steel ewc test package
Project description
Introduction
This project aims to provide a method to replicate our experiment results. We are expected to utilize Elastic Weight Consolidation (EWC) algorithm to improve the performance of multivariate time-series prediction.
Model Choice
This project provides eight algorithm to choose, including MLP / CNN/ GDN / RNN/ GRU/ LSTM/ LSTMVAE / Transformer.
Dataset Structure
- steel
- TEst
- Task1(拉速1.2)
- 板柸1_9后半段数据
- list.txt (names of multiple sensors)
- test.csv (multivariate time series data)
- 板柸1_9后半段数据
- Task2(拉速1)
- 板柸2_4后半段数据
- list.txt
- test.csv
- 板柸2_4后半段数据
- Task3(拉速1.4)
- 板柸3_3后半段数据
- list.txt
- test.csv
- 板柸3_3后半段数据
- Task1(拉速1.2)
- TRain
- Task1(拉速1.2)
- 板柸1_1数据
- list.txt
- train.csv
- 板柸1_2数据
- list.txt
- train.csv
- 板柸1_9数据
- list.txt
- train.csv
- 板柸1_10数据
- list.txt
- train.csv
- 板柸1_11数据
- list.txt
- train.csv
- 板柸1_1数据
- Task2(拉速1.2)
- 板柸2_1数据
- list.txt
- train.csv
- 板柸2_4前半段数据
- list.txt
- train.csv
- 板柸2_1数据
- Task3(拉速1.4)
- 板柸3_1数据
- list.txt
- train.csv
- 板柸3_3前半段数据
- list.txt
- train.csv
- 板柸3_1数据
- Task1(拉速1.2)
- TEst
Experimental Results
When you successfully complete the experiment, you should see the following figures in each task stage:
-
Loss Curve for validation dataset
-
Loss Curve for training dataset
-
Comparison with prediction and observation
-
Scatter plot with Regression Line
-
Residual Distribution
Requirements
- python==3.10.2
- torch==1.12.0
- torch-geometric==2.2.0
- torch-scatter==2.0.9
- torch-sparse==0.6.14
- numpy==1.22.3
- matplotlib==3.5.2
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