基于人工神经网络的办公室二氧化碳浓度预测

Mahsa Khorram, P. Faria, Omid Abrishambaf, Z. Vale, J. Soares
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引用次数: 3

摘要

不确定性是所有操作、组件和客观环境的状态,使得不可能描述现有状态。在知识发展领域,预测技术是克服不确定性以提高所有系统效率的必要手段。本文采用人工神经网络算法对某办公楼的CO2浓度进行预测。该算法在Rstudio软件中使用神经网络包实现。本文以两种不同输入数据的场景为例,提出了列车数据对预测算法结果的影响。案例研究中使用的数据集是监测了2年的真实数据。算法得到的结果显示了一个办公室在一个工作日600分钟内的二氧化碳浓度预测值。平均百分比误差表示绝对百分比误差,两种情景的预测数据的标准差在结果部分给出。
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CO2 Concentration Forecasting in an Office Using Artificial Neural Network
Uncertainty is the state of all operation, components, and objective environment that makes impossible to describe the existing state. Forecasting techniques are essential in the field of knowledge development to overcome the uncertainty to increase the efficiency of all systems. In this paper, artificial neural network algorithm is applied to forecast the CO2 concentration in an office building. The algorithm is implemented in Rstudio software using neural net package. The case study of the paper presents two scenarios with different input data to propose the impacts of train data on forecasting algorithms results. The used dataset in the case study is real data that have been monitored for 2 years. The obtained results of algorithms show the predicted values of CO2 concentration in one office for 600 minutes of a working day. The mean percentage error means absolute percentage error, and standard deviation of predicted data for both scenarios are presented in results section.
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