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| Autore: |
Abedin Mohammad Zoynul
|
| Titolo: |
Machine Learning Technologies on Energy Economics and Finance : Energy and Sustainable Analytics, Volume 2 / / edited by Mohammad Zoynul Abedin, Wang Yong
|
| Pubblicazione: | Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2025 |
| Edizione: | 1st ed. 2025. |
| Descrizione fisica: | 1 online resource (435 pages) |
| Disciplina: | 658.5 |
| Soggetto topico: | Production management |
| Business information services | |
| Financial engineering | |
| Machine learning | |
| Energy policy | |
| Sustainability | |
| Operations Management | |
| IT in Business | |
| Financial Technology and Innovation | |
| Machine Learning | |
| Energy Policy, Economics and Management | |
| Altri autori: |
YongWang
|
| Nota di contenuto: | Green Driving: Harnessing Machine Learning to Predict Vehicle Carbon Footprints and Interpreting Results with Explainable AI -- A Comparative Evaluation of Deep Neural Networks for Electricity Price Forecasting -- Energy Forecasting Utilizing CNN-LSTM Attention Mechanism: Empirical Evidence from the Spanish Electricity Market -- Feature Selection and Explainable AI For Transparent Windmill Power Forecasting -- Improving the Analysis of CO2 Emissions with a Filter and Imputation-Based Processing Method -- A Study on the Efficacy of Machine Learning and Ensemble Learning in Wind Power Generation Analysis -- Predicting Solar Radiation: A Fusion Approach with CatBoost and Random Forest Ensemble Enhanced by Explainable AI -- Modeling Nuclear Fusion Reaction Occurrence with Advanced Deep Learning Techniques: Insights from LIME and SMOTE -- A Critical Study on LSTM AND TRANSFORMER Models for Financial Analysis and Forecasting -- Exploring Feature Selection Techniques in Predicting Indian Household Electricity Consumption -- Constructing Women Empowerment Indices-based on Kernel PCA and Evaluating Its Determinants: Evidence from BDHS -- An Ensemble Machine Learning Approach to Predicting CO2 Emission Rates: Evidence from Denmark's Energy Data Service -- Smart Grid Stability Analysis with Interpretable Machine Learning and Deep Learning Models -- Weather as a Critical Component in Investment Strategies: Insights for Stakeholders. |
| Sommario/riassunto: | This book explores the latest innovations in energy economics and finance, with a particular focus on the role of machine learning algorithms in advancing the energy sector. It examines key factors shaping this field, including market structures, regulatory frameworks, environmental impacts, and the dynamics of the global energy market. It discusses the critical application of machine learning (ML) in energy financing, introducing predictive tools for forecasting energy prices across various sectors—such as crude oil, electricity, fuelwood, solar, and natural gas. It also addresses how ML can predict investor behavior and assess the efficiency of energy markets, with a focus on both the opportunities and challenges in renewable energy and energy finance. This book serves as a comprehensive guide for academics, practitioners, financial managers, stakeholders, government officials, and policymakers who seek strategies to enhance energy systems, reduce costs and uncertainties, and optimize revenue for economic growth. This is the second volume of a two-volume set. |
| Titolo autorizzato: | Machine Learning Technologies on Energy Economics and Finance ![]() |
| ISBN: | 3-031-95099-2 |
| Formato: | Materiale a stampa |
| Livello bibliografico | Monografia |
| Lingua di pubblicazione: | Inglese |
| Record Nr.: | 9911020429003321 |
| Lo trovi qui: | Univ. Federico II |
| Opac: | Controlla la disponibilità qui |