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Short-term peak demand forecasting using an artificial neural network with controlled peak demand through intelligent electrical loading.

机译:使用人工神经网络通过智能电气负载控制峰值需求,从而进行短期峰值需求预测。

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摘要

The power output capacity of a local electrical utility is dictated by its customers' cumulative peak-demand electrical consumption. Most electrical utilities in the United States maintain peak-power generation capacity by charging for end-use peak electrical demand; thirty to seventy percent of an electric utility's bill. To reduce peak demand, a real-time energy monitoring system was designed, developed, and implemented for a large government building. Data logging, combined with an application of artificial neural networks (ANNs), provides short-term electrical load forecasting data for controlled peak demand. The ANN model was tested against other forecasting methods including simple moving average (SMA), linear regression, and multivariate adaptive regression splines (MARSplines) and was effective at forecasting peak building electrical demand in a large government building sixty minutes into the future. The ANN model presented here outperformed the other forecasting methods tested with a mean absolute percentage error (MAPE) of 3.9% as compared to the SMA, linear regression, and MARSplines MAPEs of 7.7%, 17.3%, and 7.0% respectively. Additionally, the ANN model realized an absolute maximum error (AME) of 18.2% as compared to the SMA, linear regression, and MARSplines AMEs of 26.2%, 45.1%, and 22.5% respectively.
机译:本地电力公司的功率输出容量取决于其客户的累积峰值需求电力消耗。美国大多数电力公司通过为最终用途的峰值用电需求进行充电来维持峰值发电能力。电力费用的百分之三十到百分之七十。为了减少高峰需求,为大型政府大楼设计,开发和实施了实时能源监控系统。数据记录结合人工神经网络(ANN)的应用,可提供短期电力负荷预测数据,以控制峰值需求。该ANN模型已针对其他预测方法进行了测试,包括简单移动平均值(SMA),线性回归和多元自适应回归样条(MARSplines),可有效预测未来60分钟内大型政府建筑的峰值用电需求。与SMA,线性回归和MARSplines MAPE分别为7.7%,17.3%和7.0%相比,此处介绍的ANN模型的平均绝对百分比误差(MAPE)为3.9%,优于其他测试方法。此外,与SMA,线性回归和MARSplines AMEs分别为26.2%,45.1%和22.5%相比,ANN模型实现了18.2%的绝对最大误差(AME)。

著录项

  • 作者

    Grant, Jason Lee.;

  • 作者单位

    University of Miami.;

  • 授予单位 University of Miami.;
  • 学科 Engineering Industrial.;Energy.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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