Knowledge enhanced connectionist models for short-term electric load forecasting

S. Rahman, I. Drezga, J. Rajagopalan
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引用次数: 7

Abstract

This paper addresses short-term load forecasting using machine learning and neural network techniques. Neural networks, though accurate in weekday load forecasting, are poor at forecasting maximum daily load, weekend and holiday loads. This necessitates development of a robust forecasting technique to complement the neural networks for enhanced reliability of forecast and improved overall accuracy. The statistical decision tree method produces robust forecasts and human intelligible rules. These rules provide understanding of factors driving load demand. Decision trees when combined with neural network forecasts, produce robust and accurate forecasts. Simulations are performed on a service area susceptible to large and sudden changes in weather and load. Forecasts obtained by the proposed method are accurate under diverse conditions.<>
短期电力负荷预测的知识增强联结模型
本文讨论了使用机器学习和神经网络技术的短期负荷预测。神经网络虽然在工作日负荷预测上是准确的,但在预测最大日负荷、周末和假日负荷方面却很差。这就需要开发一种强大的预测技术来补充神经网络,以增强预测的可靠性和提高整体准确性。统计决策树方法产生稳健的预测和人类可理解的规则。这些规则提供了对驱动负载需求的因素的理解。当决策树与神经网络预测相结合时,产生稳健和准确的预测。模拟是在易受天气和负荷大而突然变化影响的服务区域进行的。在各种条件下,所提出的预测方法都是准确的
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