基于智能电表数据的住宅用户

Muhammad Athar Shah, I. A. Sajjad, Muhammad Faisal Nadeem Khan, Muhammad Muzaffar Iqbal, Rehan Liaqat, Muhammad Zafar Shah
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引用次数: 4

摘要

传统电力系统向小型、智能、高效的微电网的分散,强调了对分级短期负荷预测的要求。随着电力系统的这种转变,家庭短期负荷预测的假设也随之发展。然而,个别客户的负荷情况的波动和不确定性使其难以预测。本文介绍了三种基于机器学习的方法的实现和比较,利用几个主要电器的消费数据准确预测电表级总需求。预测技术包括前馈神经网络(FNN)、长短期记忆(LSTM)网络和基于粒子群优化(PSO)的FNN。结果表明,PSO-FNN具有更好的预测精度,而传统的FNN具有更好的计算效率。
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Residential Customers Based on Smart Meter’s Data
Decentralization of conventional power system into small scale, smart and efficient micro-grids emphasizes the requirement of short-term load forecasting on the minute level. The postulation of short-term load forecasting for household level has evolved with this transition in the power system. However, fluctuations and uncertainty in the load profile of individual customers make it difficult to predict. This paper presents the implementation and comparison of three machine learning based approaches to accurately forecast the meter level aggregate demand using consumption data of a few major appliances. The forecasting techniques include the feed-forward neural network (FNN), long short-term memory (LSTM) network and particle swarm optimization (PSO) based FNN. The results prove that PSO-FNN exhibits better forecasting accuracy while the conventional FNN has better computational efficiency.
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