Irizar I, Alferes J, Larrea L, Ayesa E
CEIT and TECNUN, University of Navarra, P de Manuel Lardizabal 15, 20018 San Sebastian, Spain.
Water Sci Technol. 2008;57(7):1053-60. doi: 10.2166/wst.2008.139.
Important indicators for monitoring and control of wastewater treatment plants (WWTP) often have to be obtained from the processing of on-line signal trajectories. Therefore, the quality of sensor instantaneous measurements can be improved significantly if they are complemented with valuable information about the geometric features of their trajectories. The present paper describes the design and implementation of a Standard Signal Processing Architecture (SSPA) from which enriched sensor information is generated automatically. The SSPA has been made up of three complementary modules: the pre-processing module, the storage module and the post-processing module. Moreover, the SSPA has been parameterised so as to allow its adaptation to the specifications of every signal. By performing basic calculations on pre-processed signal trajectories, the storage module produces enriched vectors which collect information of the first and second time derivatives, average and variance values, peak values, linear regression parameters, curvature, etc. Then, the enriched information vectors can be exploited to implement customised monitoring and control tools. In this respect, the effectiveness of the SSPA has been demonstrated in three different practical cases: (1) OUR and KLa identification algorithms; (2) processing of measurements for real-time controllers; and, (3) detection of bend-points in on-line signals of SBR processes.
污水处理厂(WWTP)监测与控制的重要指标通常必须从在线信号轨迹的处理中获取。因此,如果传感器瞬时测量值能辅以有关其轨迹几何特征的有价值信息,那么测量质量就能得到显著提高。本文描述了一种标准信号处理架构(SSPA) 的设计与实现,该架构能自动生成丰富的传感器信息。SSPA 由三个互补模块组成:预处理模块、存储模块和后处理模块。此外,SSPA 已进行参数化设置,以便能适应每种信号的规格要求。通过对预处理后的信号轨迹进行基本计算,存储模块生成丰富的向量,这些向量收集了一阶和二阶时间导数、平均值和方差值、峰值、线性回归参数、曲率等信息。然后,利用这些丰富的信息向量来实现定制的监测和控制工具。在这方面,SSPA 的有效性已在三个不同的实际案例中得到证明:(1)OUR 和 KLa 识别算法;(2)实时控制器测量值的处理;以及,(3)SBR 工艺在线信号中转折点的检测。