利用长短期记忆和广义回归神经网络模型对四栋住宅公寓的供暖能耗进行预测和相关分析以及敏感性分析

IF 7.1 2区 工程技术 Q1 ENERGY & FUELS Sustainable Energy Technologies and Assessments Pub Date : 2024-09-23 DOI:10.1016/j.seta.2024.103976
Moon Keun Kim , Bart Cremers , Nuodi Fu , Jiying Liu
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引用次数: 0

摘要

本研究旨在探索几种方法,以分析当地天气条件、室内二氧化碳水平和外墙开口率如何影响住宅结构的采暖能耗。为此,研究采用了两种技术:长短期记忆法和广义回归神经网络法。通过应用这些方法,研究提出了预测影响因素的方法,并评估了这些因素与建筑物实际采暖能耗的相关性。该研究使用 LSTM 和 GRNN 算法来预测使用机械和自然通风系统的住宅楼的供热能耗性能。结果表明,两种模型的平均误差率都很低,在 3.36% 到 6.12% 之间。不过,LSTM 模型与测量数据的相关性更好。对影响因素的研究表明,外部热量和湿度因素对采暖能耗的影响最大,而其他环境因素也对住宅建筑的性能有显著影响。太阳辐照度、风速和外墙开口率对采暖性能的影响有限,因为在极端天气条件下,居住者可能会发现调整通风率很困难。此外,这些因素无法单独影响供暖能耗。
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Predictive and correlational analysis of heating energy consumption in four residential apartments with sensitivity analysis using long Short-Term memory and Generalized regression neural network models
The aim of this study is to explore several approaches to analyze how local weather conditions, indoor CO2 levels, and façade opening ratios affect the heating energy usage of a residential structure. To achieve this, the study uses two techniques: long short-term memory and Generalized Regression Neural Network methods. By applying these methods, the study suggests methods to predict the impact factors and evaluate the strength of their correlation with the actual heating energy consumed by the building. The study used both LSTM and GRNN algorithms to forecast the performance of heating energy usages in residential buildings using mechanical and natural ventilation systems. The results described that both models had low average error rates, ranging from 3.36% to 6.12%. However, the LSTM model had a better correlation with measured data. The examination of impact factor indicated that outside thermal and humidity factor had the most primarily influences for heating energy usage, while other environmental factors also significantly affected the residential building’s performance. Solar irradiance, wind velocity, and façade opening ratio had limitations in influencing heating performance because occupants may find it challenging to adjust ventilation rates in extreme weather conditions. Additionally, these factors could not affect heating energy consumption independently.
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来源期刊
Sustainable Energy Technologies and Assessments
Sustainable Energy Technologies and Assessments Energy-Renewable Energy, Sustainability and the Environment
CiteScore
12.70
自引率
12.50%
发文量
1091
期刊介绍: Encouraging a transition to a sustainable energy future is imperative for our world. Technologies that enable this shift in various sectors like transportation, heating, and power systems are of utmost importance. Sustainable Energy Technologies and Assessments welcomes papers focusing on a range of aspects and levels of technological advancements in energy generation and utilization. The aim is to reduce the negative environmental impact associated with energy production and consumption, spanning from laboratory experiments to real-world applications in the commercial sector.
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