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Radial Basis Function trained with Dynamic Differential Annealed Optimization algorithm based Maximum Power Point Tracking Control of PV system under Uniform and Non-Uniform irradiance

机译:径向基函数采用均匀和非均匀辐照度的PV系统的动态差分退火优化算法训练了PV系统的最大功率点跟踪控制

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Excessive use of fossil fuel power plants has destroyed the environment beyond repair. Solar energy used in the form of PV systems can help to meet the energy demand. One drawback faced by PV systems is their non-linear output as a result of non-uniform irradiance levels on it. This paper presents a Maximum Power Point Tracking control technique, that is, radial basis function network trained with differential annealed optimization algorithm. High optimization of DDAO combined with high precision of RBFN makes it an effective MPPT technique. Comparison is made with RBFN-PSO and RBFN-INC to check the performance of the proposed technique. Two cases are presented to validate the superior performance of RBFN-DDAO. Comparison showed that RBFN-DDAO tracks the global maxima with greater than 99.93% efficiency and 11pmbms faster tracking time under fast varying irradiance and partial shading condition. The analysis of statistical data has also been exhibited to examine the robustness and responsiveness of the technique presented.
机译:过度使用化石燃料发电厂已经摧毁了超越维修的环境。光伏系统形式使用的太阳能可以帮助满足能源需求。 PV系统面临的一个缺点是它们的非线性输出,因此是非均匀的辐照度水平。本文提出了最大功率点跟踪控制技术,即径向基函数网络,具有差分退火优化算法训练。 DDAO的高优化结合RBFN的高精度使其成为有效的MPPT技术。使用RBFN-PSO和RBFN-INC进行比较,以检查所提出的技术的性能。提出了两种案例以验证RBFN-DDAO的卓越性能。比较表明,RBFN-DDAO在快速变化的辐照度和部分着色条件下跟踪了大于99.93%的效率大于99.93%的全局最大值,11 PMBMS更快的跟踪时间。还展示了统计数据的分析,以研究所呈现的技术的稳健性和响应性。

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