2016
DOI: 10.18413/2518-1092-2016-1-2-52-59
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Neuro-Fuzzy Control of Continious Steel Strip Pickling

Abstract: The paper covers the methods and approaches of intelligent process control of pickling cold rolled steel strip with elements of comparator defect identification, based on the use of radialbasis (RBF) networks with Gaussian activation functions (GRB). The authors offer a criterion for assessing the quality of the process of etching the residual defects of the strip at the exit from the Ilyunin O.O., Gakhov R.P., Shamraev A.A. Neuro-fuzzy control of continious steel strip pickling // р а «На р а ». р я «И р а ».… Show more

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“…The next parameter influencing the TP is the acid concentration C. The concentration of ferrous sulfate n• hydrates in solution (Cn) primarily is considered as a limiting factor of the solution life time until its complete draining (Cn ≤ 16%) or (Cn ≤ 6%), partially refreshing [25], but also accelerates the process for certain intervals of (T, C, Cn) parameters.…”
Section: Process Problem Analysismentioning
confidence: 99%
See 1 more Smart Citation
“…The next parameter influencing the TP is the acid concentration C. The concentration of ferrous sulfate n• hydrates in solution (Cn) primarily is considered as a limiting factor of the solution life time until its complete draining (Cn ≤ 16%) or (Cn ≤ 6%), partially refreshing [25], but also accelerates the process for certain intervals of (T, C, Cn) parameters.…”
Section: Process Problem Analysismentioning
confidence: 99%
“…MW is the thermal energy consumption from the heat carrier (steam) . In general, the pickling rate function can be represented as a hypersurface of the model f (T, C, Cn) = tP for which a set of experimental data [25] is known for a set of values (Х; Y).…”
Section: Q T ≤mentioning
confidence: 99%