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首页> 外文期刊>SIAM Journal on Scientific Computing >REINFORCEMENT LEARNING AND WAVELET ADAPTED VORTEX METHODS FOR SIMULATIONS OF SELF-PROPELLED SWIMMERS
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REINFORCEMENT LEARNING AND WAVELET ADAPTED VORTEX METHODS FOR SIMULATIONS OF SELF-PROPELLED SWIMMERS

机译:自我学习型游泳者的强化学习和小波自适应涡旋方法

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摘要

We present a numerical method for the simulation of collective hydrodynamics in self-propelled swimmers. Swimmers in a viscous incompressible flow are simulated with a remeshed vortex method coupled with Brinkman penalization and projection approach. The remeshed vortex methods are enhanced via wavelet based adaptivity in space and time. The method is validated on benchmark swimming problems. Furthermore the flow solver is integrated with a reinforcement learning algorithm, such that swimmers can learn to adapt their motion so as to optimally achieve a specified goal, such as fish schooling. The computational efficiency of the wavelet adapted remeshed vortex method is a key aspect for the effective coupling with learning algorithms. The suitability of this approach for the identification of swimming behaviors is assessed on a set of learning tasks.
机译:我们提出了一种数值方法,用于模拟自行游泳运动员的集体流体动力学。游泳者在粘性不可压缩流中采用修正的涡流方法以及Brinkman罚分和投影方法进行模拟。通过基于小波的时空适应性,改进了涡旋方法。该方法在基准游泳问题上得到了验证。此外,流量解算器还集成了强化学习算法,以便游泳者可以学习调整自己的运动,从而最佳地实现特定目标,例如养鱼。小波自适应修正涡旋方法的计算效率是有效结合学习算法的关键方面。在一组学习任务上评估了这种方法对游泳行为识别的适用性。

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