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Experience inclusion in iterative learning controllers: Fuzzy model based approaches

机译:将经验包含在迭代学习控制器中:基于模糊模型的方法

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摘要

Iterative learning control (ILC) is a new domain in control system that motivates, whether mechanical robots can learn a prescribed ideal motion by themselves using information represented by the measured data gathered in the previous practice. For each new desired trajectory task, the conventional ILC methods have to start its learning with zero initial input assumption. Instead of such zero initial input assumption, in this paper, the idea of using the past trajectory tracking experiences on the initial input selection for tracking new trajectory-tracking tasks have been highlighted. Certain methods of experience inclusion in iterative learning controllers (ILC) are proposed. Approximate fuzzy data model (AFDM) and type-1 fuzzy logic system (FLS) techniques have been adopted for the process of initial input selection. Performance of the proposed fuzzy rule based model-based ILC approaches on initial error reduction and in error convergence issues are proved. Numerical experimentation on a two-link manipulator model with the inclusion of actuator dynamics verifies the performance of the proposed fuzzy model-based ILC approaches. Comparison with existing local learning technique on the selection of initial input for ILC algorithm proves the efficacy of the proposed AFDM and type-1 FLS-based methods.
机译:迭代学习控制(ILC)是控制系统中的一个新领域,它激发了机械机器人是否可以使用以前实践中收集到的测量数据所表示的信息来自己学习规定的理想运动。对于每个新的所需轨迹任务,常规ILC方法必须以零初始输入假设开始学习。代替这种零初始输入假设,在本文中,已经强调了在初始输入选择上使用过去轨迹跟踪经验来跟踪新轨迹跟踪任务的想法。提出了将经验包含在迭代学习控制器(ILC)中的某些方法。初始输入选择过程已采用近似模糊数据模型(AFDM)和类型1模糊逻辑系统(FLS)技术。证明了所提出的基于模糊规则的基于模型的ILC方法在初始误差减少和误差收敛问题上的性能。包含执行器动力学的两连杆机械手模型的数值实验验证了所提出的基于模糊模型的ILC方法的性能。与现有的本地学习技术进行ILC算法初始输入选择的比较证明了所提出的AFDM和基于1型FLS的方法的有效性。

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