A Hybrid Approach for Outlier Detection in Weather Sensor Data

Bharti Saneja, Rinkle Rani
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引用次数: 4

Abstract

IoT and big data technologies have embarked the modern data science. As nowadays lots of data have been generated from wireless sensors connected via a network. Detecting anomalous events in this large amount of data is the topic undergoing intense study among researchers. Most of the existing solutions for the detection of anomalous events in big data are based on machine learning models. The proposed technique is a hybrid approach to detect outliers in weather sensor data. The approach comprises of three phases. Initially, for handling big data efficiently, dimensionality reduction is performed in the first phase. In the second phase, the detection of anomalous events is done using multiple classifiers. Finally in the third phase, for final classification, the results of the different classifiers are combined. With the aid of the proposed approach, we can extract the meaningful information from a complex dataset. It can be perceived from the experimental results that the proposed approach outperforms the various state-of-the-art algorithms for outlier detection.
天气传感器数据异常点检测的混合方法
物联网和大数据技术开启了现代数据科学。如今,许多数据都是由通过网络连接的无线传感器产生的。在如此庞大的数据量中检测异常事件是研究者们研究的热点。现有的大数据异常事件检测方案大多基于机器学习模型。提出的技术是一种混合方法来检测天气传感器数据中的异常值。该方法包括三个阶段。首先,为了有效地处理大数据,在第一阶段进行降维。在第二阶段,使用多个分类器来检测异常事件。最后,在第三阶段,将不同分类器的结果结合起来进行最终分类。利用该方法,我们可以从复杂的数据集中提取有意义的信息。从实验结果可以看出,所提出的方法优于各种最先进的离群值检测算法。
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