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Calibration of 6 axis force/torque sensor by using deep-learning method

机译:深度学习法校准六轴力/扭矩传感器

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The force/torque sensor is a important tool that gives a robot an ability to interact with environments. Calibration is essential for these force/torque sensors to convert the raw sensor values to accurate forces and torques. However, in practice, the multi-axis force/torque sensor requires complex multi-step data processing, because of the coupling effects and nonlinearity of sensors. Moreover, accuracy is not guaranteed. To solve this problem, we propose an accurate force/torque sensor calibration method that can calibrate the sensor in single step by using deep-learning algorithm, and introduce the method for modeling the DNN(deep neural network) used in this calibration process. In addition, we verify the calibration results through several experiments.
机译:力/扭矩传感器是使机器人能够与环境互动的重要工具。校准对于这些力/扭矩传感器至关重要,以便将原始传感器值转换为准确的力和扭矩。然而,实际上,由于传感器的耦合效应和非线性,多轴力/扭矩传感器需要复杂的多步数据处理。而且,不能保证准确性。为了解决这个问题,我们提出了一种精确的力/扭矩传感器校准方法,该方法可以使用深度学习算法一步一步地校准传感器,并介绍了用于此校准过程的DNN(深度神经网络)建模方法。此外,我们通过几次实验验证了校准结果。

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