基于经济系数网格模型的电力线路规划优化研究
Study on Optimization of Power Line Planning Based on Economic Coefficient Grid Model
DOI: 10.12677/JEE.2017.51010, PDF, HTML, XML, 下载: 1,440  浏览: 3,507 
作者: 伍谟煊, 赵风勇, 胡世昊, 郭泉辉:国网江西省电力公司九江供电分公司,江西 九江
关键词: 经济系数网格模型电力线路规划最优路径改进的蚁群算法Economic Coefficient Grid Model Power Line Planning Optimal Path Improved Ant Colony Optimization
摘要: 针对电力行业中电力线路规划问题,本文基于地理信息数据对规划区域进行了网格化建模,并结合土地实际利用情况将网格模型赋以一定权值系数,形成了应用于电力规划的经济系数评估体系模型。考虑到规划线路总长度和经济系数总和的最优值,本文利用改进的蚁群算法实现了电力线路规划优化。MATLAB仿真和实验结果证明了本文提出的算法在经济效益方面的线路规划优势。
Abstract: To solve power line planning problem of electric power industry, this paper builds a grid model based on geographic information, which is assigned with certain weight value according to land use situation, and forms an economic coefficient evaluation system model to apply to electric power planning. Taking the optimal value of length of power line and sum of economic coefficients into account, improved ant colony optimization is used in this paper to implement the optimization of power line planning. MATLAB simulation and experiment results prove the algorithm proposed in this paper has its advantages in economic efficiency.
文章引用:伍谟煊, 赵风勇, 胡世昊, 郭泉辉. 基于经济系数网格模型的电力线路规划优化研究[J]. 电气工程, 2017, 5(1): 78-89. https://doi.org/10.12677/JEE.2017.51010

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