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首页> 外文期刊>Engineering Applications of Artificial Intelligence >An incremental unsupervised learning based trajectory controller for a 4 wheeled skid steer mobile robot
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An incremental unsupervised learning based trajectory controller for a 4 wheeled skid steer mobile robot

机译:四轮滑移转向移动机器人的增量式无监督学习轨迹控制器

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摘要

This paper proposes a trajectory controller for a 4-wheel skid steering mobile robot designed for use in an oil palm plantation. The nature of the working environment requires adaptive control to eliminate noise and to learn necessary variations on-the-go. The proposed control system is based on the Enhanced Self Organizing Incremental Neural Network (ESOINN), and is able to produce exceptional trajectory control without the use of a kinematic / dynamic model of the mobile robot by training the network with measured trajectory data as well as simulated data by incremental learning. Our simulation results show that the ESOINN is able to adapt to new training samples and errors have been reduced after only a few iterations of incremental learning. The RMSE error of the output of the initial network was reduced by almost 50% after 3 stages of incremental learning. When comparing training times, ESOINN had a much faster computation time with each consecutive incremental learning instance as compared to other non-incremental methods such as self-organizing maps (SOM), K-means clustering and an adaptive Neural Network. In addition, ESOINN produced improved performance after each consecutive stage of learning, proving its reliability, unlike the other mentioned methods, which gave varied performance during each stage.
机译:本文提出了一种用于油棕种植园的四轮滑移转向移动机器人的轨迹控制器。工作环境的本质要求自适应控制,以消除噪音并随时随地学习必要的变化。所提出的控制系统基于增强型自组织增量神经网络(ESOINN),并且能够通过使用测量的轨迹数据以及训练网络训练移动网络,从而在不使用移动机器人运动学/动力学模型的情况下产生出色的轨迹控制。通过增量学习模拟数据。我们的仿真结果表明,ESOINN能够适应新的训练样本,并且仅在进行了几次增量学习迭代后,错误率得以降低。经过三个阶段的增量学习,初始网络输出的RMSE误差减少了近50%。在比较训练时间时,与其他非增量方法(例如自组织图(SOM),K均值聚类和自适应神经网络)相比,ESOINN在每个连续的增量学习实例中的计算时间要快得多。此外,与其他提到的方法不同,ESOINN在学习的每个连续阶段后均提高了性能,证明了其可靠性,而在其他每个阶段都给出了不同的性能。

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