使用bp神经网络预测电力负荷,使用小型数据集,通过一个简单的例子。Using BPNN to predict power load, using small data set, a simple example.
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Updated
May 4, 2020 - MATLAB
使用bp神经网络预测电力负荷,使用小型数据集,通过一个简单的例子。Using BPNN to predict power load, using small data set, a simple example.
Project to explore & optimize dispatch of a commercial-scale battery storage system
The work develops a multi-step time series load forecasting model that predicts daily power consumption for the upcoming week based on historic daily data of consumption at a university campus.
Load Forecasting with MATLAB (ANN)
使用灰色系统理论做负荷预测。Using Grey System Theory to Make Load Forecasting
A Moroccan Buildings’ Electricity Consumption Dataset. MORED is made available by TICLab of the International University of Rabat (UIR), and the data collection was carried out as part of PVBuild research project, coordinated by Prof. Mounir Ghogho and funded by the United States Agency for International Development (USAID).
load point forecast
Enhanced spatio-temporal electric load forecasts with less data using active deep learning
Contains the code for the paper "Multi-Horizon Short-Term Load Forecasting Using Hybrid of LSTM and Modified Split Convolution"
T-DPnet-Transformer-based-deep-Probabilistic-network-for-load-forecasting
Source code for our ICCEP paper "Secure short-term load forecasting for smart grids with transformer-based federated learning".
Research done by me and @MennaNawar on load forecasting using the ASHRAE building dataset provided by kaggle.
This repo contains data and code for Task-Aware Machine Unlearning with Application to Load Forecasting.
Source code for our preprint paper "Advancing Accuracy in Load Forecasting using Mixture-ofExperts and Federated Learning".
This is the official repo for the paper E2E-AT: A Unified Framework for Tackling Uncertainty in Task-aware End-to-end Learning, to be appeared in AAAI-24.
A black box data driven model that considers the characterization and prediction of heat load in buildings connected to District Heating by using smart heat meters
In this project, we've tried applying various DNNs to the problem of non-intrusive load monitoring (NILM) and compared their results for various appliances using the REDD dataset. We took a sliding window approach in hopes that we'll be able to achieve real time disaggregation with further tuning and testing. We compare the disaggregated energy …
Implementation of two different models (TF2/Keras) from literature and a custom model for day-ahead load forecasting (short term load forecasting) on two different datasets.
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