Building an Intelligent Testing System for Robotic Systems Based on Sigma-Pi Neural Networks

Zhilov Ruslan
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Abstract

The paper considers the construction of an intelligent testing system for robotic systems based on sigma-pi neural networks. When robots are used on industrial production lines, the task of testing industrial robots for performance arises. There are two ways to solve this problem: routine checks of robots or constant observation of the operator at the robotic line. In this work, an intelligent system based on sigma-pi neural networks is being built, which will be able to solve a similar problem using readings from sensors located at different nodes of the robot. A neural network, pre-trained according to the algorithm that is given in the work, can continuously monitor the state of the robotic complex and make a decision to stop the line in case of suspicion of a breakdown. As an example of the operation of a sigma-pi neural network in this work, an example is given based on 5 input data, that is, data from 5 sensors, normalized according to the principle "there is a signal" or "there is no signal".
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基于Sigma-Pi神经网络的机器人系统智能测试系统的构建
研究了基于神经网络的机器人智能测试系统的构建。当机器人在工业生产线上使用时,测试工业机器人性能的任务就出现了。有两种方法可以解决这个问题:对机器人进行例行检查或对机器人生产线上的操作员进行持续观察。在这项工作中,一个基于sigma-pi神经网络的智能系统正在构建中,它将能够使用位于机器人不同节点的传感器的读数来解决类似的问题。根据工作中给出的算法进行预训练的神经网络可以持续监控机器人综合体的状态,并在怀疑发生故障时做出停止生产线的决定。作为本工作中sigma-pi神经网络的操作示例,给出了一个基于5个输入数据的示例,即来自5个传感器的数据,根据“有信号”或“没有信号”的原则归一化。
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