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Optimal generation scheduling in power system using frequency prediction through ANN under ABT environment

机译:ABT环境下基于ANN的频率预测的电力系统最优发电调度

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摘要

In a competitive and deregulated power scenario, the utilities try to maintain their real electric power generation in balance with the load demand, which creates a need for the precise real time generation scheduling (GS). In this paper, the GS problem is solved to perform the unit commitment (UC) based on frequency prediction by using artificial neural network (ANN) with the objective to minimize the overall system cost of the state utility. The introduction of availability-based tariff (ABT) signifies the importance of frequency in GS. Under-prediction or over-prediction will result in an unnecessary commitment of generating units or buying power from central generating units at a higher cost. Therefore, an accurate frequency prediction is the first step toward optimal GS. The dependency of frequency on various parameters such as actual generation, load demand, wind power and power deficit has been considered in this paper. The proposed technique provides a reliable solution for the input parameter different from the one presented in the training data. The performance of the frequency predictor model has been evaluated based on the absolute percentage error (APE) and the mean absolute percentage error (MAPE). The proposed predicted frequency sensitive GS model is applied to the system of Indian state of Tamilnadu, which reduces the overall system cost of the state utility by keeping off the dearer units selected based on the predicted frequency.
机译:在竞争激烈且管制放松的电力场景中,公用事业公司试图维持其实际发电量与负载需求之间的平衡,从而需要精确的实时发电调度(GS)。本文通过使用人工神经网络(ANN)解决了GS问题,以基于频率预测执行单位承诺(UC),目的是最大程度地降低国家公用事业的总体系统成本。基于可用性的资费(ABT)的引入标志着频率在GS中的重要性。预测不足或预测过度将导致发电机组不必要的承诺或以较高的成本从中央发电机组购买电力。因此,准确的频率预测是实现最佳GS的第一步。本文考虑了频率对各种参数的依赖性,例如实际发电量,负荷需求,风力和功率不足。所提出的技术为不同于训练数据的输入参数提供了一种可靠的解决方案。已基于绝对百分比误差(APE)和平均绝对百分比误差(MAPE)评估了频率预测器模型的性能。所提出的预测频率敏感型GS模型应用于印度泰米尔纳德邦的系统,通过避免根据预测频率选择较昂贵的单位,从而降低了该州公用事业的总体系统成本。

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