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Robotic motion control using machine learning techniques

机译:使用机器学习技术的机器人运动控制

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This paper proposes a new technique for path planning of mobile robotic locomotion using a multi-layered Auto Resonance Network (ARN). Architecture of these networks is different from the Convolutional Neural Networks and other related structures used in Deep Learning methods for image recognition and game playing. The proposed network can search through space to find multiple paths around obstacles. They can also be used for solving the Movers' Problem in a work area cluttered with obstacles. When the network is used for joint control, required joint angles and torque can be interpolated without any need for computation of non-linear inverse kinematic expressions generally used for such problems. The proposed structure combines features of Auto Resonance Network and Self Organizing Maps. Cells in lower layers map input to output using a ARN like structure. These nodes are perturbed to generate a local SOM like structure. Higher layers can identify and optimize the paths that can be used to solve motion problems. These ANNs have been implemented using R simulation language. Results of the implementation for three segment joint with six Degrees of Freedom (DoF) are presented in this paper.
机译:本文提出了一种使用多层自动共振网络(ARN)的移动机器人运动路径规划的新技术。这些网络的架构不同于卷积神经网络和深度学习方法中用于图像识别和游戏的其他相关结构。拟议的网络可以在太空中搜索以找到障碍物附近的多条路径。它们还可以用于在杂乱无章的工作区域中解决“搬运工”问题。当该网络用于关节控制时,可以插入所需的关节角度和扭矩,而无需计算通常用于此类问题的非线性逆运动学表达式。拟议的结构结合了自动共振网络和自组织图的功能。较低层的单元使用类似ARN的结构将输入映射为输出。这些节点受到干扰,以生成类似本地SOM的结构。高层可以识别和优化可用于解决运动问题的路径。这些ANN已使用R模拟语言实现。本文介绍了具有六个自由度(DoF)的三段式关节的实施结果。

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