智能电网用户负荷需求的不确定性建模与预测

Ding Li, S. Jayaweera
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引用次数: 19

摘要

在本研究中,我们提出了两种方法来模拟客户负荷需求的不确定性。第一种方法是基于一阶非平稳马尔可夫链。导出了一个极大似然估计量来估计马尔可夫链的时变转移矩阵。第二种方法是基于时间序列分析技术。根据客户负荷分布平稳性的不同假设:分段平稳性、局部平稳性和循环平稳性,提出了标准自回归(AR)过程和时变自回归(TVAR)过程等线性预测模型。讨论了AR/TVAR模型中的两个重要问题:确定AR/TVAR模型的阶数和计算AR/TVAR系数。采用偏自相关函数(PACF)确定模型阶数,采用最小均方误差(MMSE)估计量推导AR/TVAR系数,得到Yule-Walker型方程。对于AR模型,客户负荷概况被划分为小段,可以认为是平稳的。对于TVAR模型,通过基于基函数展开的系数参数化,将标量过程替换为矢量过程,将原来的非平稳问题转化为定常问题。所有提出的模型都针对同一组实际测量的客户负载需求数据进行了测试。分析比较了不同模型的预测性能,讨论了各自的优缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty modeling and prediction for customer load demand in smart grid
In this study, we propose two types of approaches to model the uncertainty in customer load demand. The first approach is based on a first order non-stationary Markov chain. A maximum likelihood estimator (MLE) is derived to estimate the time variant transition matrix of the Markov chain. The second approach is based on time series analysis techniques. We present linear prediction models such as standard autoregressive (AR) process and time varying autoregressive (TVAR) process, according to different assumptions on the stationarity of customer load profile: piecewise stationarity, local stationarity and cyclo-stationarity. Two important issues in AR/TVAR models are addressed: determining the order of AR/TVAR models and calculating the AR/TVAR coefficients. The partial autocorrelation function (PACF) is analyzed to determine the model order and the minimum mean squared error (MMSE) estimator is adopted to derive the AR/TVAR coefficients, which leads to the Yule-Walker type of equations. For the AR model, the customer load profile is divided into small segments which can be considered to be stationary. For the TVAR model, by doing basis function expansion based coefficient parametrization, we replace the scalar process with a vector one and turn the original non-stationary problem into a time-invariant problem. All the proposed models are tested against the same set of real measured customer load demand data. Prediction performances of different models are analyzed and compared, advantages and disadvantages are discussed.
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