首页> 外文会议>Intelligent System Applications to Power Systems, 2009. ISAP '09 >Adaptive Evolutionary Programming with Neural Network for Transient Stability Constrained Optimal Power Flow
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Adaptive Evolutionary Programming with Neural Network for Transient Stability Constrained Optimal Power Flow

机译:暂态稳定约束最优潮流的神经网络自适应进化规划

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An adaptive evolutionary programming (AEP) with a neural network is presented to solve transient stability constrained optimal power flow (TSCOPF). The AEP adjusts its population size automatically during an optimization process to obtain the TSCOPF solution. The artificial neural network is embedded into AEP to reduce the computational load caused by transient stability constraints. The fuel cost minimization is selected as the objective function of TSCOPF. The proposed method is tested on the IEEE 30-bus system with two types of the fuel cost functions, i.e. the conventional quadratic function and the quadratic function superimposed by sine component to model the cost curve without and with valve-point loading effects respectively. The numerical examples show that AEP is more effective than conventional EP in searching the global solution, and when the neural network is incorporated into AEP, it can significantly enhance the computational speed. A study of the architecture of the neural network is also conducted and discussed.
机译:提出了具有神经网络的自适应进化规划(AEP),以解决暂态稳定约束的最优潮流(TSCOPF)。 AEP在优化过程中会自动调整其人口规模,以获得TSCOPF解决方案。人工神经网络嵌入到AEP中,以减少由暂态稳定性约束引起的计算负荷。选择燃料成本最小化作为TSCOPF的目标函数。该方法在具有两种燃料成本函数的IEEE 30总线系统上进行了测试,即传统的二次函数和正弦分量叠加的二次函数,分别模拟了没有和有阀点负载效应的成本曲线。数值算例表明,AEP在搜索全局解时比传统的EP更有效,并且将神经网络集成到AEP中可以显着提高计算速度。还对神经网络的体系结构进行了研究。

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