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Neural Identification of SSSC Based on Average model Using GAMMA, DNN, RBF and MLP for Steady State Calculations

机译:基于γ,DNN,RBF和MLP基于平均模型的SSSC的神经识别稳态计算

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The use of exact model of FACTS devices in steady state calculations is complex, due to their switching behavior. However, applying very simple models such as pure inductor/capacitor for FACTS devices leads to inaccurate results in power system studies. In addition in a power market the use of inaccurate models for power system components affects the electrical energy pricing system; while this is very crucial when FACTS devices are used for congestion management of the transmission systems. Average technique provides an appropriate time-domain representation of FACTS devices in which high frequency switching ripples are vanished. But average model can not be directly applied to the power system steady states. Thus this paper extends average model and presents an average-neural model of SSSC as a series FACTS device, which is well-suited for analytical purposes in power system applications. To this extend, design and development of four neural identifiers are performed using the GAMMA, DNN, RBF and MLP. To verify the developed models, the exact solutions obtained from the average model of SSSC are compared with the outcomes of the identifiers.
机译:由于其切换行为,在稳态计算中使用事实设备的确切模型是复杂的。但是,对事实设备的纯电感/电容器(例如纯电感/电容)应用非常简单的模型导致电力系统研究的结果不准确。此外,在电力市场上,使用不准确的电力系统组件模型会影响电能定价系统;虽然当事实设备用于传输系统的拥塞管理时,这是非常关键的。平均技术提供了事实器件的适当时域表示,其中消失了高频切换纹波。但平均模型不能直接应用于电力系统稳定状态。因此,本文扩展了平均模型,并呈现了SSSC的平均神经模型作为串联事实装置,这非常适合于电力系统应用中的分析目的。为此,使用伽马,DNN,RBF和MLP进行四个神经标识符的设计和开发。为了验证开发的模型,将从SSC的平均模型获得的精确解决方案与标识符的结果进行比较。

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