A framework for modeling, generating, simulating, and predicting carbon dioxide dispersion indoors using cell-DEVS and deep learning

H. Khalil, G. Wainer
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Abstract

Carbon dioxide concentration in enclosed spaces is an air quality indicator that affects occupants’ well-being. To maintain healthy carbon dioxide levels indoors, enclosed space settings must be adjusted to maximize air quality while minimizing energy consumption. Studying the effect of these settings on carbon dioxide concentration levels is not feasible through physical experimentation and data collection. This problem can be solved by using validated simulation models, generating indoor settings scenarios, simulating those scenarios, and studying results. In previous work, we presented a formal Cellular Discrete Event System Specifications simulation model for studying carbon dioxide dispersion in rooms with various settings. However, designers may need to predict the results of altering large combinations of settings on air quality. Generating and simulating multiple scenarios with different combinations of space settings to test their effect on indoor air quality is time-consuming. In this research, we solve the two problems of the lack of ground truth data and the inefficiency of producing and studying simulation results for many combinations of settings by proposing a novel framework. The framework utilizes a Cellular Discrete Event System Specifications model, simulates different scenarios of enclosed spaces with various settings, and collects simulation results to form a data set to train a deep neural network. Without needing to generate all possible scenarios, the trained deep neural network is used to predict unknown settings of the closed space when other settings are altered. The framework facilitates configuring enclosed spaces to enhance air quality. We illustrate the framework uses through a case study.
利用细胞-DEVS 和深度学习对室内二氧化碳扩散进行建模、生成、模拟和预测的框架
封闭空间的二氧化碳浓度是影响居住者健康的一项空气质量指标。为了保持室内健康的二氧化碳水平,必须调整封闭空间的设置,以最大限度地提高空气质量,同时最大限度地减少能源消耗。通过物理实验和数据收集来研究这些设置对二氧化碳浓度水平的影响是不可行的。通过使用经过验证的仿真模型,生成室内设置场景,对这些场景进行模拟,并研究结果,可以解决这一问题。在之前的工作中,我们提出了一个正式的细胞离散事件系统规范模拟模型,用于研究不同设置的房间中的二氧化碳分散。然而,设计师可能需要预测改变空气质量设置的大组合的结果。生成和模拟具有不同空间设置组合的多个场景以测试其对室内空气质量的影响是耗时的。在本研究中,我们提出了一种新的框架,解决了地面真值数据缺乏和许多设置组合的模拟结果生成和研究效率低下的两个问题。该框架利用细胞离散事件系统规范模型,模拟不同设置的封闭空间的不同场景,并收集模拟结果形成数据集来训练深度神经网络。不需要生成所有可能的场景,训练后的深度神经网络可以在其他设置改变时预测封闭空间的未知设置。该框架有助于配置封闭空间,以改善空气质量。我们通过一个案例研究来说明框架的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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