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Materials Algorithms Project
Neural Networks: Programs Library
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This library contains complete PROGRAMS for the investigation of problems analysed by neural networks.
Format of documentation within this library.
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Programs Available
- MAP_NEURAL_ADI_HARDNESS
- Estimation of the Vickers hardness of austempered ductile cast irons (ADI) as a function of chemical composition and heat treatment conditions (austenitising temperature, austenitising time, austempering temperature and austempering time).
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_ADI_RETAINED-AUSTENITE
- Estimation of the amount of retained austenite in austempered ductile cast irons (ADI) as a function of chemical composition and heat treatment conditions (austenitising temperature, austenitising time, austempering temperature and austempering time).
- Language: FORTRAN, C & Executable files
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- MAP_ NEURAL_BAINITEPLATE_THICKNESS
- Estimates the bainite plate thickness of low-alloy steels as a function of transformation temperature, the chemical free energy available for nucleation and the strength of austenite at the transformation temperature over a limited range of inputs.
- Language: FORTRAN
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- MAP_NEURAL_CREEP
- Estimates the creep rupture strength of ferritic steels, as a function of chemical composition, heat treatment temperature and time.
- Language: FORTRAN, C & Executable files
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- MAP_NEURAL_FECO_LOSSES
- Estimation of the losses in FeCo alloys as a function of the temperature, frequency of applied field, and ageing time/temperature.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_FERRITE_NUMBER
- To predict the ferrite number of austenitic steel welds.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_FSW
- Process maps for friction stir welding
- Language: FORTRAN
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- MAP_NEURAL_GENETIC_ALGORITHM
- An application of the genetic algorithm (GA) for reaching a solution given a fitting function. This can in theory be applied to any problem, where a database of inputs and outputs has trained a neural network.
- Language: C & Executable files
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- MAP_NEURAL_HOT_TORSION
- To estimate hot torsion stress-strain curves in iron alloys as a function of testing temperature, strain rate, interpass time, chemical composition, strain and the highest strain experienced during previous test.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_HARDP
- Calculates the Vickers pyramidal diamond hardness of martensite, bainite or ferrite/pearlite mixtures.
- Language: FORTRAN
- MAP_NEURAL_HOT_STRENGTH
- 0.2 percent proof strength of creep-resistant ferritic steels as a function of temperature, chemical composition and heat treatment.
- Language: C,FORTRAN
- MAP_NEURAL_HOTROLLED_UTS
- To calculate the domain of steels and processing which can lead to the same ultimate tensile strength in hot-rolled steels.
- Language: C,FORTRAN
- MAP_NEURAL_HOTROLLED_EL
- To calculate the domain of steels and processing which can lead to the same elongation in hot-rolled steels.
- Language: C,FORTRAN
- MAP_NEURAL_HOTROLLED_UTS_EL
- To calculate the domain of steels and processing which can lead to the same combination of ultimate tensile strength and elongation in hot-rolled steels.
- Language: C,FORTRAN
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- MAP_NEURAL_LATTICE_PARAMETER_DATA
- Neural Experimental ata for the lattice parameters of austenite and ferrite.
- Language: Text
- MAP_NEURAL_LATTICE_PARAMETER_AUSTENITE
- Neural Network model of data for lattice parameter of austenite.
- Language: C, FORTRAN, Executables
- MAP_NEURAL_LATTICE_PARAMETER_FERRITE
- Neural Network model of data for lattice parameter of ferrite.
- Language: C, FORTRAN, Executables
- MAP_NICKEL_LATTICE
- Calculation of the Gamma and Gamma-prime lattice parameters in nickel base superalloys as a function of the chemical composition and temperature. Based on a neural network model. This program has the alias MAP_NEURAL_LATTICE
- Language: C, FORTRAN, Executables
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- MAP_NEURAL_MA-STEEL
- Predicts the yield strength, ultimate tensile strength and elongation of the mechanically alloyed oxide dispersion strengthened (MA-ODS) ferritic stainless steels as a non-linear function of the important processing and service variables.
- Language: FORTRAN
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- MAP_NEURAL_NNWORK
- MS-DOS based neural network program and data files which can be used for predicting cetain weld parameters: the heat affected zone hardness, the 800 to 500 ¡ cooling time, t8/5, and the weld dimensions.
- Language: Executable program only.
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- MAP_NEURAL_PEARLITE_GROWTH
- Isothermal austenite-to-pearlite transformation modelled using a neural network technique within a Bayesian framework. The growth rate of pearlite can be represented as a general empirical function of variables such as Mn, Cr, Ni, Si and Mo alloying contents and temperature which are of great important for the pearlite growth mechanisms.
- Language: FORTRAN/C
- MAP_NEURAL_PEARLITE_SPACING
- Estimates the interlamellar spacing of pearlite, using a neural network, as a function of Mn, Cr, Ni, Si and Mo alloying contents and temperature.
- Language: FORTRAN/C
- MAP_NEURAL_PLUTONIUM
- T Neural Network model of data for lattice parameter of delta plutonium.
- Language: FORTRAN, C & Executable files
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- MAP_NEURAL_SKYNET
- Graphical user interface to easily apply trained neural networks.
- Language: C++
- MAP_NEURAL_STEEL
- Predicts the Ac1 and Ac3 temperatures of steel as functions of the chemical compositions and the heating rate.
- Language: FORTRAN
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- MAP_NEURAL_WELDMETAL_ELN_CHP
- Estimates the tensile elongation and Charpy toughness of steel weldmetal (manual metal arc or submerged arc or tungsten inert gas), as a function of chemical composition, heat input, interpass temperature, post weld heat treatment temperature and time.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_WELDMETAL_EMB
- To estimate the temper embrittlement of a limited range of ferritic steel welds as a function of silicon, manganese, phosphorus, tin, anitmony and arsenic. Follows the work of Bruscato.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_WELDMETAL_T_27J
- To estimate the 27 J Charpy impact transistion temperature for ferritic steel welds as a function of the yield strength, oxygen content, reheated material and percentage acicular ferrite.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_WELDMETAL_YS_UTS
- Estimates the yield strength and ultimate tensile strength of steel weldmetal (manual metal arc or submerged arc or tungsten inert gas), as a function of chemical composition, heat input, interpass temperature, post weld heat treatment temperature and time.
- Language: FORTRAN, C & Executable files
- MAP_NEURAL_WELD_TOUGHNESS
- Estimates the Charpy toughness of steel welds (manual metal arc or submerged arc), as a function of strength, microstructure, chemical composition and temperature over a limited range of inputs.
- Language: FORTRAN
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