Anomaly Detection in Time Series Data using Autoencoders approach.
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Updated
Apr 20, 2023
Anomaly Detection in Time Series Data using Autoencoders approach.
Remaining Useful Life Prediction
An encoder-transformer architecture-based framework for multi-variate time series prediction with a prognostics use case.
This project develops predictive maintenance models for industrial robots in nuclear fuel replacement, leveraging data analytics, machine learning, and decision-making frameworks to optimize robot fleet management and extend operational uptime. Key phases include data exploration, feature engineering, RUL prediction, and maintenance decision-making
Remaining useful life prediction. Degradation path approximation (DPA) is a highly easy-to-understand and brand-new solution way for data-driven RUL prediction. Many research directions on DPA can be further studied.
predictive-maintenance-fault-classification(CWRU data)-and-remaining-useful-life(NASA’s Turbofan Engine )
Deep learning of lithium-ion battery SOH using the DeTransformer model learns the aging characteristics of the battery and then makes predictions about the battery SOH in order to monitor the health of batteries in electric vehicles.
Multi-Objective Optimization of ELM for RUL Prediction
A collection of datasets for RUL estimation as Lightning Data Modules.
The source code of paper: Trend attention fully convolutional network for remaining useful life estimation in the turbofan engine PHM of CMAPSS dataset. Signal selection, Attention mechanism, and Interpretability of deep learning are explored.
Feature clustering and XIA for RUL estimation
Bearing remaining useful life prediction using support vector machine and hybrid degradation tracking model - Implementation of Research Paper : https://doi.org/10.1016/j.isatra.2019.08.058
An artificial neural network (ANN) based method is developed for achieving more accurate remaining useful life prediction of Lithium Ion batteries subject to condition monitoring. The ANN model takes the capacity attribute as a target against multiple measurement values as the inputs, and the life expectancy as the output.
ML Approaches for RUL Prediction, Anomaly Detection, Survival Analysis and Failure Classification
Evolutionary Neural Architecture Search on Transformers for RUL Prediction
Remaining Useful Life (RUL) prediction for Turbofan Engines
CeRULEo: Comprehensive utilitiEs for Remaining Useful Life Estimation methOds
The project focused on "Battery Remaining Useful Life (RUL) Prediction using a Data-Driven Approach with a Hybrid Deep Model combining Convolutional Neural Networks (CNN) and Long-Short Term Memory (LSTM)." This repository aims to revolutionize battery health estimation by leveraging the power of deep learning to predict the remaining useful life
A Framework for Remaining Useful Life Prediction Based on Self-Attention and Physics-Informed Neural Networks
N-CMAPSS data preparation for Machine Learning and Deep Learning models. (Python source code for new CMAPSS dataset)
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