A novel decomposition‐ensemble model for forecasting short‐term load‐time series with multiple seasonal patterns

2018 ◽  
Vol 65 ◽  
pp. 478-494 ◽  
Author(s):  
Xiaobo Zhang ◽  
Jianzhou Wang
Author(s):  
Matheus Henrique Dal Molin Ribeiro ◽  
Victor Henrique Alves Ribeiro ◽  
Gilberto Reynoso-Meza ◽  
Leandro dos Santos Coelho

2021 ◽  
pp. 1-14
Author(s):  
Nguyen Quang Dat ◽  
Nguyen Thi Ngoc Anh ◽  
Nguyen Nhat Anh ◽  
Vijender Kumar Solanki

Short-term electricity load forecasting (STLF) plays a key role in operating the power system of a nation. A challenging problem in STLF is to deal with real-time data. This paper aims to address the problem using a hybrid online model. Online learning methods are becoming essential in STLF because load data often show complex seasonality (daily, weekly, annual) and changing patterns. Online models such as Online AutoRegressive Integrated Moving Average (Online ARIMA) and Online Recurrent neural network (Online RNN) can modify their parameters on the fly to adapt to the changes of real-time data. However, Online RNN alone cannot handle seasonality directly and ARIMA can only handle a single seasonal pattern (Seasonal ARIMA). In this study, we propose a hybrid online model that combines Online ARIMA, Online RNN, and Multi-seasonal decomposition to forecast real-time time series with multiple seasonal patterns. First, we decompose the original time series into three components: trend, seasonality, and residual. The seasonal patterns are modeled using Fourier series. This approach is flexible, allowing us to incorporate multiple periods. For trend and residual components, we employ Online ARIMA and Online RNN respectively to obtain the predictions. We use hourly load data of Vietnam and daily load data of Australia as case studies to verify our proposed model. The experimental results show that our model has better performance than single online models. The proposed model is robust and can be applied in many other fields with real-time time series.


2005 ◽  
Vol 134 (1) ◽  
pp. 119-125 ◽  
Author(s):  
C. C. TAM ◽  
L. C. RODRIGUES ◽  
S. J. O'BRIEN ◽  
S. HAJAT

SUMMARYCampylobacteris the most common bacterial cause of gastroenteritis in England and Wales, with 45 000 cases reported annually.Campylobacterincidence is highly seasonal; the consistent peak in late spring suggests a role for meteorological factors in the epidemiology of this organism. We investigated the relationship between ambient temperature andCampylobacterenteritis using time-series analysis to study short-term associations between temperature and number ofCampylobacterreports adjusted for longer-term trend and seasonal patterns. We found a linear relationship between mean weekly temperature and reportedCampylobacterenteritis, with a 1°C rise corresponding to a 5% increase in the number of reports up to a threshold of 14°C. There was no relationship outside this temperature range. Our findings provide evidence that ambient temperature influencesCampylobacterincidence, and suggest that its effect is likely to be indirect, acting through other intermediate pathways.


2021 ◽  
Vol 7 ◽  
pp. 58-64
Author(s):  
Xifeng Guo ◽  
Ye Gao ◽  
Yupeng Li ◽  
Di Zheng ◽  
Dan Shan

Electronics ◽  
2021 ◽  
Vol 10 (10) ◽  
pp. 1151
Author(s):  
Carolina Gijón ◽  
Matías Toril ◽  
Salvador Luna-Ramírez ◽  
María Luisa Marí-Altozano ◽  
José María Ruiz-Avilés

Network dimensioning is a critical task in current mobile networks, as any failure in this process leads to degraded user experience or unnecessary upgrades of network resources. For this purpose, radio planning tools often predict monthly busy-hour data traffic to detect capacity bottlenecks in advance. Supervised Learning (SL) arises as a promising solution to improve predictions obtained with legacy approaches. Previous works have shown that deep learning outperforms classical time series analysis when predicting data traffic in cellular networks in the short term (seconds/minutes) and medium term (hours/days) from long historical data series. However, long-term forecasting (several months horizon) performed in radio planning tools relies on short and noisy time series, thus requiring a separate analysis. In this work, we present the first study comparing SL and time series analysis approaches to predict monthly busy-hour data traffic on a cell basis in a live LTE network. To this end, an extensive dataset is collected, comprising data traffic per cell for a whole country during 30 months. The considered methods include Random Forest, different Neural Networks, Support Vector Regression, Seasonal Auto Regressive Integrated Moving Average and Additive Holt–Winters. Results show that SL models outperform time series approaches, while reducing data storage capacity requirements. More importantly, unlike in short-term and medium-term traffic forecasting, non-deep SL approaches are competitive with deep learning while being more computationally efficient.


Sign in / Sign up

Export Citation Format

Share Document