基于小数据批次的微电网能量管理数据驱动非参数机会约束模型预测控制

Leon Babić, M. Lauricella, G. Ceusters, M. Biskoping
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引用次数: 0

摘要

本文提出了一种结合时间序列预测技术的随机模型预测控制方法来解决面对不确定性的微电网能量管理问题。采用数据驱动的非参数机会约束方法为随机模型预测控制制定机会约束,同时消除了对不确定变量概率密度假设的依赖,保留了优化问题的线性结构。由于其简单的线性结构和在预定义的置信水平内提供准确结果的能力,即使在使用小批量数据时,所提出的方法也适用于在计算能力有限或内存存储有限的系统上实现。将所提出的预测和随机模型预测控制方法应用于具有光伏发电、电池存储系统和不可控负荷的小型并网微电网的数值算例,显示了通过降低置信水平来降低成本的能力,并满足预定义的置信水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven non-parametric chance-constrained model predictive control for microgrids energy management using small data batches
This paper presents a stochastic model predictive control approach combined with a time-series forecasting technique to tackle the problem of microgrid energy management in the face of uncertainty. The data-driven non-parametric chance constraint method is used to formulate chance constraints for stochastic model predictive control, while removing the dependency on probability density assumptions of uncertain variables and retaining the linear structure of the resulting optimization problem. The proposed approach is suitable for implementation on systems with limited computational power or limited memory storage, thanks to its simple linear structure and its ability to provide accurate results within pre-defined confidence levels, even when using small data batches. The proposed forecasting and stochastic model predictive control approaches are applied on a numerical example featuring a small grid-connected microgrid with PV generation, a battery storage system, and a non-controllable load, showing the ability to reduce costs by reducing the confidence level, and to satisfy pre-defined confidence levels.
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