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Salp swarm algorithm and phasor measurement unit based hybrid robust neural network model for online monitoring of voltage stability

机译:SALP Swarm算法和相量测量单元的基于混合稳健神经网络模型,用于在线监测电压稳定性

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摘要

Incessant assessment of voltage stability is lively aspect to safeguard the electrical power system operation. The traditional methods for online assessment in terms of voltage stability analysis are extremely time consuming and also difficult for supervising it in online. In connection to this a novel model based on Salp swarm algorithm and artificial neural network (SSA-ANN) is considered for online monitoring of voltage stability in this manuscript. As we know that ANN is an influential and promising predictive tool to attain the efficacy and accuracy in terms of training and testing time. The input for model is the PMU data and the output for the model is voltage stability margin index which is used for voltage stability monitoring. SSA is used for tuning the Meta parameters such as the activation functions and number of nodes along with the learning rate. The solution method opted for this stability monitoring utilises the magnitude of voltage and its corresponding phase angle which are attained from the PMU as the inputs to the neural network model. The efficiency of the proposed model is verified by means of various test cases and compared with the same data set to attest it's pre-eminence.
机译:电压稳定性的不断评估是活泼的方面,以保护电力系统操作。在电压稳定性分析方面的在线评估的传统方法非常耗时,并且在网上监督它也很难。关于这一基于SALP群算法的新型模型和人工神经网络(SSA-ANN)被认为是在该稿件中的电压稳定性的在线监测。正如我们所知,ANN是实现在训练和测试时间方面的有效性和准确性有影响力和有前途的预测工具。对模型的输入是PMU数据和输出的模型是用于电压稳定的监测电压稳定裕度指数。 SSA用于调整元参数,例如激活功能和节点数量以及学习速率。选择该稳定监测的解决方案方法利用电压的大小及其相应的相位角,其从PMU获得为对神经网络模型的输入。通过各种测试用例验证所提出的模型的效率,并与相同的数据集进行比较,以证明它的前卓越。

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