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2-D Pole Balancing with Recurrent Evolutionary Networks

机译:2-D杆平衡与经常性进化网络

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The success of evolutionary methods on standard control learning tasks has created a need for new benchmarks. The classic pole balancing problem is no longer difficult enough to serve as a viable yardstick for measuring the learning efficiency of these systems. In this paper we present a more difficult version to the classic problem where the cart and pole can move in a plane. We demonstrate a neuroevolution system (Enforced Sub-Populations, or ESP) that can solve this difficult problem without velocity information.
机译:对标准控制学习任务的进化方法的成功创造了对新基准的需求。经典杆平衡问题不再难以充分利用作为测量这些系统的学习效率的可行的尺度。在本文中,我们向购物车和杆可以在平面中移动的经典问题提供了更困难的版本。我们展示了一个神经系统的系统(强制子群体,或ESP),可以解决这种难题而不速度信息。

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