Digitalni repozitorij raziskovalnih organizacij Slovenije

Iskanje po repozitoriju
A+ | A- | Pomoč | SLO | ENG

Iskalni niz: išči po
išči po
išči po
išči po

Možnosti:
  Ponastavi


Iskalni niz: "avtor" (Biasizzo Anton) .

1 - 7 / 7
Na začetekNa prejšnjo stran1Na naslednjo stranNa konec
1.
Reliability improvements for in-wheel motor
Gašper Petelin, Rok Hribar, Stane Ciglarič, Jernej Herman, Anton Biasizzo, Peter Korošec, Gregor Papa, 2024, samostojni znanstveni sestavek ali poglavje v monografski publikaciji

Povzetek: Setting up a reliable electric propulsion system in the automotive sector requires an intelligent condition monitoring device capable of reliably assessing the state and the health of the electric motor. To allow for a massive integration of such monitoring devices, they must be inexpensive and small. These requirements limit their accuracy. However, we show in this chapter that these limitations can be significantly reduced by appropriate processing of the sensor data. We have used machine learning models (random forest and XGBoost) to transform very noisy motor winding insulation resistance measurements made by a low-cost device into a much more reliable value that can compete with measurements made by a high-priced state-of-the-art measurement system. The proposed method is an important building block for a future smart condition monitoring system and enables a cost-effective and accurate assessment of the condition of electric motor health in connection with the condition of their winding insulation.
Ključne besede: machine learning models, low-cost device, electric motor
Objavljeno v DiRROS: 23.07.2024; Ogledov: 56; Prenosov: 16
URL Povezava na datoteko

2.
Towards deploying highly quantized neural networks on FPGA using chisel
Jure Vreča, Anton Biasizzo, 2023, objavljeni znanstveni prispevek na konferenci

Povzetek: We present chisel4ml, a Chisel-based tool that generates hardware for highly quantized neural networks described in QKeras. Such networks typically use parameters with bitwidths less than 8 bits and may have pruned connections. Chisel4ml can generate the highly quantized neural network as a single combinational circuit with pipeline registers in between the different layers. It supports heterogeneous quantization where each layer can have a different precision. The full parallelization enables very low-latency and high throughput inference, that are required for certain tasks. We illustrate this on the triggering system for the CERN Large Hadron Collider, which filters out events of interest and sends them on for further processing. We compare our tool against hls4ml, a high-level synthesis based approach for deploying similar neural networks. Chisel4ml is still under development. However, it already achieves comparable results to hls4ml for some neural network architectures. Chisel4ml is available on https://github.com/cs-jsi/chisel4ml.
Ključne besede: neural networks, QKeras, Chisel4ml
Objavljeno v DiRROS: 23.04.2024; Ogledov: 197; Prenosov: 118
.pdf Celotno besedilo (419,83 KB)
Gradivo ima več datotek! Več...

3.
Hardware–software co-design of an audio feature extraction pipeline for machine learning applications
Jure Vreča, Ratko Pilipović, Anton Biasizzo, 2024, izvirni znanstveni članek

Povzetek: Keyword spotting is an important part of modern speech recognition pipelines. Typical contemporary keyword-spotting systems are based on Mel-Frequency Cepstral Coefficient (MFCC) audio features, which are relatively complex to compute. Considering the always-on nature of many keyword-spotting systems, it is prudent to optimize this part of the detection pipeline. We explore the simplifications of the MFCC audio features and derive a simplified version that can be more easily used in embedded applications. Additionally, we implement a hardware generator that generates an appropriate hardware pipeline for the simplified audio feature extraction. Using Chisel4ml framework, we integrate hardware generators into Python-based Keras framework, which facilitates the training process of the machine learning models using our simplified audio features.
Ključne besede: FPGA, MFCC, keyword spotting, chisel
Objavljeno v DiRROS: 25.03.2024; Ogledov: 404; Prenosov: 414
.pdf Celotno besedilo (1,05 MB)
Gradivo ima več datotek! Več...

4.
A configurable mixed-precision convolution processing unit generator in Chisel
Jure Vreča, Anton Biasizzo, 2023, objavljeni znanstveni prispevek na konferenci

Ključne besede: neural networks, quantization, Chisel, FPGA
Objavljeno v DiRROS: 08.06.2023; Ogledov: 470; Prenosov: 297
.pdf Celotno besedilo (332,90 KB)
Gradivo ima več datotek! Več...

5.
On suitability of the customized measuring device for electric motor
Rok Hribar, Gašper Petelin, Margarita Antoniou, Anton Biasizzo, Stane Ciglarič, Gregor Papa, 2022, objavljeni znanstveni prispevek na konferenci

Objavljeno v DiRROS: 13.12.2022; Ogledov: 601; Prenosov: 218
.pdf Celotno besedilo (249,35 KB)

6.
7.
Multi-hop communication in Bluetooth Low Energy ad-hoc wireless sensor network
Branko Skočir, Gregor Papa, Anton Biasizzo, 2018, izvirni znanstveni članek

Objavljeno v DiRROS: 15.03.2019; Ogledov: 2750; Prenosov: 647
.pdf Celotno besedilo (992,95 KB)

Iskanje izvedeno v 0.34 sek.
Na vrh