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Multi-Agent-Based Unsupervised Detection of Energy Consumption Anomalies on Smart Campus

机译:基于多Agent的智能园区能耗异常的无监督检测

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摘要

The smart campus is becoming a reality with the advancement of information and communication technologies. For energy efficiency, it is essential to detect abnormal energy consumption in a smart campus, which is important for a "smart" campus. However, the obtained data are usually continuously generated by ubiquitous sensing devices, and the abnormal patterns hidden in the data are usually unknown, which makes detecting anomalies in such a context more challenging. Moreover, evaluating the quality of anomaly detection algorithms is difficult without labeled datasets. If the data are annotated well, classical criteria such as the receiver operating characteristic or precision recall curves can be used to compare the performance of different anomaly detection algorithms. In a smart campus environment, it is difficult to acquire labeled data to train a model due to the limited capabilities of the sensing devices. Therefore, distributed intelligence is preferred. In this paper, we present a multi-agent-based unsupervised anomaly detection method. We tackle these challenges in two stages with this method. First, we label the data using ensemble models. Second, we propose a method based on deep learning techniques to detect anomalies in an unsupervised fashion. The result of the first stage is used to evaluate the performance of the proposed method. We validate the proposed method with several datasets, and the experimental results demonstrate the effectiveness of our method.
机译:随着信息和通信技术的发展,智能校园正在成为现实。为了提高能效,检测智能园区中的异常能耗至关重要,这对于“智能”园区至关重要。然而,获得的数据通常是由无处不在的传感设备连续产生的,并且隐藏在数据中的异常模式通常是未知的,这使得在这种情况下检测异常更具挑战性。此外,如果没有标记的数据集,则很难评估异常检测算法的质量。如果数据注释正确,则可以使用经典标准(例如接收器工作特性或精确召回曲线)来比较不同异常检测算法的性能。在智能校园环境中,由于感测设备的功能有限,很难获取标记的数据来训练模型。因此,首选分布式智能。在本文中,我们提出了一种基于多主体的无监督异常检测方法。我们使用这种方法分两个阶段应对这些挑战。首先,我们使用集合模型标记数据。其次,我们提出了一种基于深度学习技术的无监督方式检测异常的方法。第一阶段的结果用于评估所提出方法的性能。我们用几个数据集验证了该方法的有效性,实验结果证明了该方法的有效性。

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