Publication | Closed Access
A New ANN-Based Modeling Approach for Rapid EMI/EMC Analysis of PCB and Shielding Enclosures
35
Citations
32
References
2012
Year
Pcb TracesEngineeringRapid Emi/emc AnalysisShielding EnclosuresElectronic DesignComputer-aided DesignElectromagnetic CompatibilityPhysical Design (Electronics)Modeling And SimulationComputational ElectromagneticsElectronic PackagingEfficient Electromagnetic CompatibilityElectrical EngineeringComputer EngineeringElectrical InsulationMicroelectronicsCircuit DesignPcb LayoutsTransmission LineCircuit Simulation
This paper introduces a new artificial neural networks (ANNs)-based reverse-modeling approach for efficient electromagnetic compatibility (EMC) analysis of printed circuit boards (PCBs) and shielding enclosures. The proposed approach improves the accuracy of conventional or standard neural models by reversing the input-output variables in a systematic manner, while keeping the model structures simple relative to complex knowledge-based ANNs (e.g., KBNNs). The approach facilitates accurate and fast neural network modeling of realistic EMC scenarios where training data are expensive and sparse. To establish accuracy, efficiency, and feasibility of the proposed reverse-modeling approach, PCB structures such as perforated surface-mount shields and partially shielded PCB traces are treated as proof-of-concept examples. Although the modeling examples presented in the paper are based on training data from EM simulations, the approach is generic and hence valid for EMC modeling based on the measurement data. The approach is particularly useful in the electronic manufacturing industry where PCB layouts are frequently reused with minor modifications to the existing time-tested designs.
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