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Application of improved particle swarm algorithm to power source capacity optimization in multi-energy industrial parks

机译:改进粒子群算法在多能源工业园区电源容量优化的应用

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摘要

Aiming at the optimization of power source capacity in multi-energy industrial parks, an economic optimization model with the lowest comprehensive cost of the system as the objective function was established, and an improved particle swarm optimization algorithm with natural selection strategy and chaos theory was proposed to optimize the model. This algorithm initialized particle fitness by chaotic mapping, added natural selection strategy to the iterative optimization process, and used chaotic ergodicity to search solution space. The test function simulation showed that the algorithm had the characteristics of fast convergence, high precision and being not easy to fall into local optimum. A case study of a certain area in Hebei Province, China, was selected to analyze the example, and the power source capacity optimization design scheme was obtained. The analysis results verified the effectiveness of the algorithm.
机译:针对多能源工业园区电源容量的优化,建立了具有目标函数的系统最低综合成本的经济优化模型,提出了具有自然选择策略和混沌理论的改进的粒子群优化算法和混沌理论 优化模型。 该算法通过混沌映射初始化粒子适合度,将自然选择策略添加到迭代优化过程,并使用混沌遍历性来搜索解决方案空间。 测试函数仿真显示该算法具有快速收敛,精度高的特点,不容易落入局部最佳。 选择了河北省一定面积的案例研究,选择了分析示例,并获得了电源容量优化设计方案。 分析结果验证了算法的有效性。

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