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Smart multi-model approach based on adaptive Neuro-Fuzzy Inference Systems and Genetic Algorithms

机译:基于自适应神经模糊推理系统和遗传算法的智能多模型方法

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摘要

A model of power demand represents the foundation of any intelligent Energy Management System, and its accuracy is the key factor determining the performance of such system. In order to improve the accuracy of the modeling process, a multi-model approach based on a Hierarchical Clustering of similar load behaviors is presented. The clustering algorithm joins similar data subsets in groups that are modelled separately using Adaptive Neuro-Fuzzy Inference Systems. Thus, each of the obtained models addresses only the characterization of one behavior, which provides better accuracy than classical approaches based on a single model, in addition to being easier and faster to train. During the training process of the models, an input selection technique based on Genetic Algorithms is proposed to search and select the best combination of inputs. The use of search algorithms allows to reduce the complexity of this task while maintaining the system performance, which represents a significant time saving of expert staff. The proposed approach is validated by means of experimental data from an automotive manufacturing plant. In addition to improving the forecasting accuracy, this methodology automates the segmentation of the load profiles into models and the selection of their inputs, as well as improving parallelization to effectively reduce the computation time.
机译:电力需求模型代表了任何智能能源管理系统的基础,其准确性是决定该系统性能的关键因素。为了提高建模过程的准确性,提出了一种基于相似负载行为的层次聚类的多模型方法。聚类算法将类似的数据子集连接在一起,使用自适应神经模糊推理系统分别对它们进行建模。因此,每个获得的模型仅解决一种行为的表征,除了更容易,更快地训练之外,它比基于单个模型的经典方法提供更好的准确性。在模型训练过程中,提出了一种基于遗传算法的输入选择技术,以搜索和选择输入的最佳组合。使用搜索算法可以在保持系统性能的同时降低此任务的复杂性,这可以节省大量的专家时间。通过来自汽车制造厂的实验数据验证了所提出的方法。除了提高预测准确性外,该方法还可以将负载曲线自动分割为模型并选择其输入,并提高并行化以有效减少计算时间。

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