首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Artificial Intelligence-Assisted Heating Ventilation and Air Conditioning Control and the Unmet Demand for Sensors: Part 1. Problem Formulation and the Hypothesis
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Artificial Intelligence-Assisted Heating Ventilation and Air Conditioning Control and the Unmet Demand for Sensors: Part 1. Problem Formulation and the Hypothesis

机译:人工智能辅助的加热通风和空调控制以及传感器的未满足需求:第1部分。问题的提出和假设

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摘要

In this study, information pertaining to the development of artificial intelligence (AI) technology for improving the performance of heating, ventilation, and air conditioning (HVAC) systems was collected. Among the 18 AI tools developed for HVAC control during the past 20 years, only three functions, including weather forecasting, optimization, and predictive controls, have become mainstream. Based on the presented data, the energy savings of HVAC systems that have AI functionality is less than those equipped with traditional energy management system (EMS) controlling techniques. This is because the existing sensors cannot meet the required demand for AI functionality. The errors of most of the existing sensors are less than 5%. However, most of the prediction errors of AI tools are larger than 7%, except for the weather forecast. The normalized Harris index (NHI) is able to evaluate the energy saving percentages and the maximum saving rations of different kinds of HVAC controls. Based on the NHI, the estimated average energy savings percentage and the maximum saving rations of AI-assisted HVAC control are 14.4% and 44.04%, respectively. Data regarding the hypothesis of AI forecasting or prediction tools having less accuracy forms Part 1 of this series of research.
机译:在这项研究中,收集了有关改善加热,通风和空调(HVAC)系统性能的人工智能(AI)技术发展的信息。在过去20年中开发的用于HVAC控制的18种AI工具中,只有三种功能(包括天气预报,优化和预测控制)成为主流。根据提供的数据,具有AI功能的HVAC系统的节能量少于配备传统能源管理系统(EMS)控制技术的系统。这是因为现有的传感器无法满足对AI功能的要求。大多数现有传感器的误差小于5%。但是,除天气预报外,大多数AI工具的预测误差都大于7%。标准化的哈里斯指数​​(NHI)能够评估不同类型的HVAC控件的节能百分比和最大节能率。基于NHI,AI辅助HVAC控制的估计平均节能率和最大节能率分别为14.4%和44.04%。有关AI预测或准确性较低的预测工具的假设的数据构成了本系列研究的第1部分。

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