Vasconcelos Filho, ÊnioLopes dos Santos, Paulo2019-06-2120192475-1456http://hdl.handle.net/10400.22/14063Forecasting 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.engDynamic mode decompositionHankel matrixOredictionSystem identificationA Dynamic Mode Decomposition approach with Hankel blocks to forecast multi-channel temporal seriesjournal article10.1109/LCSYS.2019.2917811