论文标题
长期历史需求数据的重建
Reconstruction of Long-Term Historical Demand Data
论文作者
论文摘要
强大的电力系统的长期计划需要了解不断变化的需求模式。电力需求非常敏感。因此,引入间歇性可再生能源的供应方面变化,并并列可变需求,将在网格计划过程中引入其他挑战。通过了解美国温度在美国的空间和时间变化,可以分开需求对自然变异性和与气候变化相关的影响的响应,尤其是因为尚不清楚由于前一个因素所产生的影响。通过该项目,我们旨在通过开发机器和深度学习“背面销售”模型来更好地支持电力系统的技术和政策开发过程,以重建多年需求记录并研究温度的自然变异性及其对需求的影响。
Long-term planning of a robust power system requires the understanding of changing demand patterns. Electricity demand is highly weather sensitive. Thus, the supply side variation from introducing intermittent renewable sources, juxtaposed with variable demand, will introduce additional challenges in the grid planning process. By understanding the spatial and temporal variability of temperature over the US, the response of demand to natural variability and climate change-related effects on temperature can be separated, especially because the effects due to the former factor are not known. Through this project, we aim to better support the technology & policy development process for power systems by developing machine and deep learning 'back-forecasting' models to reconstruct multidecadal demand records and study the natural variability of temperature and its influence on demand.