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Neural network based load and price forecasting and confidence interval estimation in deregulated power markets.

机译:放松管制的电力市场中基于神经网络的负荷和价格预测以及置信区间估计。

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摘要

With the deregulation of the electric power market in New England, an independent system operator (ISO) has been separated from the New England Power Pool (NEPOOL). The ISO provides a regional spot market, with bids on various electricity-related products and services submitted by utilities and independent power producers. A utility can bid on the spot market and buy or sell electricity via bilateral transactions. Good estimation of market clearing prices (MCP) will help utilities and independent power producers determine bidding and transaction strategies with low risks, and this is crucial for utilities to compete in the deregulated environment. MCP prediction, however, is difficult since bidding strategies used by participants are complicated and MCP is a non-stationary process.; The main objective of this research is to provide efficient short-term load and MCP forecasting and corresponding confidence interval estimation methodologies.; In this research, the complexity of load and MCP with other factors is investigated, and neural networks are used to model the complex relationship between input and output. With improved learning algorithm and on-line update features for load forecasting, a neural network based load forecaster was developed, and has been in daily industry use since summer 1998 with good performance.; MCP is volatile because of the complexity of market behaviors. In practice, neural network based MCP predictors usually have a cascaded structure, as several key input factors need to be estimated first. In this research, the uncertainties involved in a cascaded neural network structure for MCP prediction are analyzed, and prediction distribution under the Bayesian framework is developed. A fast algorithm to evaluate the confidence intervals by using the memoryless Quasi-Newton method is also developed.; The traditional back-propagation algorithm for neural network learning needs to be improved since MCP is a non-stationary process. The extended Kalman filter (EKF) can be used as an integrated adaptive learning and confidence interval estimation algorithm for neural networks, with fast convergence and small confidence intervals. However, EKF learning is computationally expensive because it involves high dimensional matrix manipulations. A modified U-D factorization within the decoupled EKF (DEKF-UD) framework is developed in this research. The computational efficiency and numerical stability are significantly improved.
机译:随着新英格兰电力市场的放松管制,独立系统运营商(ISO)已从新英格兰电力库(NEPOOL)中分离出来。 ISO提供了一个区域现货市场,对公用事业和独立电力生产商提交的各种与电力相关的产品和服务进行了投标。公用事业公司可以在现货市场上竞标,并通过双边交易买卖电力。对市场清算价格(MCP)的正确估计将有助于公用事业和独立电力生产商确定低风险的投标和交易策略,这对于公用事业在放松管制的环境中竞争至关重要。然而,由于参与者使用的出价策略很复杂且MCP是一个非平稳过程,因此MCP预测很困难。该研究的主要目的是提供有效的短期负荷和MCP预测以及相应的置信区间估计方法。在这项研究中,研究了负载和MCP与其他因素的复杂性,并使用神经网络对输入和输出之间的复杂关系进行建模。利用改进的学习算法和用于负荷预测的在线更新功能,开发了基于神经网络的负荷预测器,并且自1998年夏季以来已在日常工业中使用,并具有良好的性能。由于市场行为的复杂性,MCP易变。在实践中,基于神经网络的MCP预测变量通常具有级联结构,因为首先需要估算几个关键输入因子。在这项研究中,分析了用于MCP预测的级联神经网络结构所涉及的不确定性,并开发了贝叶斯框架下的预测分布。还开发了一种使用无记忆拟牛顿法评估置信区间的快速算法。由于MCP是一个非平稳过程,因此需要改进用于神经网络学习的传统反向传播算法。扩展卡尔曼滤波器(EKF)可以用作神经网络的集成自适应学习和置信区间估计算法,具有快速收敛和小置信区间的优点。但是,EKF学习在计算上很昂贵,因为它涉及到高维矩阵处理。在此研究中,开发了在解耦EKF(DEKF-UD)框架内的改进的U-D分解。计算效率和数值稳定性显着提高。

著录项

  • 作者

    Zhang, Li.;

  • 作者单位

    The University of Connecticut.;

  • 授予单位 The University of Connecticut.;
  • 学科 Engineering Electronics and Electrical.; Energy.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 71 p.
  • 总页数 71
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;能源与动力工程;
  • 关键词

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