Efficient Detection of Appliance Consumption Pattern by Using Level-CrossingSampling

S. Qaisar, F. Alsharif
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Abstract

In modern countries, the concept of using smart meters grows quickly. The smart grid stakeholders need to be provided with a comprehensive metering data collection and analysis. Time invariant is the conventional data sampling method. As a consequence, a significant amount of excessive data is collected, stored and processed. This deficiency is overcome by the use of level-crossing sampling technique. It allows data compression in real time. Subsequently, modern adaptive rate techniques are used for data segmentation and extraction functions. The related characteristics for the usage habits of appliances are then used to classify them.It is realized by the use of the mature classification technique of Artificial Neural Network. The findings achievesa 4.5-fold increase in compression and the processing capacity of the proposed system while preserving 95.9 percent accuracy of identification.
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基于水平交叉抽样的电器消费模式有效检测
在现代国家,使用智能电表的概念发展迅速。智能电网的利益相关者需要提供全面的计量数据收集和分析。时间不变是传统的数据采样方法。因此,大量多余的数据被收集、存储和处理。利用平交采样技术克服了这一缺陷。它允许实时压缩数据。随后,采用现代自适应速率技术对数据进行分割和提取。然后使用电器使用习惯的相关特征对它们进行分类。它是利用成熟的人工神经网络分类技术来实现的。研究结果使系统的压缩和处理能力提高了4.5倍,同时保持了95.9%的识别准确率。
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