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Particle swarm optimization based on Gaussian mutation and its application to wind farm micro-siting

机译:基于高斯变异的粒子群算法及其在风电场选址中的应用

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In this paper, a particle swarm optimization algorithm with Gaussian mutations, denoted by GPSO, is proposed to solve constrained optimization problems. Two Gaussian mutation operators are employed to search the promising regions for better solutions. One operator is for the region between the personal best position and the global best one. The other operator is for the region around the global best position. The Gaussian mutations help the population jump out of local optima and find better solutions with more probability. The feasibility-based method compares the performance of different particles. Evaluated by three typical optimization problems, GPSO is more accurate, robust and efficient for locating global optima. The GPSO method is applied to a wind-farm micro-siting problem. Simulation results demonstrate that the power generation of the wind farm is further improved while the execution time is substantially reduced.
机译:为了解决约束优化问题,提出了一种以GPSO为代表的高斯变异粒子群优化算法。使用两个高斯变异算子来搜索有前途的区域,以获得更好的解决方案。在个人最佳位置和全球最佳位置之间的区域中,有一个运营商。另一个运营商是针对全球最佳位置周围的区域。高斯突变帮助种群跳出局部最优解,并更有可能找到更好的解决方案。基于可行性的方法比较了不同粒子的性能。通过三个典型的优化问题进行评估,GPSO在定位全局最优值方面更加准确,强大和高效。 GPSO方法应用于风电场的微选址问题。仿真结果表明,风电场的发电能力得到了进一步的改善,同时执行时间也大大减少了。

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