Monte Carlo simulation is often used for the reliability assessment of power systems, but it converges slowly when the system is complex. Multilevel Monte Carlo (MLMC) can be applied to speed up computation without compromises on model complexity and accuracy that are limiting real-world effectiveness. In MLMC, models with different complexity and speed are combined, and having access to fast approximate models is essential for achieving high speedups. This paper demonstrates how machine-learned surrogate models are able to fulfil this role without excessive manual tuning of models. Different strategies for constructing and training surrogate models are discussed. A resource adequacy case study based on the Great Britain system with storage units is used to demonstrate the effectiveness of the proposed approach, and the sensitivity to surrogate model accuracy. The high accuracy and inference speed of machine-learned surrogates result in very large speedups, compared to using MLMC with hand-built models.
翻译:Monte Carlo模拟常常用于动力系统的可靠性评估,但在系统复杂时,它会慢慢地汇合;多层次的MLMC(MLMC)可以用于加速计算,而不会对限制现实世界有效性的模型复杂性和准确性产生妥协;在MLMC中,复杂性和速度不同的模型被合并,并且能够使用快速近似模型对于实现高速加速运行至关重要;本文件展示了机器学替代模型如何能够在不过多手工调整模型的情况下发挥这一作用;讨论了建造和培训替代模型的不同战略;在大不列颠系统的基础上,利用储存装置进行了资源充足性案例研究,以证明拟议方法的有效性和对代用模型准确性的敏感度;与手建模型相比,机械学替代模型的高度准确性和推断速度导致超大型超速,而使用MLMC。