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Previsão do consumo de energia elétrica a curto prazo, usando combinações de métodos univariadosCarneiro, Anna Cláudia Mancini da Silva 26 September 2014 (has links)
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Previous issue date: 2014-09-26 / CAPES - Coordenação de Aperfeiçoamento de Pessoal de Nível Superior / A previsão de cargas elétricas é fundamental para o planejamento das empresas de energia.
O foco deste estudo são as previsões a curto prazo; assim, aplicamos métodos univariados
de previsão de séries temporais a uma série real de cargas elétricas de 104 semanas no Rio
de Janeiro, nos anos de 1996 e 1997, e experimentamos várias combinações dos métodos
de melhor desempenho.
As combinações foram feitas pelo método outperformance, uma combinação linear
simples, com pesos fixos. Os resultados das combinações foram comparados ao de
simulações de redes neurais artificiais que solucionam o mesmo problema, e ao resultado
de um método de amortecimento de dupla sazonalidade aditiva. No geral, este método de
amortecimento obteve os melhores resultados, e talvez seja o mais adequado e confiável
para aplicações práticas, embora necessite de melhorias para garantir a extração completa
da informação contida nos dados. / Forecasting the demand for electric power is crucial for the production planning in energy
utilities. The focus of this study are the short-term forecasts. We apply univariate
time series methods to the forecasting of a series containing observations of the energy
consumption of 104 weeks in Rio de Janeiro, in 1996 and 1997, and experiment with
several combinations of the methods which have the best performance.
These combinations are done by the outperformance method, a simple linear
combination with fixed weights. The results were compared to those obtained by neural
networks on the same problem, and with the results of a exponential smoothing method
for dual additive seasonality. Overall, the exponential smoothing method achieved the
best results, and was shown to be perhaps the most reliable and suitable for practical
applications, even though it needs improvements to ensure complete extraction of the
information contained in the data.
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Demand Forecasting of Outbound Logistics Using Neural NetworksOtuodung, Enobong Paul, Gorhan, Gulten January 2023 (has links)
Long short-term volume forecasting is essential for companies regarding their logistics service operations. It is crucial for logistic companies to predict the volumes of goods that will be delivered to various centers at any given day, as this will assist in managing the efficiency of their business operations. This research aims to create a forecasting model for outbound logistics volumes by utilizing design science research methodology in building 3 machine-learning models and evaluating the performance of the models . The dataset is provided by Tetra Pak AB, the World's leading food processing and packaging solutions company,. Research methods were mainly quantitative, based on statistical data and numerical calculations. Three algorithms were implemented: which are encoder–decoder networks based on Long Short-Term Memory (LSTM), Convolutional Long Short-Term Memory (ConvLSTM), and Convolutional Neural Network Long ShortTerm Memory (CNN-LSTM). Comparisons are made with the average Root Mean Square Error (RMSE) for six distribution centers (DC) of Tetra Pak. Results obtained from encoder–decoder networks based on LSTM are compared to results obtained by encoder–decoder networks based on ConvLSTM and CNN-LSTM. The three algorithms performed very well, considering the loss of the Train and Test with our multivariate time series dataset. However, based on the average score of the RMSE, there are slight differences between algorithms for all DCs.
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