López-Gonzales Javier Linkolk, Salas Rodrigo, Velandia Daira, Canas Rodrigues Paulo
Escuela de Posgrado, Universidad Peruana Unión, Lima 15468, Peru.
Biomedical Engineering School, Faculty of Engineering, Universidad de Valparaíso, Valparaíso 2362905, Chile.
Entropy (Basel). 2024 Dec 6;26(12):1062. doi: 10.3390/e26121062.
Singular spectrum analysis is a powerful nonparametric technique used to decompose the original time series into a set of components that can be interpreted as trend, seasonal, and noise. For their part, neural networks are a family of information-processing techniques capable of approximating highly nonlinear functions. This study proposes to improve the precision in the prediction of air quality. For this purpose, a hybrid adaptation is considered. It is based on an integration of the singular spectrum analysis and the recurrent neural network long short-term memory; the SSA is applied to the original time series to split signal and noise, which are then predicted separately and added together to obtain the final forecasts. This hybrid method provided better performance when compared with other methods.
奇异谱分析是一种强大的非参数技术,用于将原始时间序列分解为一组可解释为趋势、季节性和噪声的成分。神经网络则是一类能够逼近高度非线性函数的信息处理技术。本研究旨在提高空气质量预测的精度。为此,考虑了一种混合方法。它基于奇异谱分析和递归神经网络长短期记忆的集成;将奇异谱分析应用于原始时间序列以分离信号和噪声,然后分别对它们进行预测并相加得到最终预测。与其他方法相比,这种混合方法具有更好的性能。