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Anomaly Detection Based on Histogram Methodology and Factor Analysis Using LightGBM for Cooling Systems

机译:基于直方图方法的异常检测和基于LightGBM的冷却系统因素分析

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The development of the Internet of Things (IoT) has created an environment in which numerous sensors and actuators are connected to the Internet. Machines and management systems in factories use data from such sensors and actuators to improve their work efficiency, and are essential parts of today’s smart factories. The vision of a smart factory is based on the concept of Industry 4.0 (I4.0), a subset of the fourth industrial revolution, in which smart factories support the operator and maintenance processes of the factory from an I4.0 perspective. The analysis of big data gathered by IoT devices in factories, particularly for the use of anomaly detection, can aid in achieving product quality stabilization. For example, if a large refrigerator in a warehouse breaks down, the quality of stock food will deteriorate, and food loss may become significant. In the case of anomaly detection, machine status monitoring and accident prediction are required to reduce the operation and maintenance costs. Furthermore, the introduction cost of such systems can be reduced by generalizing them (the systems). However, the data types as well as the sensor and actuator types, differ between factories. Therefore, nonparametric statistical methods are required for anomaly detection. By contrast, factor analysis requires a costless method, one that does not require an overhaul of machinery. Consequently, it is necessary to adopt a machine learning-based method using sampled data. In this study, we proposed a method of anomaly detection and factor analysis for cooling systems in smart factories using appropriate methodologies for detection and analysis. The proposed method consists of two phases: anomaly detection and factor analysis. In the anomaly detection stage, Gaussian kernel density estimation was used to calculate the occurrence distribution. Two types of anomaly scores, cumulative density value and KL divergence, were defined. The probability distribution was estimated with a constant window frame to reflect a tendency to increase. In the factor analysis stage, target values were predicted using LightGBM. The factor of abnormalities was detected by comparing the results of two predictions: one using all the features, and the other using the data, which excluded a factor to detect the contribution of the factor.
机译:物联网(IoT)的发展创造了一个环境,其中大量传感器和执行器连接到Internet。工厂中的机器和管理系统使用来自此类传感器和执行器的数据来提高其工作效率,并且是当今智能工厂的重要组成部分。智能工厂的愿景基于工业4.0(I4.0)概念,它是第四次工业革命的子集,其中智能工厂从I4.0角度支持工厂的操作员和维护过程。对工厂中由IoT设备收集的大数据进行分析,尤其是对异常检测的使用,可以帮助实现产品质量的稳定。例如,如果仓库中的大型冰箱发生故障,库存食物的质量将变差,食物损失可能会变得很大。在异常检测的情况下,需要机器状态监视和事故预测以减少运行和维护成本。此外,可以通过归纳这些系统(系统)来降低此类系统的引入成本。但是,数据类型以及传感器和执行器类型在工厂之间有所不同。因此,异常检测需要非参数统计方法。相比之下,因素分析需要一种无成本的方法,而该方法不需要机械的大修。因此,有必要采用一种使用采样数据的基于机器学习的方法。在这项研究中,我们提出了一种使用适当的检测和分析方法对智能工厂中的冷却系统进行异常检测和因子分析的方法。所提出的方法包括两个阶段:异常检测和因素分析。在异常检测阶段,使用高斯核密度估计来计算发生分布。定义了两种类型的异常评分,即累积密度值和KL散度。用恒定的窗框估计概率分布以反映增加的趋势。在因子分析阶段,使用LightGBM预测目标值。通过比较两个预测的结果来检测异常因素:一个使用所有特征,另一个使用数据,其中排除了一个因素以检测该因素的贡献。

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