Peng Chang, FanChao Meng
IEEE Trans Neural Netw Learn Syst. 2024 Jun;35(6):8124-8133. doi: 10.1109/TNNLS.2022.3224804. Epub 2024 Jun 3.
As one of the hot issues of concerns during modern social development, the wastewater treatment process is acknowledged to be a process with complex biochemical reactions and susceptible to an external environment, featuring strong nonlinear and time correlation characteristics, which are difficult for traditional mechanism-based models to tackle. For many classical data-driven fault detection methods, a complete retraining process is necessary to monitor every new fault, and most of the current neural network-based strategies rarely achieve satisfactory monitoring accuracy or robustness either. Giving full consideration to the aforementioned problems, this article takes advantage of position encoding, residual connection, and multihead attention mechanism embedded in the Transformer structure to establish an effective and efficient wastewater treatment process fault detection model, where offline modeling and online monitoring are performed successively to achieve accurate detection of the faults. In the experimental part, the advantages of the proposed method are strongly verified through the simulation monitoring of 27 faults on the benchmark simulation model 1 (BSM1), where the false alarm rate (FAR) and miss alarm rate (MAR) of the established method are proved to be significantly lower than those of the compared state-of-the-art methods.
作为现代社会发展过程中备受关注的热点问题之一,废水处理过程被认为是一个具有复杂生化反应且易受外部环境影响的过程,具有很强的非线性和时间相关性特征,传统的基于机理的模型难以处理。对于许多经典的数据驱动故障检测方法,监测每一个新故障都需要进行完整的重新训练过程,而且目前大多数基于神经网络的策略也很少能达到令人满意的监测精度或鲁棒性。充分考虑上述问题,本文利用Transformer结构中嵌入的位置编码、残差连接和多头注意力机制,建立了一个高效的废水处理过程故障检测模型,通过离线建模和在线监测相继进行,以实现对故障的准确检测。在实验部分,通过对基准仿真模型1(BSM1)上的27种故障进行仿真监测,有力地验证了所提方法的优势,证明所建立方法的误报率(FAR)和漏报率(MAR)明显低于所比较的现有先进方法。