236 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.In this research, a new neural network (NN) based cyclic material model is applied to inelastic hysteretic behavior of connections. In the proposed model, two energy-based internal variables are introduced to expedite the learning of hysteretic behavior of materials or structural components. The model has significant advantages over conventional models in that it can handle complex behavior due to local buckling and tearing of connecting elements. Moreover, its numerical implementation is more efficient than the conventional models since it does not need an interaction equation and a plastic potential. A new approach based on a self-learning simulation algorithm is used ...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
236 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.In this research, a new neura...
Current AISC-LRFD code requires that the moment-rotation characteristics of connections be known. M...
Current AISC-LRFD code requires that the moment-rotation characteristics of connections be known. M...
Summarization: A two-stage neural network approach is proposed for the elastoplastic analysis of ste...
An efficient component model has been developed that captures strength and stiffness deterioration o...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to-...
Summarization: The analysis of semirigid steel structure connections based on exact theoretical mode...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to-...
A two-stage neural network approach is proposed for the elastoplastic analy-sis of steel structures ...
A nonlinear structural model for the planar seismic response of steel structures is based on a clas...
A macro-element model with spread of inelasticity and localized nonlinear semi-rigid hinges is prese...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
236 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.In this research, a new neura...
Current AISC-LRFD code requires that the moment-rotation characteristics of connections be known. M...
Current AISC-LRFD code requires that the moment-rotation characteristics of connections be known. M...
Summarization: A two-stage neural network approach is proposed for the elastoplastic analysis of ste...
An efficient component model has been developed that captures strength and stiffness deterioration o...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to-...
Summarization: The analysis of semirigid steel structure connections based on exact theoretical mode...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to-...
A two-stage neural network approach is proposed for the elastoplastic analy-sis of steel structures ...
A nonlinear structural model for the planar seismic response of steel structures is based on a clas...
A macro-element model with spread of inelasticity and localized nonlinear semi-rigid hinges is prese...
The analysis of steel and composite frames has traditionally been carried out by idealizing beam-to...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...
A mechanistically informed data-driven approach is proposed to simulate the complex plastic behavior...