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Study on control methods based on identification of unmanned vehicle model

机译:基于无人驾驶车型识别的控制方法研究

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This paper presents the results of nonlinear model identification of an unmanned vehicle in the Gazebo simulator based on a neural network autoregressive model. The dynamic characteristics of the control object can vary significantly that complicates the problem. The training sample of movement along the spatial path was obtained at the Robotics Center of the FRC CSC RAS. The model parameters were found by the particle swarm optimization method. Using the identified model, real-time control methods were experimentally compared. For a more accurate assessment of the methods, the model was subjected to random disturbances, and the tracking path of the control object was significantly complicated.
机译:本文基于神经网络自回归模型,介绍了凉亭模拟器中无人驾驶车辆非线性模型识别的结果。 控制对象的动态特性可以显着变化,使问题复杂化。 在FRC CSC Ras的机器人中心获得沿空间路径的运动训练样本。 通过粒子群优化方法发现了模型参数。 使用所识别的模型,实时控制方法进行了实验比较。 为了更准确的方法评估方法,该模型经受随机干扰,控制对象的跟踪路径显着复杂。

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