基于NARX的窃电检测用户负荷预测

Abdullateef Ayodele Isqeel, Salami Momoh-Jimoh Eyiomika, Tijani Bayo Ismaeel
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引用次数: 6

摘要

各种负荷预测技术已广泛应用于各级能源管理。然而,用于预测的数据是累积的能源数据,它揭示了消费者而不是个人消费者在配电网上的活动。个人消费者数据对于实时预测、监测和检测电力盗窃至关重要。本文提出了一种基于用户负荷预测的非线性自回归外生输入(NARX)网络监测个体用户的新方法。使用从用户负荷原型中获得的一个月平均能耗数据。因此,实现了5分钟步进负荷预测。该NARX结构基于9个隐藏神经元和2个点接延迟,并使用贝叶斯调节反向传播技术训练网络。该数据集共包含8928个数据点,代表一个月内每隔5分钟消耗的能量。将数据按70:30的比例分成两组,分别进行训练和验证。训练数据等于6206,验证数据等于2722。采用MATLAB环境对数据进行处理。训练和验证的MSE分别为0.0225和0.0533,训练总时间为0.016s。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consumer Load Prediction Based on NARX for Electricity Theft Detection
A range of load prediction techniques has largely been used for energy management at various levels. However, the data used for the prediction are cumulative energy data, which reveal the activities of consumers and not individual consumer, on the distribution power network. Individual consumer data is essential for real time prediction, monitoring and detect of electricity theft. A new approach of monitoring individual consumer based on consumer load prediction using nonlinear autoregressive with eXogenous input (NARX) network is considered in this study. One month average energy consumption data acquired from consumer load prototype developed was used. Consequently, 5-minute step ahead load prediction was achieved. The NARX architecture was based on nine hidden neurons and two tapped delay and the network trained using Bayesian regulation backpropagation technique. The data set contains a total of 8928 data points representing energy consumed at five minute interval for one month. The data was divided into two sets at ratio 70:30 for training and validation, respectively. The training data equals 6206 while the validation data is 2722. MATLAB environment was used for the processing of the data. The training and validation MSE is 0.0225 and 0.0533 respectively, while the total time for the training is 0.016s.
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