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STATIC SECURITY-BASED AVAILABLE TRANSFER CAPABILITY USING ADAPTIVE NEURO FUZZY INFERENCE SYSTEM

机译:自适应神经模糊推理系统的基于静态安全的可用传输能力

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摘要

In power system deregulation, power transactions between a seller and a buyer can be scheduled only when sufficient available transfer capability (ATC) is available. The information about the ATC is to be continuously updated in real time and made available to the market participants through Internet-based system, open access same-time information system (OASIS). The static security-based ATC is to be computed for the base case system as well as for the critical line outages of the system. The critical line outages are based on static security analysis. Hence the computation of static security-based ATC using conventional method(s) is a tedious and time consuming process. In this paper static security-based ATC has been computed for real-time applications using three artificial intelligent methods viz., (i) back propagation algorithm (BPA), (ii) radial basis function (R.BF) neural network and (iii) adaptive Neuro fuzzy inference system (ANFIS). These three different intelligent methods are tested on IEEE 24-bus reliability test system (RTS) and 75-bus practical system. The results are compared with the conventional full ac load flow method for different transactions.
机译:在电力系统放松管制中,只有当有足够的可用传输能力(ATC)可用时,才能安排买卖双方之间的电力交易。有关ATC的信息将不断进行实时更新,并通过基于Internet的系统,开放访问实时信息系统(OASIS)提供给市场参与者。将为基本案例系统以及系统的关键线路中断计算基于静态安全性的ATC。关键线路中断基于静态安全分析。因此,使用常规方法计算基于静态安全性的ATC是一个繁琐且耗时的过程。在本文中,已经使用三种人工智能方法为实时应用计算了基于静态安全性的ATC,即(i)反向传播算法(BPA),(ii)径向基函数(R.BF)神经网络和(iii) )自适应神经模糊推理系统(ANFIS)。这三种不同的智能方法在IEEE 24总线可靠性测试系统(RTS)和75总线实用系统上进行了测试。将结果与常规全交流潮流方法进行比较以进行不同的处理。

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