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Very short-term solar forecasting using multi-agent system based on Extreme Learning Machines and data clustering

机译:使用基于极限学习机和数据聚类的多智能体系统进行非常短期的太阳预报

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This paper proposes a new multi-agent system to solve very short-term solar forecasting problems. The system organizes the training data into clusters using Part and Select Algorithm. These clusters are used to generate different forecasting models, where each one is performed by a different agent. Finally, another agent is responsible for deciding which model will be applied at each forecasting situation. Results present improvements in forecasting accuracy and training performance if compared to other forecasting methods. A discussion of how to use this architecture for the implementation of a more comprehensive model is also addressed.
机译:本文提出了一种新的多代理系统来解决非常短期的太阳能预测问题。系统使用部分组织培训数据并选择算法。这些集群用于生成不同的预测模型,其中每个群集由不同的代理执行。最后,另一个代理负责决定在每个预测情况下应用哪种型号。结果与其他预测方法相比,预测准确性和培训性能的提高。还解决了如何使用这种架构来实现更全面的模型的讨论。

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