Yang Zijiang, Wang Jiandong, Li Honghai, Gao Song
College of Electrical Engineering and Automation, Shandong University of Science and Technology, Qingdao 266590, China.
Shandong Luruan Digital Technology Co., Ltd., Jinan 250098, China.
Entropy (Basel). 2025 Jul 9;27(7):736. doi: 10.3390/e27070736.
Alarm systems play crucial roles in industrial process safety. To support tackling the accident that is about to occur after an alarm, a pre-warning method is proposed for a special class of industrial process variables to alert operators about the remaining time to alarm. The main idea of the proposed method is to estimate the remaining time to alarm based on variation rates and mixture entropies of qualitative trends in univariate variables. If the remaining time to alarm is no longer than the pre-warning threshold and its mixture entropy is small enough then a warning is generated to alert the operators. One challenge for the proposed method is how to determine an optimal pre-warning threshold by considering the uncertainties induced by the sample distribution of the remaining time to alarm, subject to the constraint of the required false warning rate. This challenge is addressed by utilizing Bayesian estimation theory to estimate the confidence intervals for all candidates of the pre-warning threshold, and the optimal one is selected as the one whose upper bound of the confidence interval is nearest to the required false warning rate. Another challenge is how to measure the possibility of the current trend segment increasing to the alarm threshold, and this challenge is overcome by adopting the mixture entropy as a possibility measurement. Numerical and industrial examples illustrate the effectiveness of the proposed method and the advantages of the proposed method over the existing methods.
报警系统在工业过程安全中起着至关重要的作用。为了支持应对报警后即将发生的事故,针对一类特殊的工业过程变量提出了一种预警方法,以提醒操作人员距离报警的剩余时间。该方法的主要思想是基于单变量定性趋势的变化率和混合熵来估计报警的剩余时间。如果报警的剩余时间不超过预警阈值且其混合熵足够小,则生成警告以提醒操作人员。该方法面临的一个挑战是如何在考虑报警剩余时间样本分布所引起的不确定性的情况下,在所需误报率的约束下确定最优预警阈值。通过利用贝叶斯估计理论来估计预警阈值所有候选值的置信区间,并选择置信区间上限最接近所需误报率的候选值作为最优值,解决了这一挑战。另一个挑战是如何衡量当前趋势段上升到报警阈值的可能性,通过采用混合熵作为可能性度量克服了这一挑战。数值和工业实例说明了该方法的有效性以及该方法相对于现有方法的优势。