2017
DOI: 10.3390/pr5040056
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Numerical Aspects of Data Reconciliation in Industrial Applications

Abstract: Abstract:Data reconciliation is a model-based technique that reduces measurement errors by making use of redundancies in process data. It is largely applied in modern process industries, being commercially available in software tools. Based on industrial applications reported in the literature, we have identified and tested different configuration settings providing a numerical assessment on the performance of several important aspects involved in the solution of nonlinear steady-state data reconciliation that… Show more

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Cited by 33 publications
(27 citation statements)
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“…As a matter of fact, access to actual data are extremely important for real-time monitoring and optimization of production units [9]. The dynamic monitoring of a plant, unit or industrial equipment is increasingly necessary to improve product quality, enhance process safety, and reduce energy costs and waste; however, the acquired information must be reliable and validated with physical process constraints, as the reliability of the data are of paramount importance for any decision-making related to the analyzed process [10]. Nevertheless, process measurements are subject to errors and fluctuations due to intrinsic imprecision, degradation, malfunction, improper installation, poor calibration, and failure of measurement instruments.…”
Section: Data Rectificationmentioning
confidence: 99%
“…As a matter of fact, access to actual data are extremely important for real-time monitoring and optimization of production units [9]. The dynamic monitoring of a plant, unit or industrial equipment is increasingly necessary to improve product quality, enhance process safety, and reduce energy costs and waste; however, the acquired information must be reliable and validated with physical process constraints, as the reliability of the data are of paramount importance for any decision-making related to the analyzed process [10]. Nevertheless, process measurements are subject to errors and fluctuations due to intrinsic imprecision, degradation, malfunction, improper installation, poor calibration, and failure of measurement instruments.…”
Section: Data Rectificationmentioning
confidence: 99%
“…In general, the water temperature ranges from 21.2 °C to 27.4 °C during 8th August and mid-September, then progressively decreases from 21.2 °C to 12.2 °C until the end of October. The lake is completely stratified during 3 periods from mid-August to mid-September, (12)(13)(14)(15)(16)(17)(18)(19)(20) During the rest of the presented period, a daily stratification cycle can be observed. The subsurface water temperature (0.5 m depth) begins to increase at about 6:00 a.m., achieving the daily maximum at around 16:00 p.m., and then decreases.…”
Section: Thermal Stratification Periodsmentioning
confidence: 99%
“…The average ratio of phycocyanin to chlorophyll-a (µg chl-a/L/µg PC/L) is calculated for each phytoplankton bloom period (11)(12)(13)(14)(15)(16)(17)(18)(19) …”
Section: Which Variable Can Be Used As An Indicator Of Phytoplankton mentioning
confidence: 99%
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“…SRTO requires several preprocessing steps, such as steady-state detection, data reconciliation, parameter estimation and model adaptation before it can be used. A major improvement can be obtained in the data reconciliation step [18]. Recently, DRTO and EMPC have become more attractive due to their better performance in handling input and output constraints in comparison with SRTO.…”
Section: Introductionmentioning
confidence: 99%