论文标题

使用深度强化学习玩光学镊子:在虚拟,物理和增强环境中

Playing optical tweezers with deep reinforcement learning: in virtual, physical and augmented environments

论文作者

Praeger, Matthew, Xie, Yunhui, Grant-Jacob, James A., Eason, Robert W., Mills, Ben

论文摘要

在模拟环境中进行了增强学习,以学习对多个电机轴的连续速度控制。然后将其应用于现实世界的光学镊子实验,其目的是将激光捕获的微球移至目标位置,同时避免与其他自由移动的微球发生碰撞。在虚拟环境中训练神经网络的概念在应用机器学习以进行实验优化和控制方面具有巨大的潜力,因为神经网络可以发现解决问题的最佳方法,而不会受到设备损坏的风险,并且不受物理环境中的运动限制的速度。当神经网络同时处理虚拟环境和物理环境时,我们表明该网络也可以应用于增强环境,在该环境中,在该环境中,虚拟环境与物理环境结合在一起。该技术可能有可能解锁与混合现实和增强现实相关的功能,例如为机器运动执行安全限制或作为从其他传感器中输入观测值的方法。

Reinforcement learning was carried out in a simulated environment to learn continuous velocity control over multiple motor axes. This was then applied to a real-world optical tweezers experiment with the objective of moving a laser-trapped microsphere to a target location whilst avoiding collisions with other free-moving microspheres. The concept of training a neural network in a virtual environment has significant potential in the application of machine learning for experimental optimization and control, as the neural network can discover optimal methods for problem solving without the risk of damage to equipment, and at a speed not limited by movement in the physical environment. As the neural network treats both virtual and physical environments equivalently, we show that the network can also be applied to an augmented environment, where a virtual environment is combined with the physical environment. This technique may have the potential to unlock capabilities associated with mixed and augmented reality, such as enforcing safety limits for machine motion or as a method of inputting observations from additional sensors.

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