Big data time series forecasting based on pattern sequence similarity and its application to the electricity demand

2020 ◽  
Vol 540 ◽  
pp. 160-174 ◽  
Author(s):  
R. Pérez-Chacón ◽  
G. Asencio-Cortés ◽  
F. Martínez-Álvarez ◽  
A. Troncoso
2011 ◽  
Vol 23 (8) ◽  
pp. 1230-1243 ◽  
Author(s):  
Francisco Martinez Alvarez ◽  
Alicia Troncoso ◽  
Jose C. Riquelme ◽  
Jesus S. Aguilar Ruiz

Energies ◽  
2018 ◽  
Vol 12 (1) ◽  
pp. 94 ◽  
Author(s):  
Francisco Martínez-Álvarez ◽  
Amandine Schmutz ◽  
Gualberto Asencio-Cortés ◽  
Julien Jacques

The forecasting of future values is a very challenging task. In almost all scientific disciplines, the analysis of time series provides useful information and even economic benefits. In this context, this paper proposes a novel hybrid algorithm to forecast functional time series with arbitrary prediction horizons. It integrates a well-known clustering functional data algorithm into a forecasting strategy based on pattern sequence similarity, which was originally developed for discrete time series. The new approach assumes that some patterns are repeated over time, and it attempts to discover them and evaluate their immediate future. Hence, the algorithm first applies a clustering functional time series algorithm, i.e., it assigns labels to every data unit (it may represent either one hour, or one day, or any arbitrary length). As a result, the time series is transformed into a sequence of labels. Later, it retrieves the sequence of labels occurring just after the sample that we want to be forecasted. This sequence is searched for within the historical data, and every time it is found, the sample immediately after is stored. Once the searching process is terminated, the output is generated by weighting all stored data. The performance of the approach has been tested on real-world datasets related to electricity demand and compared to other existing methods, reporting very promising results. Finally, a statistical significance test has been carried out to confirm the suitability of the election of the compared methods. In conclusion, a novel algorithm to forecast functional time series is proposed with very satisfactory results when assessed in the context of electricity demand.


2018 ◽  
Vol 161 ◽  
pp. 12-25 ◽  
Author(s):  
R. Talavera-Llames ◽  
R. Pérez-Chacón ◽  
A. Troncoso ◽  
F. Martínez-Álvarez

Author(s):  
Son Nguyen ◽  
Anthony Park

This chapter compares the performances of multiple Big Data techniques applied for time series forecasting and traditional time series models on three Big Data sets. The traditional time series models, Autoregressive Integrated Moving Average (ARIMA), and exponential smoothing models are used as the baseline models against Big Data analysis methods in the machine learning. These Big Data techniques include regression trees, Support Vector Machines (SVM), Multilayer Perceptrons (MLP), Recurrent Neural Networks (RNN), and long short-term memory neural networks (LSTM). Across three time series data sets used (unemployment rate, bike rentals, and transportation), this study finds that LSTM neural networks performed the best. In conclusion, this study points out that Big Data machine learning algorithms applied in time series can outperform traditional time series models. The computations in this work are done by Python, one of the most popular open-sourced platforms for data science and Big Data analysis.


2017 ◽  
Vol 7 ◽  
pp. 16-30 ◽  
Author(s):  
Sidahmed Benabderrahmane ◽  
Nedra Mellouli ◽  
Myriam Lamolle ◽  
Patrick Paroubek

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