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Construction of neural network-based prediction intervals for short-term electrical load forecasting

机译:基于神经网络的预测间隔的构建,用于短期电力负荷预测

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Short-term load forecasting (STLF) is of great importance for control and scheduling of electrical power systems. The uncertainty of power systems increases due to the random nature of climate and the penetration of the renewable energies such as wind and solar power. Traditional methods for generating point forecasts of load demands cannot properly handle uncertainties in datasets. To quantify these potential uncertainties associated with forecasts, this paper implements a neural network (NN)-based method for construction of prediction intervals (PIs). A newly proposed method, called lower upper bound estimation (LUBE), is applied to develop PIs using NN models. The primary multi-objective problem is firstly transformed into a constrained single-objective problem. This new problem formulation is closer to the original problem and has fewer parameters than the cost function. Particle swarm optimization (PSO) integrated with the mutation operator is used to solve the problem. Two case studies from Singapore and New South Wales (Australia) historical load datasets are used to validate the PSO-based LUBE method. Demonstrated results show that the proposed method can construct high quality PIs for load forecasting applications.
机译:短期负荷预测(STLF)对于电力系统的控制和调度非常重要。由于气候的随机性以及风能和太阳能等可再生能源的渗透,电力系统的不确定性增加。用于生成负荷需求的点预测的传统方法无法正确处理数据集中的不确定性。为了量化与预测相关的这些潜在不确定性,本文采用了基于神经网络(NN)的方法来构建预测间隔(PI)。一种新提出的方法,称为下上限估计(LUBE),被用于使用NN模型开发PI。首先将主要的多目标问题转化为受约束的单目标问题。这种新的问题表述更接近原始问题,并且比成本函数具有更少的参数。使用与变异算子集成的粒子群优化(PSO)解决了该问题。来自新加坡和新南威尔士州(澳大利亚)的历史负荷数据集的两个案例研究用于验证基于PSO的LUBE方法。演示结果表明,该方法可以为负荷预测应用构建高质量的PI。

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