基于k均值、隔离森林和局部离群因子的智能水产养殖单变量感知时间序列数据异常检测

Aleksandar Petkovski, Visar Shehu
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引用次数: 1

摘要

水产养殖在经济发展和粮食生产中具有重要意义。维持良好水质的生态环境是保证水产养殖高效质量化的最关键环节。良好的水质管理可以避免异常情况的发生,对未来的粮食安全有重要贡献。检测异常情况可确保水产养殖环境得到适当维护,以满足健康和适当的养鱼要求。本文的主要重点是使用机器学习方法来检测水产养殖环境中水质数据的异常。它提出了三种机器学习异常检测技术的分析:k均值聚类,局部离群因子和隔离森林。利用从现实物联网水产养殖系统中获得的多个传感器数据集,对上述技术进行了广泛的分析,特别是温度、溶解氧和ph参数。评估分析表明,K-Means和隔离森林异常检测方法在检测这三个水产养殖参数的异常方面显示出良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection on Univariate Sensing Time Series Data for Smart Aquaculture Using K-Means, Isolation Forest, and Local Outlier Factor
Aquaculture has a great importance in economic development and food production. Maintaining an ecological environment with good water quality is the most critical link to ensure the efficient and qualitative of aquaculture. Good management of the water quality can avoid occurrence of abnormal conditions and significantly contribute to secure food in the future. Detection of anomalies ensures that the aquaculture environment is maintained properly to meet healthy and proper requirements for fish farming. The main focus of this paper is the use of machine learning approaches to detect anomalies for water quality data in aquaculture environment. It presents an analysis of three machine learning anomaly detection techniques: the K-Means clustering, the Local Outlier Factor, and the Isolation Forest. Extensive analysis of the mentioned techniques was conducted using several sensor datasets obtained from a real-world IoT aquaculture system, specifically for the parameters of temperature, dissolved oxygen, and pH. The evaluation analysis reveals that K-Means and Isolation Forest anomaly detection methods show promising results in detecting anomalies for the three aquaculture parameters.
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