sustainability indicator
Towards Energy-Aware Federated Traffic Prediction for Cellular Networks
Perifanis, Vasileios, Pavlidis, Nikolaos, Yilmaz, Selim F., Wilhelmi, Francesc, Guerra, Elia, Miozzo, Marco, Efraimidis, Pavlos S., Dini, Paolo, Koutsiamanis, Remous-Aris
Cellular traffic prediction is a crucial activity for optimizing networks in fifth-generation (5G) networks and beyond, as accurate forecasting is essential for intelligent network design, resource allocation and anomaly mitigation. Although machine learning (ML) is a promising approach to effectively predict network traffic, the centralization of massive data in a single data center raises issues regarding confidentiality, privacy and data transfer demands. To address these challenges, federated learning (FL) emerges as an appealing ML training framework which offers high accurate predictions through parallel distributed computations. However, the environmental impact of these methods is often overlooked, which calls into question their sustainability. In this paper, we address the trade-off between accuracy and energy consumption in FL by proposing a novel sustainability indicator that allows assessing the feasibility of ML models. Then, we comprehensively evaluate state-of-the-art deep learning (DL) architectures in a federated scenario using real-world measurements from base station (BS) sites in the area of Barcelona, Spain. Our findings indicate that larger ML models achieve marginally improved performance but have a significant environmental impact in terms of carbon footprint, which make them impractical for real-world applications.
- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.24)
- Europe > Greece (0.14)
- Europe > United Kingdom > England > Greater London > London (0.04)
- (4 more...)
- Telecommunications (1.00)
- Information Technology (1.00)
- Law > Environmental Law (0.55)
Analysis of Biomass Sustainability Indicators from a Machine Learning Perspective
Ferdous, Syeda Nyma, Li, Xin, Sahoo, Kamalakanta, Bergman, Richard
Plant biomass estimation is critical due to the variability of different environmental factors and crop management practices associated with it. The assessment is largely impacted by the accurate prediction of different environmental sustainability indicators. A robust model to predict sustainability indicators is a must for the biomass community. This study proposes a robust model for biomass sustainability prediction by analyzing sustainability indicators using machine learning models. The prospect of ensemble learning was also investigated to analyze the regression problem. All experiments were carried out on a crop residue data from the Ohio state. Ten machine learning models, namely, linear regression, ridge regression, multilayer perceptron, k-nearest neighbors, support vector machine, decision tree, gradient boosting, random forest, stacking and voting, were analyzed to estimate three biomass sustainability indicators, namely soil erosion factor, soil conditioning index, and organic matter factor. The performance of the model was assessed using cross-correlation (R2), root mean squared error and mean absolute error metrics. The results showed that Random Forest was the best performing model to assess sustainability indicators. The analyzed model can now serve as a guide for assessing sustainability indicators in real time.
- North America > United States > Ohio (0.25)
- North America > Canada > Ontario > Toronto (0.14)
- North America > United States > Wisconsin > Dane County > Madison (0.04)
- (2 more...)
- Government > Regional Government > North America Government > United States Government (1.00)
- Food & Agriculture > Agriculture (1.00)
- Energy (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Regression (0.92)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Perceptrons (0.69)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Support Vector Machines (0.69)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Nearest Neighbor Methods (0.56)