Department of Maintenance Engineering, Nigerian National Petroleum Company, KRPC Limited, Kaduna, Nigeria.
Department of Computer Engineering, Faculty of Engineering, Ahmadu Bello University, Zaria, Kaduna State, Nigeria.
PLoS One. 2023 Jun 7;18(6):e0286695. doi: 10.1371/journal.pone.0286695. eCollection 2023.
This paper presents a hybrid Smell Agent Symbiosis Organism Search Algorithm (SASOS) for optimal control of autonomous microgrids. In microgrid operation, a single optimization algorithm often lacks the required balance between accuracy and speed to control power system parameters such as frequency and voltage effectively. The hybrid algorithm reduces the imbalance between exploitation and exploration and increases the effectiveness of control optimization in microgrids. To achieve this, various energy resource models were coordinated into a single model for optimal energy generation and distribution to loads. The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. The development of SASOS comprises components of Symbiotic Organism Search (SOS) and Smell Agent Optimization (SAO) codified in an optimization loop. Twenty-four standard test function benchmarks were used to evaluate the performance of the algorithm developed. The experimental analysis revealed that SASOS obtained 58.82% of the Desired Convergence Goal (DCG) in 17 of the benchmark functions. SASOS was implemented in the Microgrid Central Controller (MCC) and benchmarked alongside standard SOS and SAO optimization control strategies. The MATLAB/Simulink simulation results of the microgrid load disturbance rejection showed the viability of SASOS with an improved reduction in Total Harmonic Distortion (THD) of 19.76%, compared to the SOS, SAO, and MCC methods that have a THD reduction of 15.60%, 12.74%, and 6.04%, respectively, over the THD benchmark. Based on the results obtained, it can be concluded that SASOS demonstrates superior performance compared to other methods. This finding suggests that SASOS is a promising solution for enhancing the control system of autonomous microgrids. It was also shown to apply to other sectors of engineering optimization.
本文提出了一种混合嗅觉共生生物体搜索算法 (SASOS),用于自主微电网的优化控制。在微电网运行中,单个优化算法通常缺乏有效控制电力系统参数(如频率和电压)所需的准确性和速度之间的平衡。混合算法减少了开发和探索之间的不平衡,并提高了微电网控制优化的有效性。为此,将各种能源资源模型协调为单个模型,以实现最佳的能源生成和向负载的分配。优化问题是基于网络潮流和受约束控制参数的离散时间采样来制定的。SASOS 的开发由共生生物体搜索 (SOS) 和气味剂优化 (SAO) 的组件组成,这些组件编码在一个优化循环中。使用 24 个标准测试函数基准对所开发的算法进行了性能评估。实验分析表明,SASOS 在 24 个基准函数中的 17 个函数中达到了 58.82%的期望收敛目标 (DCG)。SASOS 在微电网中央控制器 (MCC) 中实现,并与标准 SOS 和 SAO 优化控制策略进行了基准测试。微电网负载干扰抑制的 MATLAB/Simulink 仿真结果表明,SASOS 具有可行性,与 SOS、SAO 和 MCC 方法相比,总谐波失真 (THD) 降低了 19.76%,而 SOS、SAO 和 MCC 方法的 THD 降低分别为 15.60%、12.74%和 6.04%,优于 THD 基准。根据所得到的结果,可以得出结论,SASOS 与其他方法相比具有更好的性能。这一发现表明,SASOS 是增强自主微电网控制系统的一种很有前途的解决方案。它也被证明适用于工程优化的其他领域。