The application of wind power interval prediction for power systems attempts to give more comprehensive support to dispatchers and operators of the grid. Lower upper bound estimation (LUBE) method is widely applied in interval prediction. However, the existing LUBE approaches are trained by meta-heuristic optimization, which is either time-consuming or show poor effect when the LUBE model is complex. In this paper, a deep interval prediction method is designed in the framework of LUBE and an efficient gradient descend (GD) training approach is proposed to train the LUBE model. In this method, the long short-term memory is selected as a representative to show the modelling approach. The architecture of the proposed model consists of three parts, namely the long short-term memory module, the fully connected layers and the rank ordered module. Two loss functions are specially designed for implementing the GD training method based on the root mean square back propagation algorithm. To verify the performance of the proposed model, conventional LUBE models, as well as popular statistic interval prediction models are compared in numerical experiments. The results show that the proposed approach performs best in terms of effectiveness and efficiency with average 45% promotion in quality of prediction interval and 66% reduction of time consumptions compared to traditional LUBE models.
翻译:对电力系统应用风能间隔预测,试图为电网的调度者和操作者提供更全面的支持。低上限估计(LUBE)方法在间隔预测中广泛应用。但是,现有的LUBE方法通过超常优化来培训,如果LUBE模型复杂,这种优化既耗时,或效果较差。在本文中,在LUBE框架内设计了一个深频间隔预测方法,并提议了一个高效的梯度下降(GD)培训方法,以培训LUBE模型。在这种方法中,长期短期记忆被选为示范方法的代表。拟议模型的结构由三个部分组成,即长期短期内存模块、完全连接的层和排级模块。专门设计了两个损失功能,以实施基于根正方反传播算的GD培训方法。在数字实验中,对拟议的模型、常规LUBE模型和流行性统计间隔预测模型的绩效进行了比较。结果显示,拟议的方法在效力和效率方面表现最佳,与平均45%的UBIB预测质量相比,66%的时间模型与LUB的缩短和降低。