采用动态设定温度的方法实现非逆变式暖通空调系统的理想控制

IF 5.4 3区 工程技术 Q2 ENERGY & FUELS
Mohammad Foruzan Nia, Eric Hu, Mergen H. Ghayesh
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引用次数: 0

摘要

非逆变式暖通空调系统的传统控制采用开/关机制,通常是基于将传感器测量的温度与固定设定值进行比较。然而,这种方法通常是不准确的,因为这些传感器不能精确地测量目标变量(例如,房间的平均温度)。为了在不改变传感器位置或类型的情况下克服这一限制,本研究为基准测试室开发了一个神经网络模型,该测试室配备了以开/关模式运行的交流电源。该模型捕获了房间的流体动力和热特性与传感器温度读数之间的动态相关性。它根据期望的目标温度范围和边界条件,预测每个时间步长的传感器设定温度(Tdset-和Tdset+)的合适范围。针对边界条件随机分布的六种情况,将所提出的动态控制策略与经典控制策略和理想控制策略的有效性进行了比较。比较考虑了能耗以及目标变量保持在期望范围内的时间百分比(即Tset- <; average < Tset+)。结果表明,与经典控制方法相比,该动态控制策略将目标变量的调节能力提高了50 - 100%,能耗降低了约3 - 10%,同时接近理想控制效果。值得注意的是,即使应用了不同的目标设定值和波动的边界条件,该策略仍然有效。即使用于训练模型的输入数据是基于25±0.5°C的固定设置温度,也可以实现这种性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Achieving desirable control for non-inverter HVAC systems by dynamic set-temperature approach
The conventional control of non-inverter HVAC systems, which operate using an ON/OFF mechanism, is typically based on comparing the sensor-measured temperature with a fixed setpoint. However, this approach is often inaccurate because these sensors cannot precisely measure the target variable (e.g., the room’s mean temperature). To overcome this limitation without physically modifying the sensor’s location or type, this study developed a neural network model for a benchmark test room, equipped with an AC operating in ON/OFF mode. This model captures the dynamic correlation between the hydrodynamic and thermal characteristics of the room and the sensor temperature readings. It predicts a suitable range for the sensor set temperature (Tdset- and Tdset+) at each time step, based on the desired target temperature range and boundary conditions. The effectiveness of the proposed dynamic control strategy was compared with both the classical and ideal control strategies for six cases featuring randomly distributed boundary conditions. The comparison considered energy consumption as well as the percentage of time the target variable remained within the desired range (i.e., Tset- < Taverage < Tset+). Results showed that the dynamic control strategy improved regulation of the target variable by 50–100 % and reduced energy consumption by approximately 3–10 % compared to the classical method, while closely approximating the performance of the ideal control. Notably, the strategy remained effective even when varying target setpoints and fluctuating boundary conditions were applied. This performance was achieved even though the input data used to train the models were based on a fixed set temperature of 25 ± 0.5 °C.
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来源期刊
Thermal Science and Engineering Progress
Thermal Science and Engineering Progress Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
7.20
自引率
10.40%
发文量
327
审稿时长
41 days
期刊介绍: Thermal Science and Engineering Progress (TSEP) publishes original, high-quality research articles that span activities ranging from fundamental scientific research and discussion of the more controversial thermodynamic theories, to developments in thermal engineering that are in many instances examples of the way scientists and engineers are addressing the challenges facing a growing population – smart cities and global warming – maximising thermodynamic efficiencies and minimising all heat losses. It is intended that these will be of current relevance and interest to industry, academia and other practitioners. It is evident that many specialised journals in thermal and, to some extent, in fluid disciplines tend to focus on topics that can be classified as fundamental in nature, or are ‘applied’ and near-market. Thermal Science and Engineering Progress will bridge the gap between these two areas, allowing authors to make an easy choice, should they or a journal editor feel that their papers are ‘out of scope’ when considering other journals. The range of topics covered by Thermal Science and Engineering Progress addresses the rapid rate of development being made in thermal transfer processes as they affect traditional fields, and important growth in the topical research areas of aerospace, thermal biological and medical systems, electronics and nano-technologies, renewable energy systems, food production (including agriculture), and the need to minimise man-made thermal impacts on climate change. Review articles on appropriate topics for TSEP are encouraged, although until TSEP is fully established, these will be limited in number. Before submitting such articles, please contact one of the Editors, or a member of the Editorial Advisory Board with an outline of your proposal and your expertise in the area of your review.
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