论文标题

使用基于自动编码器的维度降低的代表性时期选择电源系统计划

Representative period selection for power system planning using autoencoder-based dimensionality reduction

论文作者

Barbar, Marc, Mallapragada, Dharik S.

论文摘要

用于研究未来低碳网格方案的电力部门容量扩展模型(CEMS)必须结合网格操作的详细表示。通常,将CEM制定为在代表性时期内使用群集算法从原始输入数据采样的代表性时期对网格操作进行建模。但是,这种代表性的时期选择(RPS)方法受到集群算法的效力下降而限制了输入数据的尺寸,并且不考虑输入数据对CEM结果的相对重要性。在这里,我们提出了一种RPS方法,该方法通过在聚类之前通过基于神经网络的自动编码器来完成降低维度降低来解决这些局限性。这种尺寸降低不仅可以改善聚类算法的性能,而且还可以使用其他功能,例如输入数据中每个不相交周期的CEM的平行溶液产生的估计输出(例如1周)。通过在相应缩小的空间CEM与完整空间CEM的结果中误差,将降低维度降低作为RPS方法的一部分的影响进行了量化。跨各种网络以及技术和政策场景范围的广泛数值实验确立了基于降低的RPS方法的优势。

Power sector capacity expansion models (CEMs) that are used for studying future low-carbon grid scenarios must incorporate detailed representation of grid operations. Often CEMs are formulated to model grid operations over representative periods that are sampled from the original input data using clustering algorithms. However, such representative period selection (RPS) methods are limited by the declining efficacy of the clustering algorithm with increasing dimensionality of the input data and do not consider the relative importance of input data variations on CEM outcomes. Here, we propose a RPS method that addresses these limitations by incorporating dimensionality reduction, accomplished via neural network based autoencoders, prior to clustering. Such dimensionality reduction not only improves the performance of the clustering algorithm, but also facilitates using additional features, such as estimated outputs produced from parallel solutions of simplified versions of the CEM for each disjoint period in the input data (e.g. 1 week). The impact of incorporating dimensionality reduction as part of RPS methods is quantified through the error in outcomes of the corresponding reduced-space CEM vs. the full space CEM. Extensive numerical experimentation across various networks and range of technology and policy scenarios establish the superiority of the dimensionality-reduction based RPS methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源