Statistical models have been developed to predict the occurrence of pitting corrosion in carbon steel waste storage tanks exposed to radioactive nuclear waste. The levels of nitrite concentrations necessary to inhibit pitting at various temperatures and nitrate concentrations were experimentally determined via electrochemical polarization and coupon immersion corrosion tests. Models for the pitting behavior were developed based on various statistical analyses of the experimental data. Feed-forward Artificial Neural Network (ANN) models, trained using the Back-Propagation of Error Algorithm, more accurately predicted conditions at which pitting occurred than the logistic regression models developed using the same data
AbstractDifferent artificial intelligent tools have been used to model pitting corrosion behaviour o...
The high frequency of cooling coil leaks observed in high-heat waste storage tanks soon after sludge...
1 This paper presents an Articial Neural Network(ANN)-based solution methodology for modeling atmosp...
Dilute high-level radioactive waste slurries can induce pitting corrosion in carbon steel tanks in w...
Dilute high-level radioactive waste slurries can induce pitting corrosion in carbon steel tanks in w...
In this work, different classification models were proposed to predict the pitting corrosion status ...
The growth of pits in carbon steel exposed to dilute (0.055 M nitrate-bearing) alkaline salt solutio...
Dilute caustic high-level radioactive waste slurries can induce pitting corrosion in carbon steel. C...
As part of an ongoing study to evaluate the discontinuity in the corrosion controls at the SRS tank ...
A series of cyclic potentiodynamic polarization tests was performed on samples of ASTM A537 carbon s...
This paper summarizes the results of various attempts to implement a neural network for solving corr...
Even though the interest in the corrosion of radwaste tanks goes back to the mid-1940's when waste s...
The Hanford tank reservation contains approximately 50 million gallons of liquid legacy radioactive ...
The liquid waste chemistry control program is designed to reduce the pitting corrosion occurrence on...
In this work, different classification models were proposed to predict the pitting corrosion status ...
AbstractDifferent artificial intelligent tools have been used to model pitting corrosion behaviour o...
The high frequency of cooling coil leaks observed in high-heat waste storage tanks soon after sludge...
1 This paper presents an Articial Neural Network(ANN)-based solution methodology for modeling atmosp...
Dilute high-level radioactive waste slurries can induce pitting corrosion in carbon steel tanks in w...
Dilute high-level radioactive waste slurries can induce pitting corrosion in carbon steel tanks in w...
In this work, different classification models were proposed to predict the pitting corrosion status ...
The growth of pits in carbon steel exposed to dilute (0.055 M nitrate-bearing) alkaline salt solutio...
Dilute caustic high-level radioactive waste slurries can induce pitting corrosion in carbon steel. C...
As part of an ongoing study to evaluate the discontinuity in the corrosion controls at the SRS tank ...
A series of cyclic potentiodynamic polarization tests was performed on samples of ASTM A537 carbon s...
This paper summarizes the results of various attempts to implement a neural network for solving corr...
Even though the interest in the corrosion of radwaste tanks goes back to the mid-1940's when waste s...
The Hanford tank reservation contains approximately 50 million gallons of liquid legacy radioactive ...
The liquid waste chemistry control program is designed to reduce the pitting corrosion occurrence on...
In this work, different classification models were proposed to predict the pitting corrosion status ...
AbstractDifferent artificial intelligent tools have been used to model pitting corrosion behaviour o...
The high frequency of cooling coil leaks observed in high-heat waste storage tanks soon after sludge...
1 This paper presents an Articial Neural Network(ANN)-based solution methodology for modeling atmosp...