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Training data selection criteria for detecting failures in industrial robots

机译:培训用于检测工业机器人失败的数据选择标准

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We study the effect of source and type of training data on detecting failures in industrial robots using Principal Component Analysis (PCA). Specifically, using field data across multiple robots performing different tasks, we compare two scenarios: first, where training data obtained from a single robot is used to evaluate multiple robots (one-to-many), and second, where each robot is evaluated on the basis of its own training data (one-to-one). We further investigate if the data preprocessing prior to running PCA affects the ability to detect and predict failures. To reduce task dependence of the raw signal, we preprocess the same by computing the absolute difference between successive measurements and compare the results with a PCA model that is built using raw signal alone and another that is built from a combined signal having both raw measurements and their absolute difference. We quantify effectiveness of detecting failures in terms of three measures: coefficient of variation of the Q-residual obtained by projecting the test data on the PCA model, number of samples above a data-driven confidence threshold, and lead time, measured as the number of days prior to failure when the residual error rises above a given threshold. Specifically, we show that while both one-to-one and one-to-many training sources are valid for detecting failures, signal preprocessing has a significant influence. Our results show that coefficient of variation of the Q-residual from a PCA model built using absolute difference between measurements serves as a robust descriptor for predicting and detecting failure in robots in the one-to-many training scenario. With the same signal, when using number of samples above threshold, we find that one-to-one training source is able to detect failure in robots. Finally, with lead time, we find that one-to-one training scenario with absolute difference as signal type can be used to raise warning as early as nineteen days before failure.
机译:我们研究培训数据的源和类型使用主成分分析(PCA)对工业机器人的故障进行检测。具体而具体地,在执行不同任务的多个机器人上使用现场数据,我们比较了两个场景:首先,在使用从单个机器人获得的培训数据来评估多个机器人(一对多),第二个方案,其中每个机器人都在播放每个机器人自身培训数据(一对一)的基础。我们进一步调查了运行PCA之前的数据预处理是否会影响检测和预测失败的能力。为了降低原始信号的任务依赖性,通过计算连续测量之间的绝对差异,并将结果与​​单独使用原始信号构建的PCA模型的结果进行比较,从而使得从具有原始测量的组合信号构建的PCA模型进行比较。他们的绝对差异。我们量化了三个措施中检测失败的有效性:通过将测试数据投影在PCA模型上,以上数据驱动的置信阈值上方的样本数以及作为数字测量的提前时间来获得的Q剩余的变化系数在剩余误差升高到给定阈值之前失败前的天数。具体而言,我们表明,虽然一对一和一对多训练来源对于检测故障有效,但信号预处理具有显着影响。我们的结果表明,使用测量之间的绝对差异建立的PCA模型的Q-剩余的变化系数用作鲁棒描述符,用于预测和检测机器人中的失败,在一对多训练场景中。利用相同的信号,当使用上述样本数量时,我们发现一对一训练源能够检测机器人的失败。最后,通过提前期间,我们发现一对一培训情景,绝对差异与信号类型可以用于在失败前一到十九天提出警告。

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