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Enhanced salp swarm algorithm: Application to variable speed wind generators

机译:增强型蜂群算法:应用于变速风力发电机

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This article presented a novel modification and application of the salp swarm algorithm (SSA) that is inspired by the chain behavior of salp fishes that live in deep oceans. Firstly, the enhanced salp swarm algorithm (ESSA) is proposed to improve the inadequate results of the SSA compared to the other algorithms, especially for the high dimensional functions. The ESSA algorithm is verified using twenty-three benchmark test functions and compared with the original SSA algorithm and other algorithms. The statistical analysis of the obtained results revealed that the ESSA algorithm is significantly improved and the convergence curves showed the fast convergence to the best solution. Secondly, The SSA and ESSA algorithms are applied to enhance the maximum power point tracking and the fault-ride through ability of a grid-tied permanent magnet synchronous generator driven by a variable speed wind turbine (PMSG-VSWT). The multi-objective function (integral squared error) is minimized to find the high dimensional parameters of Takagi-Sugeno-Kang fuzzy logic controllers (TSK-FLC) used in the cascaded control of grid-tied PMSG-VSWT. The simulation results using PSCAD/EMTDC proved that the produced power when using ESSA is higher than when using SSA which mean higher efficiency and lower cost.
机译:本文介绍了Salp群算法(SSA)的一种新颖的修改和应用,该算法的灵感来自生活在深海中的Salp鱼的链行为。首先,提出了增强的salp swarm算法(ESSA),以改善SSA与其他算法相比的不足,特别是对于高维函数而言。使用23种基准测试功能验证了ESSA算法,并与原始SSA算法和其他算法进行了比较。对所得结果的统计分析表明,ESSA算法得到了显着改进,并且收敛曲线显示了快速收敛到最佳解决方案。其次,利用SSA和ESSA算法通过变速风力涡轮机(PMSG-VSWT)驱动的并网永磁同步发电机的能力来增强最大功率点跟踪和故障排除。最小化多目标函数(积分平方误差)以找到用于并网PMSG-VSWT的级联控制的Takagi-Sugeno-Kang模糊逻辑控制器(TSK-FLC)的高维参数。使用PSCAD / EMTDC进行的仿真结果证明,使用ESSA时产生的功率高于使用SSA时产生的功率,这意味着更高的效率和更低的成本。

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