Publication:
Debugging FPGA projects using artificial intelligence

dc.contributor.authorDinu, Alexandru
dc.contributor.authorGheorghe, Stefan
dc.contributor.authorDanciu, Gabriel Mihail
dc.contributor.authorOgrutan, Petre Lucian
dc.date.accessioned2025-09-22T14:57:03Z
dc.date.issued2021-11-03
dc.description.abstractDebugging digital designs implemented into FPGA devices is a challenging task. As opposite to simulation, simultaneous access to all input and output signals is not possible. The main obstacles in the debugging process are a limited number of input/output ports of FPGAs and the transfer of information from a digital device to an external data processor. However, debugging a digital design requests analysis of many combinations of inputs and outputs of a module to assess if these are well correlated and if their operation matches device specifications. The current work of the research team consisted of designing an end-to-end flow of data processing that fulfills the aim of debugging digital designs (particularly in this work, FPGA devices are considered). Firstly, a data generator based on majority voting idea was created using RTL languages. After checking its behavior using simulation, it has been downloaded into the FPGA fabric of a Spartan 3E board. The data generated from this reconfigurable device was acquired through the UART protocol, using an FT232R adapter. It was preprocessed to reconstruct the fields of each data sample and to remove transmission errors. The team analyzed the distribution of the obtained values and adjusted the data to achieve a uniform distribution. The team used the data to train both machine learning and deep learning models to create a golden reference model which accurately reflects the main functionality of the DUT: executing the majority vote operation over three pairs of numbers. Finally, the team presented how to use the resulting reference model to debug digital systems.
dc.identifier.urihttps://repository.unitbv.ro/handle/123456789/1900
dc.language.isoen_US
dc.relation.ispartofseriesVolume 24
dc.subjectdata mining and analysis
dc.subjectFPGA
dc.subjectmachine learning
dc.subjectdeep learning
dc.subjectreference model
dc.subjectneural network configuration
dc.titleDebugging FPGA projects using artificial intelligence
dc.typeArticle
dspace.entity.typePublication

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