A novel multi-condition multi-objective optimization method that can find Pareto front over a defined condition space is developed using deep reinforcement learning. Unlike the conventional methods which perform optimization at a single condition, the present method learns correlations between conditions and optimal solutions. The exclusive capability of the developed method is examined in solutions of a modified Kursawe benchmark problem and an airfoil shape optimization problem. The solutions include nonlinear characteristics which are difficult to be resolved using conventional optimization methods. Pareto front with high resolution over a condition space is successfully determined in both problems. Compared with multiple operations of a...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and eng...
A multi-condition multi-objective optimization method that can find Pareto front over a defined cond...
Aerodynamic design optimization is a key aspect in aircraft design. The further evolution of advance...
Dynamic multi-objective optimisation problem (DMOP) has brought a great challenge to the reinforceme...
Neuroevolution has been used to train Deep Neural Networks on reinforcement learning problems. A few...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Deep learning models form one of the most powerful machine learning models for the extraction of imp...
Numerical optimization is a technique where a computer is used to explore design parameter combinati...
International audienceThis research gauges the capabilities of deep reinforcement learning (DRL) tec...
This work focuses on an investigation of multi-modality in typical aerodynamic shape optimization pr...
In this paper, utilizing gradient (i.e. derivative) information to navigate through multiobjective o...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and eng...
A multi-condition multi-objective optimization method that can find Pareto front over a defined cond...
Aerodynamic design optimization is a key aspect in aircraft design. The further evolution of advance...
Dynamic multi-objective optimisation problem (DMOP) has brought a great challenge to the reinforceme...
Neuroevolution has been used to train Deep Neural Networks on reinforcement learning problems. A few...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Deep learning models form one of the most powerful machine learning models for the extraction of imp...
Numerical optimization is a technique where a computer is used to explore design parameter combinati...
International audienceThis research gauges the capabilities of deep reinforcement learning (DRL) tec...
This work focuses on an investigation of multi-modality in typical aerodynamic shape optimization pr...
In this paper, utilizing gradient (i.e. derivative) information to navigate through multiobjective o...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and eng...