A robot control application with neural networks

H. Arslan, A. Kuzucu
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引用次数: 5

Abstract

An artificial neural network's inherent nonlinearity gives some advantages to their use on different kinds of problems including those in the control engineering arena. The learning of inverse dynamics with neural networks is an example of robot control applications. The dynamics of nonlinear systems vary with their parameters, and, in some cases, determining a single global model of the plant dynamics can be a very difficult problem. Designing piecewise control laws are useful methods to overcome this problem. In robotics, increasing the degree of freedom and working range of each link directly creates more complex dynamics. The structure of a multilayer perceptron is dependent on the controlled plant and, for more complex systems, large networks are required and this increases the real time calculations of robot control. For the proposed scheme, in order to decrease the real time calculations, the working range of the robot is divided into several regions and, for every region, a separate neural network is used. Instead of learning whole dynamics with one large network, using this kind of strategy, one divides the complexity of the dynamics to small networks. In real time control, this piecewise or regional neural network structure is used together with a PD controller.
一个机器人控制应用与神经网络
人工神经网络固有的非线性特性使其在包括控制工程领域在内的各种问题上都具有一定的优势。用神经网络学习逆动力学是机器人控制应用的一个例子。非线性系统的动力学随其参数而变化,在某些情况下,确定植物动力学的单一全局模型可能是一个非常困难的问题。设计分段控制律是解决这一问题的有效方法。在机器人技术中,增加每个环节的自由度和工作范围会直接产生更复杂的动力学。多层感知器的结构依赖于被控对象,对于更复杂的系统,需要大型网络,这增加了机器人控制的实时计算。在该方案中,为了减少实时计算量,将机器人的工作范围划分为多个区域,并对每个区域使用单独的神经网络。不是用一个大网络来学习整个动力学,而是用这种策略,把动力学的复杂性划分为小网络。在实时控制中,这种分段或区域神经网络结构与PD控制器一起使用。
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