Sulselrabar系统中基于蚁群优化的PID-PSS协调控制

M. Rais, M. Djalal, V. A. Tandirerung, Rosihan Aminuddin, Irwan Syarif, Rosmiati
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摘要

发电机的稳定性对电力生产的连续性具有重要作用。多机电力系统有许多发电机连接在一起。Sulselrabar系统由几个相互连接的发电厂组成。发电中心之间的适当协调可以支持电力系统的性能,特别是当干扰可能破坏系统稳定性时。负荷突变是电力系统的扰动之一,会影响发电机组的稳定性。发电机运行时,控制器分配给发电机励磁设备。然而,电力系统动态的不断演变,使得发电机励磁设备在发生较大扰动时达到极限。PID和电力系统稳定器(PSS)等控制设备在系统中发挥着良好的作用。这些控制的使用需要在找到正确的参数和位置方面进行最佳协调。针对Sulselrabar系统中的多机发电机,提出了一种PID控制器与PSS控制器协调的方法。蚁群优化算法是一种采用蚂蚁寻找食物源行为的智能算法。采用蚁群算法对PID-PSS参数进行精确优化。以受负荷变化扰动影响的胜康发电机为例进行了研究。仿真结果表明,在转速超调响应和转子角最小方面,胜康发电机的性能最优。PID-PSS的应用也增加了系统的阻尼,使由于干扰而产生的振荡得到适当的衰减。
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Coordination PID-PSS Control Based on Ant Colony optimization In Sulselrabar System
The stability of a generator has an important function in the continuity of electricity production. A multimachine electric power system has many generators connected. The Sulselrabar system consists of several interconnected power plants. Proper coordination between generating centres can support the performance of the electric power system, especially when disturbances can disrupt system stability. Sudden load changes are one of the electric power system’s disturbances, which can impact the generator’s stability. In generator operation, the controller is assigned to the generator excitation equipment. However, the dynamics of the electric power system continue to evolve, causing the generator excitation equipment to reach its limit when a large disturbance occurs. Control equipment such as PID and Power System Stabilizer (PSS) produce good performance on the system. The use of these controls requires optimal coordination in finding the right parameters and locations. In this study, an approach is proposed in coordinating PID and PSS controllers for multi-engine generators in the Sulselrabar system. The Ant Colony optimization (ACO) algorithm is a smart algorithm that adopts the behavior of ants in finding food sources. ACO is used for precise PID-PSS parameter optimization. A case study was used in Sengkang generators that were subjected to load change disturbances. From the simulation results, it is obtained that the performance of the Sengkang generator is optimal in terms of speed overshoot response and minimum rotor angle. The application of PID-PSS also increases the damping system so that the oscillations generated due to disturbances can be properly attenuated.
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