Artificial Intelligence techniques applied as estimator in chemical process systems - A literature survey
Access Status
Authors
Date
2015Type
Metadata
Show full item recordCitation
Source Title
ISSN
Faculty
Collection
Abstract
The versatility of Artificial Intelligence (AI) in process systems is not restricted to modelling and control only, but also as estimators to estimate the unmeasured parameters as an alternative to the conventional observers and hardware sensors. These estimators, also known as software sensors have been successfully applied in many chemical process systems such as reactors, distillation columns, and heat exchanger due to their robustness, simple formulation, adaptation capabilities and minimum modelling requirements for the design. However, the various types of AI methods available make it difficult to decide on the most suitable algorithm to be applied for any particular system. Hence, in this paper, we provide a broad literature survey of several AI algorithms implemented as estimators in chemical systems together with their advantages, limitations, practical implications and comparisons between one another to guide researchers in selecting and designing the AI-based estimators. Future research suggestions and directions in improvising and extending the usage of these estimators in various chemical operating units are also presented.
Related items
Showing items related by title, author, creator and subject.
-
Sathasivan, Arumugam; Chiang, Jacob; Nolan, P. (2009)Chloramine decays in distribution system due to wall and bulk water reactions. In bulk water, the decay could either be due to chemical or microbiological reactions. Without such distinction it is not possible to model ...
-
Bahadori, Alireza (2011)The continuing growth in the importance of oil and gas production and processing overall the globe increase the need for accurate prediction of various parameters and their impact on unit operations, process simulation ...
-
Goodson, W.; Lowe, L.; Carpenter, D.; Gilbertson, M.; Ali, A.; de Cerain Salsamendi, A.; Lasfar, A.; Carnero, A.; Azqueta, A.; Amedei, A.; Charles, A.; Collins, A.; Ward, A.; Salzberg, A.; Colacci, A.; Olsen, A.; Berg, A.; Barclay, B.; Zhou, B.; Blanco-Aparicio, C.; Baglole, C.; Dong, C.; Mondello, C.; Hsu, C.; Naus, C.; Yedjou, C.; Curran, C.; Laird, D.; Koch, D.; Carlin, D.; Felsher, D.; Roy, D.; Brown, D.; Ratovitski, E.; Ryan, E.; Corsini, E.; Rojas, E.; Moon, E.; Laconi, E.; Marongiu, F.; Al-Mulla, F.; Chiaradonna, F.; Darroudi, F.; Martin, F.; Van Schooten, F.; Goldberg, G.; Wagemaker, G.; Nangami, G.; Calaf, G.; Williams, G.; Wolf, G.; Koppen, G.; Brunborg, G.; Kim Lyerly, H.; Krishnan, H.; Hamid, H.; Yasaei, H.; Sone, H.; Kondoh, H.; Salem, H.; Hsu, H.; Park, H.; Koturbash, I.; Miousse, I.; Ivana Scovassi, A.; Klaunig, J.; Vondrácek, J.; Raju, J.; Roman, J.; Wise, J.; Whitfield, J.; Woodrick, J.; Christopher, J.; Ochieng, J.; Martinez-Leal, J.; Weisz, J.; Kravchenko, J.; Sun, J.; Prudhomme, K.; Narayanan, K.; Cohen-Solal, K.; Moorwood, K.; Gonzalez, L.; Soucek, L.; Jian, Le; D'Abronzo, L.; Lin, L.; Li, L.; Gulliver, L.; McCawley, L.; Memeo, L.; Vermeulen, L.; Leyns, L.; Zhang, L. (2015)© The Author 2015. Lifestyle factors are responsible for a considerable portion of cancer incidence worldwide, but credible estimates from the World Health Organization and the International Agency for Research on Cancer ...