Machine Learning Technologies on Energy Economics and Finance

Energy and Sustainable Analytics, Volume 2
Angebot€181,89
inkl. MwSt. • Kein physischer Versand
Sofort per Download lieferbar
Nach dem Kauf direkt als Download verfügbar.

E-Book
PDFBusiness and Management (R0) - 332 Seiten €181,89 Aktuell PDFBusiness and Management (R0) - 332 Seiten €181,89

Benachrichtigung aktivieren

Wir informieren Sie per E-Mail, sobald dieses Produkt wieder verfügbar ist.

Inhaltsangabe

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.

Produktdetails
  • Erscheinungsdatum: 06.08.2025
  • Autor/Autorin: Mohammad Zoynul Abedin
  • Reihe: Business and Management (R0)
  • Format: E-Book
  • Dateiformat: PDF
  • Kopierschutz: Wasserzeichen
  • Dateigröße: 44.1 MB
  • Verlag: SPRINGER
  • Sprache: Englisch
  • Umfang: 332 Seiten
  • ISBN: 9783031950995
  • Lieferung: Sofort per Download
  • Hinweis: Sofort per Download lieferbar. Kein physischer Versand.
  • Kompatibilität: Lesbar auf Geräten und Apps mit PDF-Unterstützung.
Herstellerinformationen
Springer Nature Customer Service Center GmbH

Email: ProductSafety@springernature.com