The use of Earth-Air-Water Heat Exchangers (EAWHE) for sustainable air conditioning has not been widely studied. Due to their experimental nature, methods of characterizing internal thermal air distribution impose high dependence on instrumentation by sensors and entail data acquisition and computational costs. This document presents an alternative method that estimates air temperature distribution while minimizing the need for a dense network of sensors in the experimental system. The proposed model, DARL (Data of Air and Random Length), can predict the temperature of air circulating inside EAWHEs. DARL is a significant methodological advance that integrates experimental data from boundary conditions with simulations based on pseudo-random numbers (PRNs). These PRNs are generated using Fermat's prime numbers as seeds to initialize the generator. Ordinary linear regressions and robust statistical validations, including the Shapiro-Wilk test and root mean square error, have demonstrated that the model can estimate the thermal distribution of air at different lengths with a relative error of less than 6.2%. These results demonstrate the model's efficiency, predictive capacity, and potential to reduce dependence on sensors.
翻译:地-气-水换热器(EAWHE)在可持续空调系统中的应用尚未得到广泛研究。由于其试验性质,表征内部空气热分布的方法高度依赖传感器仪器,并涉及数据采集与计算成本。本文提出一种替代方法,可在估计空气温度分布的同时,最大限度地减少实验系统对密集传感器网络的依赖。所提出的DARL(空气数据与随机长度)模型能够预测EAWHE内部循环空气的温度。DARL是一项重要的方法论进展,它将边界条件的实验数据与基于伪随机数(PRN)的模拟相结合。这些伪随机数采用费马素数作为种子初始化生成器来产生。通过普通线性回归和包括Shapiro-Wilk检验与均方根误差在内的稳健统计验证表明,该模型能以低于6.2%的相对误差估算不同长度下的空气热分布。这些结果证明了模型的高效性、预测能力以及降低传感器依赖性的潜力。