面向实时过程优化的工业机器人任务时间的神经网络映射

IF 2.9 Q2 ROBOTICS Robotics Pub Date : 2023-10-12 DOI:10.3390/robotics12050143
Paolo Righettini, Roberto Strada, Filippo Cortinovis
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引用次数: 0

摘要

预测工业机器人执行不确定性任务的最大性能的能力可以通过基于时间的计划和调度策略来提高过程生产率。这些策略需要实时配置和比较大量的任务来做出决策;因此,需要一种高效的任务执行时间估计方法。在这项工作中,我们提出使用神经网络模型来近似通用多自由度机器人的任务时间函数;模型的训练使用从复杂的运动规划算法中获得的数据,该算法考虑到机器人的运动学和动力学模型,优化了轨迹形状和执行的运动规律。为了调度目的,我们建议只评估神经网络模型,从而将运动规划软件的在线使用限制在实际调度任务的完整定义上。所提出的神经网络模型具有统一的接口和易于适应一般机器人和任务的实现过程。结果表明,该模型比全规划管道模型更准确,效率更高,评估时间与实时流程优化相适应。
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Neural Network Mapping of Industrial Robots’ Task Times for Real-Time Process Optimization
The ability to predict the maximal performance of an industrial robot executing non-deterministic tasks can improve process productivity through time-based planning and scheduling strategies. These strategies require the configuration and the comparison of a large number of tasks in real time for making a decision; therefore, an efficient task execution time estimation method is required. In this work, we propose the use of neural network models to approximate the task time function of a generic multi-DOF robot; the models are trained using data obtained from sophisticated motion planning algorithms that optimize the shape of the trajectory and the executed motion law, taking into account the kinematic and dynamic model of the robot. For scheduling purposes, we propose to evaluate only the neural network models, thus confining the online use of the motion planning software to the full definition of the actually scheduled task. The proposed neural network model presents a uniform interface and an implementation procedure that is easily adaptable to generic robots and tasks. The paper’s results show that the models are accurate and more efficient than the full planning pipeline, having evaluation times compatible with real-time process optimization.
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来源期刊
Robotics
Robotics Mathematics-Control and Optimization
CiteScore
6.70
自引率
8.10%
发文量
114
审稿时长
11 weeks
期刊介绍: Robotics publishes original papers, technical reports, case studies, review papers and tutorials in all the aspects of robotics. Special Issues devoted to important topics in advanced robotics will be published from time to time. It particularly welcomes those emerging methodologies and techniques which bridge theoretical studies and applications and have significant potential for real-world applications. It provides a forum for information exchange between professionals, academicians and engineers who are working in the area of robotics, helping them to disseminate research findings and to learn from each other’s work. Suitable topics include, but are not limited to: -intelligent robotics, mechatronics, and biomimetics -novel and biologically-inspired robotics -modelling, identification and control of robotic systems -biomedical, rehabilitation and surgical robotics -exoskeletons, prosthetics and artificial organs -AI, neural networks and fuzzy logic in robotics -multimodality human-machine interaction -wireless sensor networks for robot navigation -multi-sensor data fusion and SLAM
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