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A Learning Approach to Improve the Selection of Forecasting Algorithms in an Office Building in Different Contexts

Title
A Learning Approach to Improve the Selection of Forecasting Algorithms in an Office Building in Different Contexts
Type
Article in International Conference Proceedings Book
Year
2022
Authors
Ramos, D
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Faria, P
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Gomes, L
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Pedro Campos
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Vale, Z
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Other information
Authenticus ID: P-00X-94K
Abstract (EN): Energy management in buildings can be largely improved by considering adequate forecasting techniques to find load consumption patterns. While these forecasting techniques are relevant, decision making is needed to decide the forecasting technique that suits best each context, thus improving the accuracy of predictions. In this paper, two forecasting methods are used including artificial neural network and k-nearest neighbor. These algorithms are considered to predict the consumption of a building equipped with devices recording consumptions and sensors data. These forecasts are performed from five-to-five minutes and the forecasting technique decision is taken into account as an enhanced factor to improve the accuracy of predictions. This decision making is optimized with the support of the multi-armed bandit, the reinforcement learning algorithm that analyzes the best suitable method in each five minutes. Exploration alternatives are considered in trial and test studies as means to find the best suitable level of unexplored territory that results in higher accumulated rewards. In the case-study, four contexts have been considered to illustrate the application of the proposed methodology.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 11
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