scholarly journals Semi-Empirical Modelling and Predictive Tracking Control of the Mass Flow in a Pilot-Scale Tubular Reactor * *This work was supported by CONACYT, México, under grant 300959, 301068 and 252405. Partial financial support is kindly acknowledged from the Energy Sustainability Fund 2014-05 (CONACYT-SENER), Mexican Bioenergy Innovation Centre, Bioalcohols Cluster (249564).

2017 ◽  
Vol 50 (1) ◽  
pp. 11132-11137
Author(s):  
H. Caballero-Barragán ◽  
L.P. Osuna-Ibarra ◽  
A. Sanchez ◽  
A.G. Loukianov
2018 ◽  
Vol 69 ◽  
pp. 79-85 ◽  
Author(s):  
H. Caballero-Barragán ◽  
L. Osuna-Ibarra ◽  
A. Sanchez ◽  
A.G. Loukianov

1996 ◽  
Vol 176 ◽  
pp. 547-555
Author(s):  
E.R. Houdebine

We present the results of a long term research programme on the outer atmospheres of main-sequence dwarfs. Combining NLTE-radiation transfer calculations with high resolution spectroscopic observations have led to significant progress in understanding chromospheric physical properties and spectral signatures. We emphasize that in order to unravel the extremely complex physics of the outer atmosphere and its energy source, magnetic field and acoustic wave dissipation, one must isolate the influence of all stellar parameters.


2020 ◽  
Vol 197 ◽  
pp. 10003
Author(s):  
Simone Ghettini ◽  
Alessandro Sorce ◽  
Roberto Sacile

This paper presents a data–driven model for the estimation of the performance of an aircooled steam condenser (ACC) with the aim to develop an efficient online monitoring, summarized by the condenser pressure (or vacuum) as Key Performance Indicator. The estimation of the ACC performance model was based on different dataset from three different combined cycle power plants with a gross power of above 380 MWe each, focusing on stationary condition of the steam turbine. The datasets include both boundary (e.g. Ambient Temperature, Wind Speed) and operative parameters (e.g. steam mass flow rate, Steam turbine power, electrical load of the ACC fans) acquired from the power plants and some derived variable as the incondensable fraction, which calculation is here proposed as additional parameter. After a preliminary sensitivity analysis on data correlation, the paper focuses on the evaluation of different ACC Condenser models: Semi-Empirical model is described trough curves typically based on steam mass flow rate (or condenser load) and the ambient temperature as main parameters. Since monitoring based on ACC design curves Semi-Empirical models, provides biased poor results, with an error of about 15%, the curves parameters were estimated basing on training data set. Other two data driven models were presented, basing on a neural network modelling and multi linear regression technique and compared on the base of the reduced number of input at first and then including aldo the other process variables in the prediction of the condenser back pressure. Estimate the parameters of the Semi-Empirical model, results in a better prediction if just steam mass flow rate and ambient temperature are available, with an error of the 7%, thanks to the knowledge contained within the “curves shapes”, with respect to linear regression (8.3%) and Neural Network models (7.6%). Higher accuracy can be then obtained by considering a larger number of operative parameters and exploiting more complex data-driven model. With a higher number of features, the neural network model has proved a higher accuracy than the linear regression model. In fact, the mean percentage error of the NN model (2.6%), in all plant operating conditions, is slightly lower than the error of the linear regression model, but presents and much lower than the mean error of the Semi-Empirical model thanks to the additional data-based knowledge.


2021 ◽  
Author(s):  
Auguste Gires ◽  
Ioulia Tchiguirinskaia ◽  
Daniel Schertzer

<p>Universal Multifractals have been widely used to characterize and simulate geophysical fields extremely variable over a wide range of scales such as rainfall. Despite strong limitations, notably its non-stationnarity, discrete cascades are often used to simulate such fields. Recently, blunt cascades have been introduced in 1D and 2D to cope with this issue while remaining in the simple framework of discrete cascades. It basically consists in geometrically interpolating over moving windows the multiplicative increments at each cascade steps.</p><p> </p><p>In this paper, we first suggest an extension of this blunt cascades to space-time processes. Multifractal expected behaviour is theoretically established and numerically confirmed. In a second step, a methodology to address the common issue of guessing the missing half of a field is developed using this framework. It basically consists in reconstructing the increments of the known portion of the field, and then stochastically simulating the ones for the new portion, while ensuring the blunting the increments on the portion joining the two parts of the fields. The approach is tested with time series, maps and in a space-time framework. Initial tests with rainfall data are presented.</p><p> </p><p>Authors acknowledge the RW-Turb project (supported by the French National Research Agency - ANR-19-CE05-0022), for partial financial support.</p>


RSC Advances ◽  
2020 ◽  
Vol 10 (31) ◽  
pp. 18147-18159 ◽  
Author(s):  
José A. Pérez-Pimienta ◽  
Gabriela Papa ◽  
John M. Gladden ◽  
Blake A. Simmons ◽  
Arturo Sanchez

A pilot-scale continuous tubular reactor increases enzymatic digestibility of four different feedstocks by removing xylan and effectively achieving economically viable ethanol concentrations.


2013 ◽  
Vol 106 ◽  
pp. 186-200 ◽  
Author(s):  
B. Csukás ◽  
M. Varga ◽  
N. Miskolczi ◽  
S. Balogh ◽  
A. Angyal ◽  
...  

2016 ◽  
Vol 10 (4) ◽  
pp. 354-363
Author(s):  
Marie-Claire Chevrel ◽  
Sandrine Hoppe ◽  
Dimitrios Meimaroglou ◽  
Laurent Falk ◽  
Alain Durand

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