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Random vector functional link network for short-term electricity load demand forecasting

机译:随机矢量功能链接网络,用于短期电力负荷需求预测

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摘要

Short-term electricity load forecasting plays an important role in the energy market as accurate forecasting is beneficial for power dispatching, unit commitment, fuel allocation and so on. This paper reviews a few single hidden layer network configurations with random weights (RWSLFN). The RWSLFN was extended to eight variants based on the presence or absence of input layer bias, hidden layer bias and direct input-output connections. In order to avoid mapping the weighted inputs into the saturation region of the enhancement nodes' activation function and to suppress the outliers in the input data, a quantile scaling algorithm to re-distribute the randomly weighted inputs is proposed. The eight variations of RWSLFN are assessed using six generic time series datasets and 12 load demand time series datasets. The result shows that the RWSLFNs with direct input-output connections (known as the random vector functional link network or RVFL network) have statistically significantly better performance than the RWSLFN configurations without direct input-output connections, possibly due to the fact that the direct input-output connections in the RVFL network emulate the time delayed finite impulse response (FIR) filter. However the RVFL network has simpler training and higher accuracy than the FIR based two stage neural network. The RVFL network is also compared with some reported forecasting methods. The RVFL network overall outperforms the non-ensemble methods, namely the persistence method, seasonal autoregressive integrated moving average (sARIMA), artificial neural network (ANN). In addition, the testing time of the RVFL network is the shortest while the training time is comparable to the other reported methods. Finally, possible future research directions are pointed out. (C) 2015 Elsevier Inc. All rights reserved.
机译:短期电力负荷预测在能源市场中起着重要的作用,因为准确的预测对电力分配,机组承诺,燃料分配等都是有益的。本文回顾了一些具有随机权重(RWSLFN)的单隐藏层网络配置。基于是否存在输入层偏置,隐藏层偏置和直接输入输出连接,RWSLFN扩展为八个变体。为了避免将加权输入映射到增强节点激活函数的饱和区域并抑制输入数据中的离群值,提出了一种分位数缩放算法来重新分配随机加权输入。使用六个通用时间序列数据集和12个负载需求时间序列数据集评估了RWSLFN的八个变体。结果表明,具有直接输入-输出连接(称为随机矢量功能链接网络或RVFL网络)的RWSLFN在统计上比不具有直接输入-输出连接的RWSLFN配置具有明显更好的性能,这可能是由于直接输入RVFL网络中的输出连接模拟了延时有限脉冲响应(FIR)滤波器。然而,相比基于FIR的两阶段神经网络,RVFL网络具有更简单的训练和更高的准确性。 RVFL网络也与一些报道的预测方法进行了比较。 RVFL网络总体上优于非集成方法,即持久性方法,季节性自回归综合移动平均值(sARIMA),人工神经网络(ANN)。此外,RVFL网络的测试时间最短,而训练时间与其他报道的方法相当。最后指出了今后可能的研究方向。 (C)2015 Elsevier Inc.保留所有权利。

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