Thermoelectric Generator Power Prediction Based on Artificial Neural Network

Author(s):  
Ivaylo Belovski ◽  
Plamena Yovcheva ◽  
Stanimir Surchev ◽  
Anatoliy Aleksandrov
Author(s):  
Ravinesh C. Deo ◽  
Sujan Ghimire ◽  
Nathan J. Downs ◽  
Nawin Raj

The precise prediction of windspeed is essential in order to improve and optimize wind power prediction. However, due to the sporadic and inherent complexity of weather parameters, the prediction of windspeed data using different patterns is difficult. Machine learning (ML) is a powerful tool to deal with uncertainty and has been widely discussed and applied in renewable energy forecasting. In this chapter, the authors present and compare an artificial neural network (ANN) and genetic programming (GP) model as a tool to predict windspeed of 15 locations in Queensland, Australia. After performing feature selection using neighborhood component analysis (NCA) from 11 different metrological parameters, seven of the most important predictor variables were chosen for 85 Queensland locations, 60 of which were used for training the model, 10 locations for model validation, and 15 locations for the model testing. For all 15 target sites, the testing performance of ANN was significantly superior to the GP model.


2021 ◽  
Vol 9 ◽  
Author(s):  
Taghrid Mazloum ◽  
Shanshan Wang ◽  
Maryem Hamdi ◽  
Biruk Ashenafi Mulugeta ◽  
Joe Wiart

Paving the path toward the fifth generation (5G) of wireless networks with a huge increase in the number of user equipment has strengthened public concerns on human exposure to radio-frequency electromagnetic fields (RF EMFs). This requires an assessment and monitoring of RF EMF exposure, in an almost continuous way. Particular interest goes to the uplink (UL) exposure, assessed through the transmission power of the mobile phone, due to its close proximity to the human body. However, the UL transmit (TX) power is not provided by the off-the-shelf modem and RF devices. In this context, we first conduct measurement campaigns in a multi-floor indoor environment using a drive test solution to record both downlink (DL) and UL connection parameters for Long Term Evolution (LTE) networks. Several usage services (including WhatsApp voice calls, WhatsApp video calls, and file uploading) are investigated in the measurement campaigns. Then, we propose an artificial neural network (ANN) model to estimate the UL TX power, by exploiting easily available parameters such as the DL connection indicators and the information related to an indoor environment. With those easy-accessed input features, the proposed ANN model is able to obtain an accurate estimation of UL TX power with a mean absolute error (MAE) of 1.487 dB.


2022 ◽  
Vol 305 ◽  
pp. 117800
Author(s):  
Yuxiao Zhu ◽  
Daniel W. Newbrook ◽  
Peng Dai ◽  
C.H. Kees de Groot ◽  
Ruomeng Huang

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