Izenburua
Real-Time Servo Press Force Estimation Based on Dual Particle FilterEgilea
Beste erakundeak
https://ror.org/041kmwe10Bertsioa
PostprintaDokumentu-mota
ArtikuluaHizkuntza
IngelesaEskubideak
© 2020 IEEESarbidea
Sarbide irekiaArgitaratzailearen bertsioa
https://doi.org/10.1109/TIE.2019.2921292Non argitaratua
IEEE Transactions on Industrial Electronics 202 Vol. 67 (5)Lehenengo orria
4088Azken orria
4097Argitaratzailea
IEEEGako-hitzak
Dual particle filter (dPF)
field programmable gate array (FPGA)
model-based soft sensor (MBSS)
state ... [+]
field programmable gate array (FPGA)
model-based soft sensor (MBSS)
state ... [+]
Dual particle filter (dPF)
field programmable gate array (FPGA)
model-based soft sensor (MBSS)
state
unknown input
ODS 8 Trabajo decente y crecimiento económico
ODS 12 Producción y consumo responsables [-]
field programmable gate array (FPGA)
model-based soft sensor (MBSS)
state
unknown input
ODS 8 Trabajo decente y crecimiento económico
ODS 12 Producción y consumo responsables [-]
Gaia (UNESCO Tesauroa)
AkustikaKomunikazioaren teknologia
Telekomunikazioak
UNESCO Sailkapena
AkustikaTelekomunikazioen teknologia
Laburpena
The ability to monitor the quality of the metal forming process as well as the machine's condition is of significant importance in modern industrial processes. In the case where a physical device (i.e ... [+]
The ability to monitor the quality of the metal forming process as well as the machine's condition is of significant importance in modern industrial processes. In the case where a physical device (i.e., sensor) cannot be deployed due to the characteristics of the system, models that rely on the estimation of both the applied force and the dynamic behavior of the machine (i.e., system) are adopted. The development of such models and the corresponding algorithms used to estimate the above-mentioned quantities has attracted the interest of the community. The main contribution of this paper is the estimation of a servo press force by employing a novel dual particle filter based algorithm, achieving a maximum relative error in the force estimation of 3.6%. Moreover, to address real-time performance requirements, this paper proposes a field programmable gate array based accelerator that improves the sampling rate by a factor of 200 compared to a processor-based solution, thus enabling the deployment of the system in many realistic scenarios. [-]



















