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A Dynamic Mode Decomposition Approach With Hankel Blocks to Forecast Multi-Channel Temporal Series

机译:Hankel块的动态模式分解方法预测多通道时间序列

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Forecasting is a task with many concerns, such as the size, quality, and behavior of the data, the computing power to do it, etc. This letter proposes the dynamic mode decomposition (DMD) as a tool to predict the annual air temperature and the sales of a stores' chain. The DMD decomposes the data into its principal modes, which are estimated from a training data set. It is assumed that the data is generated by a linear time-invariant high order autonomous system. These modes are useful to find the way the system behaves and to predict its future states, without using all the available data, even in a noisy environment. The Hankel block allows the estimation of hidden oscillatory modes, by increasing the order of the underlying dynamical system. The proposed method was tested in a case study consisting of the long term prediction of the weekly sales of a chain of stores. The performance assessment was based on the best fit percentage index. The proposed method is compared with three neural network-based predictors.
机译:预测是一项涉及很多问题的任务,例如数据的大小,质量和行为,数据的计算能力等。这封信提出了动态模式分解(DMD)作为预测年度气温和气温的工具。连锁店的销售。 DMD将数据分解为其主要模式,这些主要模式是根据训练数据集估算的。假定数据是由线性时不变高阶自治系统生成的。这些模式非常有用,即使在嘈杂的环境中,也无需使用所有可用数据,即可发现系统的行为方式并预测其未来状态。通过增加基本动力学系统的阶数,Hankel块可以估计隐藏的振荡模式。案例研究对提出的方法进行了测试,该案例包括对连锁店每周销售的长期预测。绩效评估基于最佳拟合百分比指数。将该方法与三种基于神经网络的预测器进行了比较。

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