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An optimal scheduling of pick place operations of a robot-vision-tracking system by using back-propagation and Hamming networks

机译:使用反向传播和汉敏网络,最佳调度机器人视觉跟踪系统的拣选位置操作

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The authors present a neural network approach to solve the dynamic scheduling problem for pick-place operations of a robot-vision-tracking system. An optimal scheduling problem is formulated to minimize robot processing time without constraint violations. This is a real-time optimization problem which must be repeated for each group of objects. A scheme which uses neural networks to learn the mapping from object pattern space to optimal order space offline and to recall online what has been learned is presented. The idea was implemented in a real system to solve a problem in large commercial dishwashing operations. Experimental results have been shown that with four different objects, time savings of up to 21% are possible over first-come, first-served schemes currently used in industry.
机译:作者提出了一种神经网络方法来解决机器人视觉跟踪系统的拣选操作的动态调度问题。 制定了最佳调度问题以最小化没有约束违规的机器人处理时间。 这是一个实时优化问题,必须为每组对象重复。 一种使用神经网络从对象模式空间中映射到最佳订单空间的方案,并在线召回呈现的内容。 该想法是在一个真实的系统中实施,以解决大型商业洗碗操作中的问题。 实验结果表明,具有四种不同的物体,最多可节省21%的时间,目前在工业中使用的一级方案是可能的。

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