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A Unified Trading Model Based on Robust Optimization for Day-Ahead and Real-Time Markets with Wind Power Integration

机译:基于鲁棒优化的日前和实时市场风电集成统一交易模型

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In a conventional electricity market, trading is conducted based on power forecasts in the day-ahead market, while the power imbalance is regulated in the real-time market, which is a separate trading scheme. With large-scale wind power connected into the power grid, power forecast errors increase in the day-ahead market which lowers the economic efficiency of the separate trading scheme. This paper proposes a robust unified trading model that includes the forecasts of real-time prices and imbalance power into the day-ahead trading scheme. The model is developed based on robust optimization in view of the undefined probability distribution of clearing prices of the real-time market. For the model to be used efficiently, an improved quantum-behaved particle swarm algorithm (IQPSO) is presented in the paper based on an in-depth analysis of the limitations of the static character of quantum-behaved particle swarm algorithm (QPSO). Finally, the impacts of associated parameters on the separate trading and unified trading model are analyzed to verify the superiority of the proposed model and algorithm.
机译:在常规电力市场中,交易是基于日间市场中的电力预测进行的,而电力不平衡则在实时市场中进行调节,这是一个独立的交易方案。随着大型风电接入电网,日前市场中的电力预测误差增加,这降低了单独交易方案的经济效率。本文提出了一个鲁棒的统一交易模型,该模型将实时价格的预测和不平衡能力纳入日前交易方案中。考虑到实时市场清算价格的不确定概率分布,该模型是基于鲁棒优化而开发的。为了有效地利用模型,在深入分析量子行为粒子群算法(QPSO)静态特性局限性的基础上,提出了一种改进的量子行为粒子群算法(IQPSO)。最后,分析了相关参数对单独交易和统一交易模型的影响,以验证所提出模型和算法的优越性。

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