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A neuro-fuzzy approach to short-term load forecasting in a price-sensitive environment

机译:价格敏感环境中的短期负荷预测的神经模糊方法

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This paper presents a new approach to short-term load forecasting in a deregulated and price-sensitive environment. A real-time pricing type scenario is envisioned where energy prices could change on an hourly basis with the consumer having the ability to react to the price signal through shifting his electricity usage from expensive hours to other times when possible. The load profile under this scenario would have different characteristics compared to that of the regulated, fixed-price era. Consequently, short-term load forecasting models customized on price-insensitive (PIS) historical data of regulated era would no longer be able to perform well. In this work, a price-sensitive (PS) load forecaster is developed. This forecaster consists of two stages, an artificial neural network based PIS load forecaster followed by a fuzzy logic (FL) system that transforms the PIS load forecasts of the first stage into PS forecasts. The first stage forecaster is a widely used forecaster in industry known as ANNSTLF. For the FL system of the second stage, a genetic algorithm based approach is developed to automatically optimize the number of rules and the number and parameters of the fuzzy membership functions. Another FL system is developed to simulate PS load data from the PIS historical data of a utility. This new forecaster termed NFSTLF is tested on three PS database and it is shown that it produces superior results to the PIS ANNSTLF.
机译:本文提出了一种在放松管制且价格敏感的环境中进行短期负荷预测的新方法。设想了一种实时定价类型的方案,其中能源价格可以每小时变化一次,消费者可以通过将用电时间从昂贵的时间转移到其他时间来对价格信号做出反应。与规范的固定价格时代相比,这种情况下的负载曲线将具有不同的特征。因此,基于受管制时代的价格不敏感(PIS)历史数据定制的短期负荷预测模型将不再能够良好运行。在这项工作中,开发了价格敏感(PS)负荷预测器。该预测器包括两个阶段,一个是基于人工神经网络的PIS负荷预测器,其后是一个将第一阶段的PIS负荷预测转换为PS预测的模糊逻辑(FL)系统。第一阶段的预报器是在行业中被广泛使用的预报器,称为ANNSTLF。对于第二阶段的FL系统,开发了一种基于遗传算法的方法来自动优化规则数量以及模糊隶属函数的数量和参数。开发了另一个FL系统,以根据公用事业的PIS历史数据模拟PS负载数据。这个称为NFSTLF的新预报器已经在三个PS数据库上进行了测试,结果表明,该预报器产生的结果优于PIS ANNSTLF。

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