IoT systems have been facing increasingly sophisticated technical problems due to the growing complexity of these systems and their fast deployment practices. Consequently, IoT managers have to judiciously detect failures (anomalies) in order to reduce their cyber risk and operational cost. While there is a rich literature on anomaly detection in many IoT-based systems, there is no existing work that documents the use of ML models for anomaly detection in digital agriculture and in smart manufacturing systems. These two application domains pose certain salient technical challenges. In agriculture the data is often sparse, due to the vast areas of farms and the requirement to keep the cost of monitoring low. Second, in both domains, there are multiple types of sensors with varying capabilities and costs. The sensor data characteristics change with the operating point of the environment or machines, such as, the RPM of the motor. The inferencing and the anomaly detection processes therefore have to be calibrated for the operating point. In this paper, we analyze data from sensors deployed in an agricultural farm with data from seven different kinds of sensors, and from an advanced manufacturing testbed with vibration sensors. We evaluate the performance of ARIMA and LSTM models for predicting the time series of sensor data. Then, considering the sparse data from one kind of sensor, we perform transfer learning from a high data rate sensor. We then perform anomaly detection using the predicted sensor data. Taken together, we show how in these two application domains, predictive failure classification can be achieved, thus paving the way for predictive maintenance.
翻译:由于这些系统日益复杂,而且其迅速部署的做法,IoT系统一直面临日益复杂的技术问题;因此,IoT系统管理人员必须明智地发现故障(异常),以减少其网络风险和业务成本;虽然许多基于IoT的系统有大量关于异常检测的文献,但目前没有工作记录数字农业和智能制造系统中使用ML模型来检测异常的异常检测模型的情况,这两个应用领域构成某些突出的技术挑战;在农业中,数据往往很少,因为农场面积广大,而且需要保持较低的监测成本;第二,在这两个领域,都存在多种类型的能力和成本各不相同的传感器;传感器数据特征随着环境或机器的运行点而发生变化,例如发动机的RPM;因此,根据操作点对推断和异常检测过程进行校准;在本文中,我们用来自七种不同传感器的数据分析从这些农业农场部署的传感器获得的数据,以及用振动传感器进行先进的制造测试;第二,我们用不同的方式评估ARIMA和LSTM的多种传感器的传感器的性能,从而从一个传感器的频率数据转换数据。