How Many Sensors are Necessary?—Sensor Reduction in HVAC Control Modeling Using Feature Attribution and Rule Extraction

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Alexander Stieger;Christian Stippel;Aleksey Bratukhin;Ralph Hoch;Thilo Sauter
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Abstract

Reinforcement learning (RL) has become a popular approach for process control design, especially for systems that are complex and not fully understood. The opaquenature of neural networks makes it tempting to use a variety of sensor data as input variables. In case of doubt, additional sensors are often introduced under the assumption that more sensors will also increase the accuracy of the model and, therefore, the control performance. However, this is not necessarily true, and the lack of interpretabilitycomplicates the identification of which sensors influence decision-making and are thus essential for the control function, and which are less important. Gaining insight into the significance of particular sensors allows for dimensionality reduction by fully removing less relevant sensors without compromising the system's performance. Investigating the example of heating, ventilation, and air conditioning (HVAC) systems, we suggest two approaches: rule extraction and feature attribution to identify key sensor inputs that are most relevant for optimizing control performance. In addition, when using rule extraction, we translate RL models into rule-based systems compatible with existing HVAC setups. This approach adds explainability and, in the given example, was able to reduce the required number of sensors by more than 70%.
需要多少个传感器?-基于特征属性和规则提取的暖通空调控制建模中的传感器缩减
强化学习(RL)已成为过程控制设计的一种流行方法,特别是对于复杂且未完全理解的系统。神经网络的不透明性使得它很容易使用各种传感器数据作为输入变量。在有疑问的情况下,通常会引入额外的传感器,假设更多的传感器也会提高模型的精度,从而提高控制性能。然而,这并不一定是正确的,并且缺乏可解释性使识别哪些传感器影响决策并因此对控制功能至关重要,哪些不那么重要变得复杂。深入了解特定传感器的重要性,可以在不影响系统性能的情况下,通过完全去除不太相关的传感器来降低维数。以供暖、通风和空调(HVAC)系统为例,我们提出了两种方法:规则提取和特征归因,以识别与优化控制性能最相关的关键传感器输入。此外,在使用规则提取时,我们将RL模型转换为与现有HVAC设置兼容的基于规则的系统。这种方法增加了可解释性,并且在给定的示例中,能够将所需的传感器数量减少70%以上。
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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