基于物联网的在线负荷预测

A. Saber, T. Khandelwal
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引用次数: 10

摘要

负荷预测是一种数据密集型的统计方法。基于物联网(IoT)的在线负荷预测(LF)从互联网上按需收集这些数据,然后进行快速统计和优化方法进行高效预测。基于物联网的在线LF不仅依赖于电力系统的特性,还依赖于互联网、机器对机器(M2M)连接、通信和计算设施。智能电网技术在更好的利用率、可靠性、稳定性和可控性方面的局限性使其与传统的负荷预测有所不同。电力系统通常是大型、复杂和分布式的。在本研究中,负荷数据是从智能电表中收集的,并作为历史负荷数据存储。然而,给定地理位置的天气数据,包括温度、湿度、风速、风向、热量、阳光、太阳辐射、降雨等,都是在网上按需收集的,精度很高。计算分两步完成:首先训练神经网络来映射负载的动态,然后对神经网络权值进行优化以提高整体预测误差。神经网络是映射复杂关系的有效数学工具。另一方面,粒子群优化(PSO)是最有前途的基于群体的优化工具。结果表明,本文提出的在线短期负荷预测方法在物联网中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Based Online Load Forecasting
Load forecasting is a data intensive statistical method. Internet of things (IoT) based online load forecasting (LF) collects those data from internet on demand and then performs fast statistical and optimization methods for forecasting efficiently. IoT based online LF not only depends on power systems properties, but also internet, machine-to-machine (M2M) connections, communications and computation facilities. Limitations for better utilization, reliability, stability and control of smart grid technologies make it different from traditional load forecasting. Power systems are typically large, complex and distributed. In this study, load data is collected from smart meters and stored as historical load data. However, weather data at a given geographical location including temperature, humidity, wind speed, wind direction, heat, sunlight, solar radiation, rainfall and so on with good accuracy are collected from internet on demand. Computations are done in two steps: first neural network (NN) training to map the dynamics of load and then an optimization on the NN weights to improve overall forecasting error. NN is an effective mathematical tool for mapping complex relationships. On the other hand, particle swarm optimization (PSO) is used because it is the most promising swarm based optimization tool. Results show the effectiveness of the proposed online short term load forecasting in IoT.
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