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An integrated method for critical clearing time prediction based on a model-driven and ensemble cost-sensitive data-driven scheme

机译:一种基于模型驱动和集成成本敏感数据驱动方案的关键清算时间预测的集成方法

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摘要

The critical clearing time (CCT) is one of the most important indexes for large-disturbance rotor angle stability margin evaluation. In practice, model-driven methods are usually realized based on simplified models to ease the computational burden, but the accuracy is sacrificed. To solve this problem, a data-driven method is adopted in this paper for fast error correction of a model-driven method, creating an integrated method. Both a reliable accuracy and an acceptable computation speed can be achieved with this integrated method. Meanwhile, involvement of model-driven method helps enhance robustness of the integrated method to training sample insufficiency, measurement error and power system scale. In addition, the data-driven method is further transformed on the basis of a cost-sensitive approach where the error tolerance for different actual CCT values should be differentiated during the training process instead of being treated equally in the common data-driven method. To mitigate the negative effect caused by such transformations, an ensemble learning structure is also constructed. In this paper, an integrated extended equal-area criterion (IEEAC) and an extreme learning machine (ELM) are applied as model-driven and data-driven methods, respectively. A genetic algorithm (GA) is used in the ensemble learning structure construction. Validations show that the proposed integrated method with the transformed data-driven method can improve the CCT prediction accuracy and avoid the polarization of the error distribution.
机译:关键清算时间(CCT)是大扰动转子角度稳定性保证金评估的最重要指标之一。在实践中,通常基于简化模型实现模型驱动方法,以便于计算负担,但牺牲了准确性。为了解决这个问题,本文采用了一种数据驱动方法,用于快速纠错模型驱动方法,创建集成方法。通过这种集成方法可以实现可靠的精度和可接受的计算速度。同时,模型驱动方法的参与有助于提高综合方法的稳健性,以训练采样功能不全,测量误差和电力系统规模。另外,基于成本敏感的方法进一步转换数据驱动方法,其中在训练过程中应该区分不同实际CCT值的误差容限而不是在常见的数据驱动方法中均等地处理。为了减轻这种转换造成的负面影响,还构造了集合学习结构。在本文中,分别应用了集成的扩展等区标准(IEEAC)和极端学习机(ELM)作为模型驱动和数据驱动的方法。在集合学习结构施工中使用遗传算法(GA)。验证表明,具有转换的数据驱动方法的建议的集成方法可以提高CCT预测精度,避免误差分布的极化。

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