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Anomaly Identification in A Liquid-Coffee Vending Machine Using Electrical Current Waveforms

机译:使用电流波形识别液体咖啡自动售货机中的异常

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This paper proposes an anomaly identification method for a liquid-coffee vending machine using electrical current waveforms. The method consists of preprocessing of a series of current values collected from the machine, training of multiple classifiers corresponding to individual target anomalous operations, and anomaly detection by means of the classifiers. Preprocessing improves detection accuracy by excluding current values that represent non-target operations. Multiple classifiers corresponding to individual target operations are trained using pre-processed data and the ground truth. An operation with the maximum likelihood normalized by the total number of individual operations is identified as the current anomaly. Evaluations using electrical current values obtained from an actual coffee vending machine shows a false positive rate and a false negative rate of, respectively, 0% and 6.7%, for lack of beans and 2% and 0% for water leakage, both of which are major reasons for degraded coffee quality.
机译:提出了一种利用电流波形对液体咖啡自动售货机进行异常识别的方法。该方法包括对从机器收集的一系列当前值进行预处理,训练与单个目标异常操作相对应的多个分类器以及通过分类器进行异常检测。预处理通过排除代表非目标操作的当前值来提高检测精度。使用预处理的数据和基本事实训练对应于单个目标操作的多个分类器。通过单个操作总数归一化的可能性最大的操作被标识为当前异常。使用从实际的咖啡自动售货机获得的电流值进行的评估显示,对于缺少豆子,假阳性率和假阴性率分别为0%和6.7%,对于漏水,分别为2%和0%,这两者都是咖啡质量下降的主要原因。

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