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A Kernel Connectivity-based Outlier Factor Algorithm for Rare Data Detection in a Baking Process ?

机译:基于内核连通性的异常因素算法,用于烘焙过程中的稀有数据检测

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Due to strict legislation on greenhouse gas emission reduction, energy intensive industries include the bakery industry are all under pressure to improve the energy efficiency in the manufacturing processes. In this paper, an energy monitoring system developed through the Point Energy Technology from the research group is first introduced for the data collection in a local bakery company. The outliers in the collected data may include valuable information about the status of machines, however, they also affect the data quality and the accuracy of the consequent data analysis. This paper discusses two algorithms for outlier detection, connectivity-based outlier factor (COF) and local outlier factor (LOF). For COF, the concept of connectivity-based outlier facto is adopted to identify whether an object is an outlier. For LOF, the local outlier factor based on a notion of local density represents the level of an object being an outlier. Experiments are conducted on the dataset from the oven in a production line to evaluate the effectiveness of three kernel functions, namely the Gaussian kernel, the Laplacian kernel and polynomial kernel. The experimental results show that the Gaussian-COF and the Laplacian-COF are more effective on valid oven data detection, which is significant for the further research work on energy management in the bakery company.
机译:由于有关减少温室气体排放的严格立法,能源密集型行业(包括烘焙行业)都面临着提高制造过程中能源效率的压力。在本文中,首先引入了由研究组通过Point Energy Technology开发的能量监控系统,用于在当地一家面包店公司中进行数据收集。收集的数据中的异常值可能包括有关机器状态的有价值的信息,但是,它们也影响数据质量和后续数据分析的准确性。本文讨论了两种用于离群值检测的算法:基于连接的离群值因子(COF)和局部离群值因子(LOF)。对于COF,采用基于连接性的异常事实的概念来识别对象是否为异常值。对于LOF,基于局部密度概念的局部离群因子表示对象的离群水平。在生产线的烤箱中对数据集进行实验,以评估三个核函数(即高斯核,拉普拉斯核和​​多项式核)的有效性。实验结果表明,高斯-COF和拉普拉斯-COF在有效的烤箱数据检测方面更有效,这对于面包店能源管理的进一步研究工作具有重要意义。

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