Amanote Research
Register
Sign In
The EXTRACTION OF KNOWLEDGE RULES FROM ARTIFICIAL NEURAL NETWORKS APPLIED IN THE ELECTRIC LOAD DEMAND FORECAST PROBLEM - How Artificial Neural Networks Retain Knowledge and Make Reliable Forecasts
doi 10.5220/0002198201950200
Full Text
Open PDF
Abstract
Available in
full text
Date
January 1, 2009
Authors
Unknown
Publisher
SciTePress - Science and and Technology Publications
Related search
Extracting Refined Rules From Knowledge-Based Neural Networks
Machine Learning
Artificial Intelligence
Software
Artificial Neural Networks
Evolving Artificial Neural Networks
Interpretation of Artificial Neural Networks by Means of Fuzzy Rules
IEEE Transactions on Neural Networks
Forecasting Oxygen Demand in Treatment Plant Using Artificial Neural Networks
International Journal of Advanced Engineering Research and Science
Artificial Neural Networks for Prediction
Modelling of Electricity Demand in Residential Buildings Using Artificial Neural Networks
E3S Web of Conferences
Earth
Energy
Planetary Sciences
Environmental Science
Automated Brain Extraction of Multisequence MRI Using Artificial Neural Networks
Human Brain Mapping
Nuclear Medicine
Radiology
Ultrasound Technology
Anatomy
Radiological
Neurology
Imaging
Pathological Worrying and Artificial Neural Networks
International Journal of Advanced Computer Science and Applications
Computer Science