Affiliation:
1. Department of Engineering, LUM-Libera Università Mediterranea “Giuseppe Degennaro”, S.S. 100-Km.18, Parco il Baricentro, 70010 Bari, Italy
Abstract
In the proposed paper, an artificial neural network (ANN) algorithm is applied to predict the electronic circuit outputs of voltage signals in Industry 4.0/5.0 scenarios. This approach is suitable to predict possible uncorrected behavior of control circuits affected by unknown noises, and to reproduce a testbed method simulating the noise effect influencing the amplification of an input sinusoidal voltage signal, which is a basic and fundamental signal for controlled manufacturing systems. The performed simulations take into account different noise signals changing their time-domain trend and frequency behavior to prove the possibility of predicting voltage outputs when complex signals are considered at the control circuit input, including additive disturbs and noises. The results highlight that it is possible to construct a good ANN training model by processing only the registered voltage output signals without considering the noise profile (which is typically unknown). The proposed model behaves as an electronic black box for Industry 5.0 manufacturing processes automating circuit and machine tuning procedures. By analyzing state-of-the-art ANNs, the study offers an innovative ANN-based versatile solution that is able to process various noise profiles without requiring prior knowledge of the noise characteristics.
Reference47 articles.
1. Multi-Step Ahead Voltage Prediction and Voltage Fault Diagnosis Based on Gated Recurrent Unit Neural Network and Incremental Training;Zhao;Energy,2023
2. Prediction of Voltage Distribution Using Deep Learning and Identified Key Smart Meter Locations;Mokhtar;Energy AI,2021
3. Alsouda, Y., Pllana, S., and Kurti, A. (2018). A Machine Learning Driven IoT Solution for Noise Classification in Smart Cities. arXiv.
4. Alsouda, Y., Pllana, S., and Kurti, A. (2019, January 5–7). IoT-Based Urban Noise Identification Using Machine Learning: Performance of SVM, KNN, Bagging, and Random Forest. Proceedings of the International Conference on Omni-Layer Intelligent Systems, Crete, Greece.
5. Machine Learning and Internet of Things in Industry 4.0: A Review;Rahman;Measur. Sens.,2023
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