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A global approach to transient stability constrained optimal power flow using a machine detailed model

机译:使用机器详细模型的全局暂态稳定方法限制了最佳潮流

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摘要

Transient stability constrained optimal power flow (TSC-OPF) is originally a nonlinear optimization problem with variables and constraints in time domain, which is not easy to deal with because of its huge dimension, especially for systems with detailed machine models. This paper presents an efficient approach to realize TSC-OPF by introducing an independent dynamics simulation algorithm into the optimization procedure. In the new approach, the simulation algorithm is used to realize the dynamic constraints and to deduce the transient stability constraint, while the optimization algorithm verifies the steady state and the transient stability constraints together. The new TSC-OPF has just one more constraint than that of a conventional OPF and can be solved by a conventional OPF algorithm with small modification. In the new approach, there is no limitation for the machine model and the simulation method. The nonlinearity of the power system is taken fully into account. In the paper, the proposed approach is verified with a small three-machines system. The simulation results show the machine model influences greatly the system transient stability and the TSC-OPF results. The widely used machine classical model in the TSC-OPF over-estimates the system transient stability and under-estimates the TSC-OPF costs.
机译:暂态稳定约束最优潮流(TSC-OPF)最初是一个时域具有变量和约束的非线性优化问题,由于其尺寸巨大,因此不易处理,特别是对于具有详细机器模型的系统。本文通过在优化过程中引入独立的动力学仿真算法,提出了一种实现TSC-OPF的有效方法。在新方法中,仿真算法用于实现动态约束并推导出暂态稳定约束,而优化算法则一起验证稳态和暂态稳定约束。新的TSC-OPF比传统的OPF具有更多的约束,并且可以通过传统的OPF算法进行较小的修改来解决。在新方法中,机器模型和仿真方法没有限制。充分考虑了电力系统的非线性。在本文中,所提出的方法已在小型三机系统中得到验证。仿真结果表明,该机器模型对系统瞬态稳定性和TSC-OPF结果有很大影响。 TSC-OPF中广泛使用的机器经典模型高估了系统的瞬态稳定性,而低估了TSC-OPF的成本。

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