基于神经网络技术的比利时国家控制中心短期负荷预测自动化

F. de Viron, J. Claus, F. Dongier, M. Monteyne
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引用次数: 2

摘要

所描述的项目旨在使比利时国家电力系统控制中心的短期负荷预测自动化,通常至少提前24小时完成。希望通过更好地模拟负荷与气候因素之间的非线性关系,提高预测方法的质量。针对问题的各个方面,作者打算开发一种混合神经网络(ANN)-基于知识的系统(KBS)应用:ANN将构成系统的基础,并在正常情况下进行预测;KBS应该管理例外和特殊现象,并提供专门的知识基础设施。作者着重于人工神经网络原型的开发。人工神经网络是一个负荷随输入参数变化的模型,因此人工神经网络预测的是一天的负荷与前一天的负荷之比,而不是原始负荷值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automation, with neural network based techniques, of short-term load forecasting at the Belgian national control centre
The project described is aimed at automating the short-term load forecasting of the Belgian national power system control centre, usually done with a minimum lead time of 24 hours. It is hoped that the resulting system will improve the quality of forecasting methods, through a better modeling of the nonlinear relationship between load and climatic factors. In view of the various aspects of the problem, the authors intend to develop a hybrid neural network (ANN)-knowledge based system (KBS) application: the ANN will form the basis of the system and will make the forecast in normal situations; the KBS should manage exceptions and special phenomena as well as provide specific knowledge-based facilities. The authors focus on the development of a prototype for the ANN. The ANN is to be a model of the evolution of the load w.r.t. input parameters, therefore the ANN predicts the ratio between the load for one day and the day before, instead of the raw load value.<>
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