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Soft sensors model optimization and application for the refinery real-time prediction of toluene content (CROSBI ID 247963)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Mohler, Ivan ; Ujević Andrijić, Željka ; Bolf, Nenad Soft sensors model optimization and application for the refinery real-time prediction of toluene content // Chemical engineering communications, 205 (2018), 3; 411-421. doi: 10.1080/00986445.2017.1399124

Podaci o odgovornosti

Mohler, Ivan ; Ujević Andrijić, Željka ; Bolf, Nenad

engleski

Soft sensors model optimization and application for the refinery real-time prediction of toluene content

Industrial facilities nowadays show an increasing need for continuous measurements, monitoring and controlling many process variables. The on-line process analyzers, being the key indicators of process and product quality, are often unavailable or malfunction. This paper describes development of soft sensor models based on the real plant data that could replace an on-line analyzer when it is unavailable, or to monitor and diagnose an analyzer’s performance. Soft sensors for continuous toluene content estimation based on the real aromatic plant data are developed. The autoregressive model with exogenous inputs, output error, the nonlinear autoregressive model consisted of exogenous inputs and Hammerstein–Wiener models were developed. In case of complex real-plant processes a large number of model regressors and coefficients need to be optimized. To overcome an exhaustive trial-and-error procedure of optimal model regressor order determination, differential evolution optimization method is applied. In general, the proposed approach could be, of interest for the development of dynamic polynomial identification models. The performance of the models are validated on the real-plant data.

Differential evolution ; Model regressor optimization ; Refinery aromatic process ; Soft sensors ; System identification

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Podaci o izdanju

205 (3)

2018.

411-421

objavljeno

0098-6445

1563-5201

10.1080/00986445.2017.1399124

Povezanost rada

Kemijsko inženjerstvo

Poveznice
Indeksiranost