list of papers, code, and other resources
-
Updated
Sep 16, 2021
list of papers, code, and other resources
What is the SOTA technique for forecasting day-ahead and intraday market prices for electricity in Germany?
Paper in Science and Technology for the Built Environment about the GEPIII Competition
In this section, predicting the energy efficiency of buildings with machine learning algorithms.
Code for Kazeev, N., Al-Maeeni, A.R., Romanov, I. et al. Sparse representation for machine learning the properties of defects in 2D materials. npj Comput Mater 9, 113 (2023).
A project focused on forecasting solar photovoltaic (PV) power generation using regional microclimate data. Implements machine learning models like CatBoost, LightGBM, and XGBoost for predictions, leveraging environmental features like temperature, humidity, wind speed, and solar radiation.
My solution to solve the second IEEE-CIS technical challenge
Prediction of turbine energy yield (TEY) using Neural Networks
Machine Learning Project on Electricity Consumption For Household Appliances. Random Forest gave us the best results. Model achieved 97% accuracy to optimize appliance‑level energy usage and reduce costs.
A Flask-based web application to forecast wind turbine renewable energy generation using time-series feature engineering and a pre-trained XGBoost model. Users can input custom date ranges and visualize future energy predictions through dynamic Matplotlib plots.
Predicting the Energy consumed by appliances using Machine Learning algorithms built from scratch
Experimental data used to create regression models of appliances energy use in a low energy building.
Time Series Forcasting and Clustering for Energy Management - Machine Learning & Imputation
ConfRank+: Extending Conformer Ranking to Charged Molecules
Pytorch implementation of Alchemical Kernels from Phys. Chem. Chem. Phys., 2018,20, 29661-29668
SynapticGrid is an AI-driven system designed to make cities more efficient, sustainable, and livable by optimizing smart energy grids, waste management, and traffic flow through IoT sensors, real-time data processing, and reinforcement learning algorithms. The modular platform continuously learns and improves, helping urban environments
⚡ AI-powered energy consumption prediction app. Flutter + FastAPI + ML. Reduce bills & carbon footprint . Smart energy optimization! 🌱
This project is to develop a robust model capable of accurately predicting energy consumption in buildings. This endeavor involves harnessing historical energy usage data in conjunction with diverse weather and environmental variables to construct an effective predictive model.
Predicting electricity demand using LSTM and Random Forest models. A Comparative study with load & weather data
This project implements an Artificial Neural Network (ANN) to predict the net hourly electrical energy output (PE) of a combined cycle power plant.
Add a description, image, and links to the energy-prediction topic page so that developers can more easily learn about it.
To associate your repository with the energy-prediction topic, visit your repo's landing page and select "manage topics."