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Renewable energy system based on IFOA-BP neural network load forecast

机译:基于IFOA-BP神经网络负荷预测的可再生能源系统

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In order to improve wind energy utilization and the accuracy of load forecasting, a wind turbine model was established and parameters were optimized. The back propagation neural network based on improved fruit fly optimization algorithm (IFOA-BP) is applied to load forecasting. Aiming at the optimization problem that the fruit fly optimization algorithm is easy to fall into the local or global optimum during the optimization process, use the improved fruit fly optimization algorithm to increase the search distance first to improve the diversity of the fruit fly optimization algorithm population, and then reduces the search distance, to enhance its search ability. Taking the load data of a power plant as an example, the algorithm was simulated and analyzed in matlab/simulink. The simulation results show that the algorithm can improve the prediction accuracy of wind energy and load.
机译:为了提高风能利用和负荷预测的准确性,建立了风力涡轮机模型,优化了参数。基于改进的果蝇优化算法(IFOA-BP)的后传播神经网络被应用于负载预测。针对优化问题,果蝇优化算法容易进入本地或全局最优优化过程中的优化过程,利用改进的果蝇优化算法首先提高搜索距离以提高果蝇优化算法的分集然后减少搜索距离,以提高其搜索能力。以电厂的负载数据为例,在Matlab / Simulink中模拟和分析了算法。仿真结果表明,该算法可以提高风能和负载的预测精度。

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