智能农场电能消耗异常检测

Yi-Bing Lin;Yun-Wei Lin;Ling-Han Kao
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引用次数: 2

摘要

电能预测是一个重要的问题,已经研究了很多年。预测方法从传统的统计方法、传统的机器学习方法、深度学习(DL)方法,到混合深度学习方法。本文提出了ElectricityTalk,这是一个用于智能农场的物联网(IoT)平台,它将人工智能(AI)机制与农业物联网设备集成在一起,用于电能预测和异常检测。被称为AItalk的人工智能机制是用改进的卷积神经网络(CNN)和长短期记忆模型设计的。传统的电能预测方法只考虑智能电表提供的信息。本文表明,在智能农场中添加了额外的物联网开关状态信息,并使用简单新颖的随机行走模型进行后处理,与没有农业物联网开关信息的AI机制相比,ElectricityTalk的性能显著提高(34.5%)。我们表明,AItalk的平均绝对百分比误差为8.62%(对于UCI数据集)和1.53%(对于Bao农场数据集),这优于以前的解决方案。我们还表明,ElectricityTalk可以检测到真实农场操作中的所有异常,并且可以实现1的召回率和大于0.994的精度,这也优于以前的解决方案。特别是,我们的机制可以在三分钟内检测到所有异常,这在以前的研究中没有报道过。
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 for Electric Energy Consumption in Smart Farms
Electric energy prediction is an important issue and has been studied for many years. The prediction approaches have evolved from traditional statistical methods, conventional machine learning methods, deep learning (DL) methods, and then hybrid deep learning methods. This article proposes ElectricityTalk, an Internet of Things (IoT) platform for smart farms, which integrates the artificial intelligence (AI) mechanism with farming IoT devices for electric energy prediction and anomaly detection. The AI mechanism called AItalk is designed with modified convolution neural network (CNN) and long short-term memory models. Traditional electric energy prediction approaches only consider the information provided by smart meters. This article shows that with the extra IoT switch status information in the smart farm and postprocessing with a simple yet novel random walk model, the performance of ElectricityTalk is significantly improved (by 34.5%) as compared with the AI mechanism without the farming IoT switch information. We show that the mean absolute percentage error of AItalk is 8.62% (for the UCI dataset) and 1.53% (for the Bao farm dataset), which outperforms the previous solutions. We also show that ElectricityTalk detects all anomalies in real farm operations, and can achieve recall of 1 and precision larger than 0.994, which also outperforms the previous solutions. In particular, our mechanism can detect all anomalies in three minutes, which has not been reported in previous studies.
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