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Explainable Anomaly Detection for District Heating Based on Shapley Additive Explanations

机译:基于福芙尼添加剂解释的地区供热解释了异常检测

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One key component in the heat-using facility of district heating systems is the differential pressure control valve. This valve ensures a stable flow of water to the heat exchanger and the temperature control valve. It also makes a stable pressure difference between the supply and return lines. Hence, its malfunctioning could cause significant heat losses and, consequently, economic losses. To avoid this, it is necessary to monitor the abnormal operation of the valve in real-time. Despite various machine learning-based anomaly detection models, their decision is limited in practical use unless the rationale for the decision is appropriately explained. In this paper, we propose a Shapley additive explanation-based explainable anomaly detection scheme that can present the degree of contribution of input variables to the derived result. We report some of the experimental results.
机译:热量使用区域加热系统的一个关键部件是差压控制阀。该阀确保了稳定的水流到热交换器和温度控制阀。它还在供应和返回线之间进行稳定的压力差。因此,其故障可能导致显着的热量损失,因此经济损失。为避免这种情况,有必要实时监控阀门的异常操作。尽管采用了各种机器学习的异常检测模型,但除非适当解释决定的理由,否则他们的决定在实际使用中受到限制。在本文中,我们提出了一种基于福利添加剂的解释性解释性的异常检测方案,可以向派生结果呈现输入变量的贡献程度。我们报告了一些实验结果。

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