A Hybrid Approach for Forecasting the Technical Anomalies in Sensor-based Water Quality Distribution Data

Kaleeswari Chinnakkaruppan, K. Krishnamoorthy, Senthilrajan Agniraj
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Abstract

The detection of anomalous data from sensor data is the intractable problem in today’s hydrological data monitoring. Hardware malfunctions, power issues, battery life, and efficiency are challenges encountered while employing sensor devices to collect data. In such situations, data that is inconsistent may be recorded. By applying these types of dataset, inaccurate results may be produced when performing classification or other data analytic methods. In order to discover anomalous data from a huge dataset, this paper suggests a hybrid mechanism. Three unsupervised machine learning techniques are used to construct this mechanism. First, this study reduces superfluous data by using Principal Component Analysis (PCA). Isolation Forest (IF) is then used to find outlier scores. Finally, K-means clustering is used to distinguish between abnormal (anomalies) and regular data using a visual representation of cluster assignments. The cluster assessment indices’ criteria were used to evaluate this hybrid approach. According to the findings, this hybrid technique would be suitable for identifying anomalous data inside each data index of the dataset, depending on the target value.
基于传感器的水质分布数据技术异常预测的混合方法
从传感器数据中提取异常数据是当前水文数据监测中的一个棘手问题。硬件故障、电源问题、电池寿命和效率是使用传感器设备收集数据时遇到的挑战。在这种情况下,可能会记录不一致的数据。通过应用这些类型的数据集,在执行分类或其他数据分析方法时可能会产生不准确的结果。为了从海量数据集中发现异常数据,本文提出了一种混合机制。三种无监督机器学习技术用于构建该机制。首先,本研究利用主成分分析(PCA)来减少多余的数据。然后使用隔离森林(IF)查找异常值得分。最后,K-means聚类使用聚类分配的可视化表示来区分异常(异常)和常规数据。采用聚类评价指标标准对该混合方法进行评价。根据研究结果,这种混合技术将适用于识别数据集的每个数据索引中的异常数据,具体取决于目标值。
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