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Optimal Bidding Strategies using New Aggregated Demand Model with Particle Swarm Optimization Technique

机译:新的总需求模型和粒子群优化技术的最优竞价策略

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In this paper, Particle Swarm optimization(PSO) and Artificial Bee Colony (ABC) algorithms are used to determine the optimal bidding strategy in competitive auction market implementation. The deregulated power industry meets the challenges of increase their profits and also minimize the associadted risks of the system. The market includes generating companies(Gencos) and large Consumers. The demand prediction of the system has been determined by the neural network, which is trained by using the previous day demand dataset, the training process is achieved by the back propagation algorithm. The fitness of the system compared with PSO and ABC technique, the maximized fitness is the optimal bidding strategy of the system . The results for two techniques will be analyzed in this paper. The implementation of the two techniques could be implemented in the MATLAB Platform.
机译:本文采用粒子群算法(PSO)和人工蜂群算法(ABC)确定竞争拍卖市场实施中的最优竞标策略。放松管制的电力行业面临着增加利润的挑战,也使系统的相关风险降至最低。市场包括发电公司(Gencos)和大型消费者。该系统的需求预测已由神经网络确定,该神经网络使用前一天的需求数据集进行训练,训练过程通过反向传播算法实现。与PSO和ABC技术相比,系统的适应性是最大化适应性,是系统的最佳出价策略。本文将分析两种技术的结果。可以在MATLAB平台中实现这两种技术的实现。

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