面向设计稳健和弹性的混合可再生能源系统

Lasse Hammer, Eric M. S. P. Veith
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引用次数: 0

摘要

混合可再生能源系统(HRESs)由可再生能源、存储设施和作为备用的燃料发电机组成。在能源转型的当前阶段,几乎每个电网都包含这些组件,从而使其成为HRES。为了能够提供足够的能源,同时尽可能降低成本,对这些系统的规模进行调整是至关重要的。本文通过描述常见的优化目标、技术和建模和模拟系统的方法,概述了HRES优化。这也表明优化过程尚未考虑弹性和鲁棒性。我们通过提出一种方法来解决这一研究差距,该方法将鲁棒性和弹性纳入使用对抗弹性学习(ARL)优化这些系统的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Designing Robust and Resilient Hybrid Renewable Energy Systems
Hybrid Renewable Energy Systems (HRESs) consist of renewable energy sources, storage facilities, and fuel-based generators as backup. In the current phase of the energy transition, nearly every power grid comprises these components, thus making it a HRES. Sizing these systems is essential in order to be able to supply enough energy while also keeping costs as low as possible. This paper gives an overview of HRES optimization by describing common optimization goals, techniques, and ways to model and simulate the systems. It also shows that the optimization process has not yet considered resilience and robustness properties. We address this research gap by proposing an approach to include robustness and resilience in optimizing these systems using Adversarial Resilience Learning (ARL).
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