method to - a priori - identify reduced dimensionality representations of large-scale design spaces, truncating basis functions (i.e. design variables) with small significance to the solution. An example of a ship hydrodynamic design optimization in real seas is finally presented.
Hydrodynamic ship design optimization considering uncertainty
Matteo Diez
2015
Abstract
The development of advanced and efficient tools for uncertainty quantification and design optimization under uncertainty of ships operating in a real scenario are described. Under the assumption that objective functions and constraints are evaluated via high-fidelity, computationally expensive, unsteady Reynolds averaged Navier-Stokes equations solvers (URANSE), the complexity of the task - compared to deterministic approaches - requires a significant mathematical reformulation of the optimization problem and of the solution methods. To afford the cost of the stochastic optimization process, a number of advancements have been developed by the authors and their co-workers: (i) dynamic metamodels for the high-fidelity solvers and associated uncertainty quantification of stochastic simulation outputs; (ii) progress in evolutionary type derivative-free algorithms for global optimization; (iii) a new application of the Karhunen-Loève Expansion (KLE) method to - a priori - identify reduced dimensionality representations of large-scale design spaces, truncating basis functions (i.e. design variables) with small significance to the solution. An example of a ship hydrodynamic design optimization in real seas is finally presented.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.