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Power system contingency ranking using Newton Raphson load flow method and its prediction using soft computing techniques

机译:牛顿拉夫逊潮流法对电力系统的突发事件排序及其软计算预测

摘要

The most important requirement and need of proper operation of power system is maintenance of the system security. Power system security assessment helps in monitoring and in giving up to date analysis regarding currents, bus voltages, power flows, status of circuit breaker, etc. This system assessment has been done in offline mode in which the system conditions are determined using ac power flows. The use of AC power flows is it gives information of power flows in terms of MW and MVAR , line over loadings and voltage limit violation with accurate values. Contingency selection or contingency screening is a process in which probable and potential critical contingencies are identified for which it requires consideration of each line or generator outage. . Contingency ranking is a procedure of contingency analysis in which contingencies are arranged in descending order, sorted out by the severity of contingency. Overall severity index (OPI) is calculated for determining the ranking of contingency. Overall performance index is the summation of two performance index , one of the performance index determines line overloading and other performance index determines bus voltage drop limit violation and are known as active power performance index and voltage performance index respectively. Here in this proposed work the contingency ranking has been done with IEEE 5 bus and 14 bus system. But the system parameters are dynamic in nature, keeps on changing and may affect the system parameters that are why there is need of soft computing techniques for the prediction purpose. Fuzzy logic approach has also been used. Two model of Artificial Neural Network namely, Multi Layer Feed Forward Neural Network (MFNN) and Radial Basis Function Network (RBFNN) have been considered. With these soft computing techniques the prediction method helps in obtaining the OPI with greater accuracy.
机译:正确运行电源的最重要要求和需求是维护系统安全性。电力系统安全评估有助于监视和放弃有关电流,母线电压,潮流,断路器状态等的最新分析。此系统评估已在离线模式下完成,在离线模式下使用交流潮流确定系统条件。使用交流潮流是因为它以MW和MVAR给出了潮流信息,并提供了准确值的线路过载和违反电压限制的信息。应急选择或应急筛选是确定可能和潜在的紧急事故的过程,为此需要考虑每条线路或发电机的停机情况。 。突发事件排名是一种突发事件分析过程,其中突发事件按降序排列,并根据突发事件的严重性进行排序。计算总体严重性指数(OPI)以确定突发事件的等级。总体性能指标是两个性能指标的总和,其中一个性能指标确定线路过载,另一个性能指标确定母线电压跌落极限,分别称为有功功率性能指标和电压性能指标。在此提议的工作中,应急等级已通过IEEE 5总线和14总线系统完成。但是系统参数本质上是动态的,会不断变化并且可能会影响系统参数,这就是为什么出于预测目的需要软计算技术的原因。模糊逻辑方法也已被使用。已经考虑了两种人工神经网络模型,即多层前馈神经网络(MFNN)和径向基函数网络(RBFNN)。利用这些软计算技术,预测方法有助于获得更高精度的OPI。

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    Naik P;

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  • 年度 2014
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