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RBF neural network-based online intelligent management of a battery energy storage system for stand-alone microgrids

机译:基于RBF神经网络的独立微电网电池储能系统在线智能管理

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Background An offline optimization approach based on energy storage management response in a microgrid was not fast and not reliable enough to control and adjust the system efficiently after the loss of the utility grid. Thus, it causes system inefficiency and collapse in the presence of violent changes of loads or outage of distributed generations. To solve such a problem, more real-time management is needed. Any changes in loads/generations should be compensated successfully by a battery energy storage system (BESS) in a short period of time. Methods This paper presents a new method for the intelligent online management of both active and reactive power of a BESS based on a radial basis function neural network (RBFNN) incorporating particle swarm optimization (PSO) to prevent the stand-alone microgrid from instability and system collapse. BESS is centrally controlled by a controller developed by the proposed RBFNN. PSO is used to determine the optimized active and reactive power at every load/generation changing situation to monitor the effect of system frequency, voltage, and reference power regulation. These optimized power data are then employed as target data for the RBFNN generalization and training process. To enable the online updating of the operating parameters, the proposed RBFNN is implemented in the management process. With an appropriate RBFNN training, the optimum active and reactive power can directly be obtained without the necessity of performing the PSO optimization process at any change of load/generation. Results The results show that the predictive results of the proposed RBFNN model only slightly differed from the target results based on PSO and have a minimum statistical error compared to the predictive results based on the multilayer perceptron neural network (MLPNN) model. Conclusions The proposed RBFNN is suitable for the online estimation of the active and reactive power of BESS and can be used for real-time energy storage management as an online controller.
机译:背景技术基于微电网中储能管理响应的离线优化方法不够迅速,可靠性不足,无法在失去公用电网后有效地控制和调整系统。因此,在负载发生剧烈变化或分布式发电中断的情况下,这会导致系统效率低下和崩溃。为了解决这个问题,需要更多的实时管理。负载/发电量的任何变化都应在短时间内通过电池储能系统(BESS)成功补偿。方法本文提出了一种基于径向基函数神经网络(RBFNN)并结合粒子群优化(PSO)的BESS智能在线管理BESS的新方法,以防止独立微电网的不稳定和系统坍方。 BESS由建议的RBFNN开发的控制器集中控制。 PSO用于确定每种负载/发电变化情况下的最佳有功和无功功率,以监视系统频率,电压和参考功率调节的影响。然后将这些优化的功率数据用作RBFNN归纳和训练过程的目标数据。为了能够在线更新操作参数,在管理过程中实施了建议的RBFNN。通过适当的RBFNN训练,可以直接获得最佳有功功率和无功功率,而无需在负载/发电量的任何变化下执行PSO优化过程。结果结果表明,与基于多层感知器神经网络(MLPNN)模型的预测结果相比,所提出的RBFNN模型的预测结果与基于PSO的目标结果仅稍有差异,并且统计误差最小。结论所提出的RBFNN适用于在线评估BESS的有功和无功功率,并可作为在线控制器用于实时储能管理。

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