电力系统充分性和弹性评估的气象概率模型

G. Marco Tina, C. Ventura, D. Stefanelli
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引用次数: 0

摘要

增加使用大量可再生的非可编程发电能力(风能和光伏系统)以及极端天气事件或更一般地说,不断变化的环境条件的后果,将对未来的电力系统产生重大影响,特别是对电力系统的充分性和弹性评估。气候变化已经改变并将继续影响能源需求和可用的发电能力。例如,从电力系统充分性的角度来看,对极热或极冷现象的高需求可以确定是否存在临界运行条件。因此,气象变量是研究关键维度的重要输入,为了正确管理电力系统,必须密切观察这些维度。在这种情况下,本文的目的是提出模型来生成主要气象变量(辐照度、风速、环境温度)的剖面图,考虑它们的相互依赖性,适合于充分性和弹性分析。本文提出了两种基于统计数据的逐时日辐射廓线生成模式:一种基于数据概率分布,另一种基于晴空太阳辐射。此外,由于气候变量是相互依存的,为了产生小时温度廓线,建立了基于辐照度廓线和月平均日最低和最高小时温度的模式。温度是由测量数据和辐照度数据生成的,这两种方法在这里提出。然后,结合实测和模拟数据,分析了低、高温天气的持续时间以及连续晴天和连续阴天的天数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meteorological probabilistic models for power system adequacy and resiliency assessment
The consequence of increasing the use of large amount of renewable non programmable generation capability (wind and PV systems) as well as extreme weather events or, more in general, changing environmental conditions, will have significant impacts on future power systems, in particular on the power system adequacy and on the resiliency assessment. Climate change has changed and will continue to affect both the energy demand and the available generation capacity. For instance, high demand for extreme heat or cold phenomena can determine the presence of critical operating conditions from the point of view of power system adequacy. Meteorological variables, therefore, are essential inputs to study key dimensions that must be kept under close observation to correctly manage the power systems. In this context, the aim of this paper is to propose models to generate profiles of the main meteorological variables (irradiance, wind speed, ambient temperature) considering their interdependence, suitable for adequacy and resilience analysis. In this paper, two models are proposed for the generation of the hourly daily radiation profiles based on statistical data: one is based on data probability distributions and the other on the clear sky solar radiation. Moreover, since climatic variables are interdependent, to generate the hourly temperature profiles a model based on the irradiance profile and the monthly mean daily minimum and maximum hourly temperatures is developed. The temperature is generated starting from the measured data and from irradiance data generated using the two approaches here proposed. Then, the persistence of low and high temperature situations and number of consecutive clear and cloudy days considering measured and simulated data is analysed.
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