Software sensors based on the grey-box modelling approach

被引:15
作者
Carstensen, J [1 ]
Harremoes, P [1 ]
Strube, R [1 ]
机构
[1] KRUGER AS,R&D DIV,DK-2860 SOBORG,DENMARK
关键词
ammonia load; backwater; on-line control; Kalman-filtering; parameter estimation; pumping station; return sludge; SCADA-systems; statistical identification; surveillance;
D O I
10.1016/0273-1223(96)00164-3
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
In recent years the grey-box modelling approach has been applied to wastewater transportation and treatment Grey-box models are characterized by the combination of deterministic and stochastic terms to form a model where all the parameters are statistically identifiable from the on-line measurements. With respect to the development of software sensors, the grey-box models possess two important features. Firstly, the on-line measurements can be filtered according to the grey-box model in order to remove noise deriving from the measuring equipment and controlling devices. Secondly, the grey-box models may contain terms which can be estimated on-line by use of the models and measurements. In this paper, it is demonstrated that many storage basins in sewer systems can be used as an on-line flow measurement provided that the basin is monitored on-line with a level transmitter and that a grey-box model for the specific dynamics is identified. Similarly, an on-line software sensor for detecting the occurrence of backwater phenomena can be developed by comparing the dynamics of a flow measurement with a nearby level measurement. For treatment plants it is found that grey-box models applied to on-line ammonia measurements from the aeration tank of an alternating plant provide information on the incoming ammonia load It is also shown how measurements of the return sludge concentration from a secondary clarifier can be filtered to minimize the effect of the scraper. Thus, important information can be derived from on-line measurements if the appropriate grey-box model for the specific system is identified. Copyright (C) 1996 IAWQ.
引用
收藏
页码:117 / 126
页数:10
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