Seong Hyeon Hong, Benjamin Albia, Tristan Kyzer, Jackson Cornelius, Eric R. Mark, Asha J. Hall, Yi Wang
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引用次数: 0
摘要
本文介绍了一种基于人工神经网络(ANN)的移动机器人非线性模型预测视觉伺服方法。该人工神经网络模型用于状态预测,以缓解基于物理(PB)模型的未知动态和参数不确定性问题。为了提高模型的泛化能力和控制精度,提出了一个两阶段 ANN 训练过程。在预训练阶段,由 PB 运动学模型生成可适应广泛操作范围的高度多样化数据,并首先用于训练 ANN 模型。在第二阶段,利用从实际系统中收集到的测试数据来进一步微调 ANN 权重。我们进行了路径跟踪实验,以比较各种 ANN 模型对非线性模型预测控制和视觉伺服性能的影响。结果证实,预训练阶段对于提高模型泛化是必要的。如果不进行预训练(即仅使用测试数据训练模型),机器人将无法跟踪整个轨道。利用捕获的数据对权重进行微调,可进一步提高跟踪精度,平均提高 0.07-0.15 厘米。
Artificial neural network-based model predictive visual servoing for mobile robots
This paper presents an artificial neural network (ANN)-based nonlinear model predictive visual servoing method for mobile robots. The ANN model is developed for state predictions to mitigate the unknown dynamics and parameter uncertainty issues of the physics-based (PB) model. To enhance both the model generalization and accuracy for control, a two-stage ANN training process is proposed. In a pretraining stage, highly diversified data accommodating broad operating ranges is generated by a PB kinematics model and used to train an ANN model first. In the second stage, the test data collected from the actual system, which is limited in both the diversity and the volume, are employed to further finetune the ANN weights. Path-following experiments are conducted to compare the effects of various ANN models on nonlinear model predictive control and visual servoing performance. The results confirm that the pretraining stage is necessary for improving model generalization. Without pretraining (i.e., model trained only with the test data), the robot fails to follow the entire track. Weight finetuning with the captured data further improves the tracking accuracy by 0.07–0.15 cm on average.
期刊介绍:
Robotica is a forum for the multidisciplinary subject of robotics and encourages developments, applications and research in this important field of automation and robotics with regard to industry, health, education and economic and social aspects of relevance. Coverage includes activities in hostile environments, applications in the service and manufacturing industries, biological robotics, dynamics and kinematics involved in robot design and uses, on-line robots, robot task planning, rehabilitation robotics, sensory perception, software in the widest sense, particularly in respect of programming languages and links with CAD/CAM systems, telerobotics and various other areas. In addition, interest is focused on various Artificial Intelligence topics of theoretical and practical interest.