R8Technologies OÜ, 11415 Tallinn, Estonia.
Department of Software Science, Tallinn University of Technology, 12618 Tallinn, Estonia.
Sensors (Basel). 2022 Aug 23;22(17):6338. doi: 10.3390/s22176338.
In recent years, explainable artificial intelligence (XAI) techniques have been developed to improve the explainability, trust and transparency of machine learning models. This work presents a method that explains the outputs of an air-handling unit (AHU) faults classifier using a modified XAI technique, such that non-AI expert end-users who require justification for the diagnosis output can easily understand the reasoning behind the decision. The method operates as follows: First, an XGBoost algorithm is used to detect and classify potential faults in the heating and cooling coil valves, sensors, and the heat recovery of an air-handling unit. Second, an XAI-based SHAP technique is used to provide explanations, with a focus on the end-users, who are HVAC engineers. Then, relevant features are chosen based on user-selected feature sets and features with high attribution scores. Finally, a sliding window system is used to visualize the short history of these relevant features and provide explanations for the diagnosed faults in the observed time period. This study aimed to provide information not only about what occurs at the time of fault appearance, but also about how the fault occurred. Finally, the resulting explanations are evaluated by seven HVAC expert engineers. The proposed approach is validated using real data collected from a shopping mall.
近年来,可解释人工智能(XAI)技术得到了发展,以提高机器学习模型的可解释性、信任度和透明度。本工作提出了一种使用改进的 XAI 技术解释空气处理单元(AHU)故障分类器输出的方法,以便需要诊断输出理由的非 AI 专家终端用户能够轻松理解决策背后的推理。该方法的操作如下:首先,使用 XGBoost 算法检测和分类加热和冷却盘管阀、传感器以及空气处理单元热回收的潜在故障。其次,使用基于 XAI 的 SHAP 技术提供解释,重点是 HVAC 工程师等终端用户。然后,根据用户选择的特征集和具有高归因分数的特征选择相关特征。最后,使用滑动窗口系统可视化这些相关特征的短期历史,并在观察时间段内为诊断出的故障提供解释。本研究旨在提供不仅有关故障出现时发生的情况,还有关故障如何发生的信息。最后,由七位 HVAC 专家工程师对生成的解释进行评估。该方法使用从购物中心采集的真实数据进行验证。