Automation of the Adaptive Heavy-Loaded Trajectory Identification Algorithm

N. Batseva, V. Sukhorukov
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Abstract

The aim of this research is a software implementation of the adaptive heavy-loaded trajectory identification algorithm by development of the program and its testing at controlled sections of 500 kV power grid. Previously, developed algorithm of the adaptive heavy-loaded trajectory identification makes it possible to identify the heavy-loaded trajectory using a current power system digital model relatively to a current power system state. The algorithm, in calculating limited active power flows in terms of small-signal aperiodic stability and monitoring small signal aperiodic stability violation in the researched controlled section precisely, uses such criteria as voltage levels at the ends of researched and adjacent controlled sections connections, as well as normalized angles through these connections. A software implementation of the adaptive heavy-loaded trajectory identification algorithm is performed using the object-oriented programming language C# in the development environment Microsoft Visual Studio applying AstraLib library of RastrWin3 software. The program is tested at controlled section No.1, which is the part of 500 kV transit of the chain structure. Calculated values of limited active power flows manually and using the program applying the adaptive heavy-loaded trajectory identification algorithm differ by 62 MW or 2.3%, which does not exceed 5% error value. Developed “Adaptive heavy-loaded trajectory identification” program allows calculating values of limited active power flows for a current power system state automatically. A promising direction of the program development is decreasing the running time of program operation and program modification for the identification of the adaptive heavy-loaded trajectory in circular and multi-closed structures.
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自适应重载弹道识别算法的自动化
本研究的目的是通过程序的开发和在500kv电网控制段的测试,实现自适应重载轨迹识别算法的软件实现。以前开发的自适应重载轨迹识别算法,可以利用当前电力系统的数字模型相对于当前电力系统的状态来识别重载轨迹。该算法采用研究段与相邻控制段连接端电压电平、连接端归一化角度等判据,从小信号非周期稳定角度计算有限有功潮流,并精确监测所研究控制段小信号非周期稳定违规情况。在Microsoft Visual Studio开发环境下,利用RastrWin3软件的AstraLib库,采用面向对象编程语言c#对自适应重载轨迹识别算法进行了软件实现。该方案在1号控制段进行了试验,该控制段是链条结构的500kv过境部分。人工和应用自适应重载轨迹识别算法的程序计算的有限有功潮流值相差62 MW或2.3%,误差值不超过5%。开发了“自适应重载轨迹识别”程序,可以自动计算当前电力系统状态下的有限有功潮流值。减少程序运行时间和程序修改时间,实现圆形和多封闭结构中自适应重载轨迹的识别,是程序发展的一个有前景的方向。
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