Amanote Research
Register
Sign In
Discover open access scientific publications
Search, annotate, share and cite publications
Publications by Abdul Salam Shah
Statistical Features Based Approach (SFBA) for Hourly Energy Consumption Prediction Using Neural Network
International Journal of Information Technology and Computer Science
Related publications
Prediction of Hourly Heating Energy Use for Hvac Using Feedforward Neural Networks
Estimating Missing Hourly Climatic Data Using Artificial Neural Network for Energy Balance Based ET Mapping Applications
Meteorological Applications
Atmospheric Science
Artificial Neural Network-Based Residential Energy Consumption Prediction Models Considering Residential Building Information and User Features in South Korea
Sustainability
Development
Management
Monitoring
Environmental Science
Renewable Energy
Energy Engineering
Law
Sustainability
Planning
Policy
Power Technology
the Environment
Geography
Neural Network Ensembles Based Approach for Mineral Prospectivity Prediction
Deep Belief Network Based Hybrid Model for Building Energy Consumption Prediction
Energies
Control
Electronic Engineering
Energy Engineering
Renewable Energy
Energy
Fuel Technology
Sustainability
Optimization
Electrical
Power Technology
the Environment
Prediction of Traffic Counts Using Statistical and Neural Network Models
Geomatica
Development
Earth-Surface Processes
Planning
Geography
Neural Network Approach for Availability Indicator Prediction
Periodica Polytechnica: Civil Engineering
Civil
Geotechnical Engineering
Engineering Geology
Structural Engineering
A New Approach for Chaotic Time Series Prediction Using Recurrent Neural Network
Mathematical Problems in Engineering
Mathematics
Engineering
Energy Consumption Prediction Using People Dynamics Derived From Cellular Network Data
EPJ Data Science
Modeling
Computer Science Applications
Computational Mathematics
Simulation