Zhang Yi, Lv Yang, Zhou Yangkun
College of Electrical and Computer Science, Jilin Jianzhu University, Changchun 130000, China.
Biomimetics (Basel). 2023 Apr 7;8(2):150. doi: 10.3390/biomimetics8020150.
This paper proposes an improved Bacterial Foraging Optimization for economically optimal dispatching of the microgrid. Three optimized steps are presented to solve the slow convergence, poor precision, and low efficiency of traditional Bacterial Foraging Optimization. First, the self-adaptive step size equation in the chemotaxis process is present, and the particle swarm velocity equation is used to improve the convergence speed and precision of the algorithm. Second, the crisscross algorithm is used to enrich the replication population and improve the global search performance of the algorithm in the replication process. Finally, the dynamic probability and sine-cosine algorithm are used to solve the problem of easy loss of high-quality individuals in dispersal. Quantitative analysis and experiments demonstrated the superiority of the algorithm in the benchmark function. In addition, this study built a multi-objective microgrid dynamic economic dispatch model and dealt with the uncertainty of wind and solar using the Monte Carlo method in the model. Experiments show that this model can effectively reduce the operating cost of the microgrid, improve economic benefits, and reduce environmental pollution. The economic cost is reduced by 3.79% compared to the widely used PSO, and the economic cost is reduced by 5.23% compared to the traditional BFO.
本文提出一种改进的细菌觅食优化算法,用于微电网的经济最优调度。提出了三个优化步骤,以解决传统细菌觅食优化算法收敛速度慢、精度差和效率低的问题。首先,给出趋化过程中的自适应步长方程,并采用粒子群速度方程提高算法的收敛速度和精度。其次,使用交叉算法丰富复制种群,提高算法在复制过程中的全局搜索性能。最后,采用动态概率和正弦余弦算法解决扩散过程中优质个体容易丢失的问题。定量分析和实验证明了该算法在基准函数方面的优越性。此外,本研究建立了多目标微电网动态经济调度模型,并在模型中使用蒙特卡罗方法处理风能和太阳能的不确定性。实验表明,该模型可以有效降低微电网的运行成本,提高经济效益,减少环境污染。与广泛使用的粒子群算法相比,经济成本降低了3.79%,与传统细菌觅食优化算法相比,经济成本降低了5.23%。