2018
DOI: 10.1016/j.ijpvp.2018.10.020
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A neural network approach for determining spatial and geometry dependent Green's functions for thermal stress approximation in power plant header components

Abstract: The trend in power generation to operate plant with a greater frequency of on/partial/off load conditions creates several concerns for the long term structural integrity of many high temperature components. The Green's function method has been used for many years to estimate the thermal stresses in components such as steam headers by attempting to solve the un-coupled thermal stress problem for a unit temperature step. Once a Green's function for a unit temperature step has been determined, realistic or actual… Show more

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Cited by 4 publications
(2 citation statements)
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“…Efficient alternatives to FE analysis, e.g. neural networks and Green's functions [154] or welding process parameter optimisation frameworks [155], could potentially also be adopted to increase the efficiency of computation. Therefore, structural integrity prediction using throughprocess modelling concepts is possible without the need for very long, computationally expensive simulations.…”
Section: Component Life Predictionmentioning
confidence: 99%
“…Efficient alternatives to FE analysis, e.g. neural networks and Green's functions [154] or welding process parameter optimisation frameworks [155], could potentially also be adopted to increase the efficiency of computation. Therefore, structural integrity prediction using throughprocess modelling concepts is possible without the need for very long, computationally expensive simulations.…”
Section: Component Life Predictionmentioning
confidence: 99%
“…Attempts to model entire 9Cr power plant components have included modelling of welding-induced residual stress [28,29] in pipe sections, as a guide to select appropriate PWHT conditions, but in-service operation was not considered. Rouse et al [30] used neural networks to predict thermal stresses in power plant components but all weld regions used the same material properties. Li et al [24] looked at a welded power plant tee-joint, treating the weld as an idealised three-material region, comprising of HAZ, WM and PM.…”
Section: Introductionmentioning
confidence: 99%