The transition to a renewable energy system poses challenges for power grid operation and stability. Secondary control is key in restoring the power system to its reference following a disturbance. Underestimating the necessary control capacity may require emergency measures, such as load shedding. Hence, a solid understanding of the emerging risks and the driving factors of control is needed. In this contribution, we establish an explainable machine learning model for the activation of secondary control power in Germany. Training gradient boosted trees, we obtain an accurate description of control activation. Using SHapely Additive exPlanation (SHAP) values, we investigate the dependency between control activation and external features such as the generation mix, forecasting errors, and electricity market data. Thereby, our analysis reveals drivers that lead to high reserve requirements in the German power system. Our transparent approach, utilizing open data and making machine learning models interpretable, opens new scientific discovery avenues.
翻译:向可再生能源系统的过渡给电网运行和稳定带来了挑战。二级控制是恢复电源系统在扰动后参考的关键。低估必要的控制能力可能需要紧急措施,如卸载。因此,有必要对新出现的风险和控制驱动因素有扎实的了解。在这项贡献中,我们为在德国激活二级控制力建立了一个可解释的机器学习模式。培训梯度增强的树木,我们获得控制激活的准确描述。我们利用SHAPAPE Additive Explanation(SHAP)值调查控制激活与外部特征(如发电混合、预报错误和电力市场数据)之间的依赖性。因此,我们的分析揭示出导致德国电力系统储备需求高的驱动因素。我们利用开放数据和机器学习模型可解释的透明方法,打开了新的科学发现途径。