基于多目标模型预测控制的直流微电网能量管理中储能系统交互分析

Unnikrishnan Raveendran Nair, R. Costa-Castelló
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引用次数: 5

摘要

可再生能源的不确定性发电导致了现代电网中储能系统的整合。为了保证电网的高效运行,需要对不同存储单元之间的能量进行优化管理。在这项工作中,通过使用多目标优化的在线模型预测控制来解决日内能量管理问题。本文分析了多目标优化问题中惩罚权重不同时不同储能系统之间的能量相互作用,以寻找权重分布的最优方案。确定了不同的场景,并提出了实现相同目标的性能指标。这项工作也隐含地解决了最小化电池退化率的目标。仿真结果有助于分析。
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An analysis of energy storage system interaction in a multi objective model predictive control based energy management in DC microgrid
Non-deterministic generation from renewable sources have resulted in the incorporation energy storage systems in modern grids. Management of energy between different storage elements need to done optimally to ensure efficient operation of the grid. The intraday energy management problem is addressed in this work through an online model predictive control using multi objective optimisation. This work analyses the energy interaction among different storages when penalty weights in a multi objective optimisation problem is varied, in order to find an optimal scenario in terms of weight distribution. Different scenarios are identified and performance indices are proposed to achieve the same. The work also addresses implicitly the objective of minimising rate of degradation batteries. Simulation results are presented to aid in the analysis.
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