Knowledge Agora



Similar Articles

Title Auto-Evaluation Model for the Prediction of Building Energy Consumption That Combines Modified Kalman Filtering and Long Short-Term Memory
ID_Doc 44605
Authors Yang, F; Mao, Q
Title Auto-Evaluation Model for the Prediction of Building Energy Consumption That Combines Modified Kalman Filtering and Long Short-Term Memory
Year 2023
Published Sustainability, 15, 22
Abstract As the world grapples with the challenges posed by climate change and depleting energy resources, achieving sustainability in the construction and operation of buildings has become a paramount concern. The construction and operation of buildings account for a substantial portion of global energy consumption and carbon emissions. Hence, the accurate prediction of building energy consumption is indispensable for reducing energy waste, minimizing greenhouse gas emissions, and fostering sustainable urban development. The aspiration to achieve predicted outcomes with remarkable accuracy has emerged as a pivotal objective, coinciding with the burgeoning popularity of deep learning techniques. This paper presents an auto-evaluation model for building energy consumption prediction via Long Short-Term Memory with modified Kalman filtering (LSTM-MKF). Results gleaned from data validation activities evince a notable transformation-a reduction of the maximal prediction error from an initial 83% to a markedly ameliorated 24% through the intervention of the proposed model. The LSTM-MKF model, a pioneering contribution within this paper, clearly exhibits a distinct advantage over the other models in terms of predictive accuracy, as underscored by its superior performance in all three key metrics, including mean absolute error, root mean square error, and mean square error. The model presents excellent potential as a valuable tool for enhancing the precision of predictions of building energy consumption, a pivotal aspect in energy efficiency, smart city development, and the formulation of informed energy policy.
PDF https://www.mdpi.com/2071-1050/15/22/15749/pdf?version=1699445731

Similar Articles

ID Score Article
43811 Chen, CY; Chai, KK; Lau, E AI-Assisted approach for building energy and carbon footprint modeling(2021)
14900 Luo, XJ; Oyedele, LO Forecasting building energy consumption: Adaptive long-short term memory neural networks driven by genetic algorithm(2021)
40350 Carrera, B; Kim, K A Regression Framework for Energy Consumption in Smart Cities with Encoder-Decoder Recurrent Neural Networks(2023)Energies, 16, 22
64440 Shahid, ZK; Saguna, S; Åhlund, C Forecasting Electricity and District Heating Consumption: A Case Study in Schools in Sweden(2023)
39221 Shafiq, M; Bhavani, NPG; Ramesh, JVN; Veeresha, RK; Talasila, V; Alfurhood, BS Thermal modeling and Machine learning for optimizing heat transfer in smart city infrastructure balancing energy efficiency and Climate Impact(2024)
37989 Ting, L Simulation of low energy building thermal energy cycle in IoT smart city planning based on environmental sensors and deep learning(2024)
Scroll