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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Multi crowd fast power control algorithm based on neighborhood opportunistic learning
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Multi crowd fast power control algorithm based on neighborhood opportunistic learning

机译:基于邻域机会学习的多人群快速功率控制算法

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摘要

For improving the energy-saving power generation scheduling in the electric power industry energy saving and emission reduction capability and enhance the safety and economy of power energy structure, we based on neighborhood opportunity learning multi intelligent power quickly swarm intelligent control algorithm is presented in this paper. Firstly, the proposed algorithm is based on the characteristic value of each neighborhood characteristic value which is obtained by chance mining. The system can obtain the real-time sensing data of each neighborhood power station. This algorithm establishes a neighborhood modular architecture. The algorithm in the opportunity to automate the operation of the module information on the opportunity to learn. Secondly, based on the opportunity to learn and fast variation of the power vector, the algorithm is derived to control the power generation fast group. The algorithm of the multiple power generation control system through the opportunity to control and quickly set the mapping link. Finally, the experimental results show that the proposed algorithm has a significant advantage in real-time, reliability and cost of intelligent management and fast control of power generation to adapt to a variety of power generation devices.
机译:为了提高电力行业的节能发电调度和节能减排能力,提高电力能源结构的安全性和经济性,本文提出了一种基于邻域机会学习的多元智能快速发电智能控制算法。 。首先,该算法基于通过机会挖掘获得的每个邻域特征值的特征值。系统可以获取每个邻近电站的实时传感数据。该算法建立了邻域模块化架构。机会算法中的模块操作信息自动学习机会。其次,基于学习功率矢量和快速矢量变化的机会,推导了控制功率快速组的算法。该算法通过多发电控制系统的机会来控制并快速设置映射链接。最后,实验结果表明,该算法在实时性,可靠性,智能管理成本,快速发电控制等方面具有明显优势,以适应多种发电设备。

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