H-Ahead Multivariate microclimate Forecasting System Based on Deep Learning

Esraa Elhariri, S. Taie
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引用次数: 16

Abstract

Monitoring indoor environmental quality is an essential aspect for resident comfort and preserving the indoor materials quality. Environmental quality affected by large continuous fluctuations in a lot of environmental variables. Reducing and optimizing the effect of this fluctuations needs to operate Heating, ventilation, and air conditioning (HVAC) system continuously resulting in large energy consumption. This paper aims to predict a well defined future plan that operates HVAC system, taking into consideration optimizing energy consumption. The key advantage of this plan is its dependency on h-ahead multivariate time series prediction using deep learning to predict the air quality of near future. Experimental results showed that Gated Recurrent Unit (GRU) model using the indoor microclimate parameters (Temperature, humidity, and CO2) has the best accuracy for the prediction the three parameters with average Root Mean Square error of 4.0474125 for all parameters.
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基于深度学习的H-Ahead多元小气候预报系统
监测室内环境质量是保证居民舒适、保证室内材料质量的重要方面。环境质量受许多环境变量的连续波动影响较大。减少和优化这种波动的影响需要持续运行暖通空调(HVAC)系统,这导致了大量的能源消耗。本文旨在预测一个明确的未来计划,运行暖通空调系统,考虑优化能源消耗。该方案的关键优势在于依赖于h-ahead多元时间序列预测,利用深度学习来预测近期的空气质量。实验结果表明,采用室内小气候参数(温度、湿度和二氧化碳)的门控循环单元(GRU)模型对三个参数的预测精度最好,所有参数的平均均方根误差为4.0474125。
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