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首页> 外文期刊>Procedia Computer Science >Quantum-Inspired Features and Parameter Optimization of Spiking Neural Networks for a Case Study from Atmospheric
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Quantum-Inspired Features and Parameter Optimization of Spiking Neural Networks for a Case Study from Atmospheric

机译:来自大气的案例研究尖峰神经网络的量子启发特征和参数优化

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Identified cluster of atmospheric discharges, sufficiently near from transmissions line, could be an important alarm to support real time decisions. Lightning are important events that affect the electrical power system operation, which are often responsible for transmission lines outages, and can trigger a sequence of events that lead to system collapse. The Brazilian lightning network detection monitors nearly 18 million events monthly and all this data must be processed and analyzed. This paper uses a hybrid model named the Quantum binary-real evolving Spiking Neural Network (QbrSNN) for clustering problem, where the features and parameters of a spiking neural network (SNN) are optimized using the Quantum-Inspired Evolutionary Algorithm with representation Binary-Real (QIEA-BR). The proposed model is applied to atmospheric discharges data, with a significantly higher clustering accuracy than traditional techniques.
机译:距离传输线足够近的已识别大气排放簇可能是支持实时决策的重要警报。雷电是影响电力系统运行的重要事件,通常是造成输电线路中断的原因,并可能引发一系列导致系统崩溃的事件。巴西的闪电网络检测每月监测近1800万个事件,所有这些数据都必须进行处理和分析。本文使用称为量子二元实数进化尖峰神经网络(QbrSNN)的混合模型来解决聚类问题,其中使用表示为Binary-Real的量子启发式进化算法对尖峰神经网络(SNN)的特征和参数进行了优化。 (QIEA-BR)。所提出的模型应用于大气排放数据,其聚类精度明显高于传统技术。

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