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A novel neuro-fuzzy based self-correcting online electric load forecasting model

机译:基于神经模糊的新型自校正在线电力负荷预测模型

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摘要

The paper presents a neuro-fuzzy short-term load forecasting (STLF) model. The proposed ANN function approximator models the relationships between the system hourly peak load and system variables affecting it, namely, weather and temperature variations, type and time of day, the inherent parameters of historical load patterns such as trend, cyclic oscillations, regular seasonal and irregular 'special' events. The load predictor forecasting input vector was extended to account for most of the input dominant variables affecting the short-term forecast load. The model utilizes a preprocessor for input vector generation and priority classifications using historical load and system data. A postprocessor fuzzy logic block provides error correction and data filtering and online tuning and adjustment of electric load forecast data.
机译:本文提出了一种神经模糊的短期负荷预测(STLF)模型。拟议的ANN函数逼近器对系统每小时峰值负载与影响它的系统变量之间的关系进行建模,即天气和温度变化,一天中的类型和时间,历史负载模式的固有参数,例如趋势,周期性振荡,定期的季节性变化和不定期的“特殊”事件。扩展了预测负荷的预测输入向量,以解决影响短期预测负荷的大多数输入主变量。该模型利用预处理器使用历史负载和系统数据进行输入矢量生成和优先级分类。后处理器模糊逻辑模块提供错误校正和数据过滤以及在线调整和调整电力负荷预测数据的功能。

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