Litcius/Paper detail

Forecasting Time‐Series Energy Data in Buildings Using an Additive Artificial Intelligence Model for Improving Energy Efficiency

Ngoc-Son Truong, Ngoc-Tri Ngo, Anh‐Duc Pham

2021Computational Intelligence and Neuroscience25 citationsDOIOpen Access PDF

Abstract

Building energy efficiency is important because buildings consume a significant energy amount. The study proposed additive artificial neural networks (AANNs) for predicting energy use in residential buildings. A dataset in hourly resolution was used to evaluate the AANNs model, which was collected from a residential building with a solar photovoltaic system. The proposed AANNs model achieved good predictive accuracy with 14.04% in mean absolute percentage error (MAPE) and 111.98 Watt-hour in the mean absolute error (MAE). Compared to the support vector regression (SVR), the AANNs model can significantly improve the accuracy which was 103.75% in MAPE. Compared to the ANNs model, accuracy improvement percentage by the AANNs model was 4.6% in MAPE. The AANNs model was the most effective forecasting model among the investigated models in predicting energy consumption, which provides building managers with a useful tool to improve energy efficiency in buildings.

Topics & Concepts

Mean absolute percentage errorMean absolute errorComputer scienceArtificial neural networkSupport vector machinePhotovoltaic systemPredictive modellingMean squared errorTime seriesEnergy (signal processing)Efficient energy useApproximation errorStatisticsArtificial intelligenceMachine learningMathematicsEngineeringAlgorithmElectrical engineeringBuilding Energy and Comfort OptimizationEnergy Load and Power ForecastingAir Quality Monitoring and Forecasting