Particle Swarm Optimization – Model Predictive Control for Microgrid Energy Management

Van Quyen Ngo, K. Al-haddad, K. Nguyen
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引用次数: 2

Abstract

Microgrid is becoming the most attractive solution for integrating distributed renewable sources into the utility grid. Such a system combines renewable generations with conventional distributed generations, storage systems, and loads in one entity operating in both isolated and grid-connected modes. However, it also associates with a high level of uncertainty and volatility following climatic conditions. Therefore, energy management strategies in operating MGs plays a crucial role in term of economic and reliability. This paper investigates a method applying constrained multi-swarm particle swarm optimization without velocity-based model predictive control to optimize the operation cost in small scale PV-MGs. The results are compared with the linear programming algorithm. The results show the effective modified particle swarm optimization embedded in the model predictive control algorithm performed well. The simulations are run over 24 hours ahead based on the forecast data of PV generation, load demands, and energy price.
微电网能量管理的粒子群优化模型预测控制
微电网正在成为将分布式可再生能源整合到公用电网的最具吸引力的解决方案。这样的系统将可再生能源发电与传统的分布式发电、存储系统和负载结合在一个实体中,以隔离和并网模式运行。然而,它也与气候条件下的高度不确定性和波动性有关。因此,在运行过程中,能源管理策略在经济性和可靠性方面起着至关重要的作用。本文研究了一种不考虑基于速度的模型预测控制的约束多群粒子群优化方法,用于小型pv - mg的运行成本优化。结果与线性规划算法进行了比较。结果表明,将有效的修正粒子群优化嵌入到模型预测控制算法中,效果良好。基于光伏发电、负荷需求和能源价格的预测数据,模拟提前24小时运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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