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Experimental data for the paper "knowledge-guided learning of temporal dynamics and its application to gas turbines"

Abstract: These are experimental data for the paper:

Pawel Bielski, Aleksandr Eismont, Jakob Bach, Florian Leiser, Dustin Kottonau, and Klemens Böhm. 2024. Knowledge-Guided Learning of Temporal Dynamics and its Application to Gas Turbines, 15th ACM International Conference on Future Energy Systems (e-Energy '24), Singapore

The data consist of: 1. experimental time series data collected from a micro gas turbine 2. results from the experiments and the corresponding code to create plots used in the paper

The corresponding GitHub repository: https://github.com/Energy-Theory-Guided-Data-Science/Gas-Turbine TechnicalRemarks: # Micro Gas Turbine Data

Overview

These experimental data support the paper "Knowledge-Guided Learning of Temporal Dynamics and its Application to Gas Turbines", presented at 15th ACM International Conference on Future Energy Systems (e-Energy '24), Singapore. The data was collected from a commercial micro gas turbine designed for residential use, generating approximately 3 kW of electrical power. Its purpose was to model the turbine's behavior over time using machine learning techniques.

Folder Structure

  • data: Contains 8 experimental time series data in CSV format, collected from the micro gas turbine.
  • plots: Includes results from experiments and the code used to generate plots from the paper.
  • plots/create_plots.ipynb: A Jupyter notebook containing code to create the plots.

Time Series Data

Each time series represents a separate experiment where the input control voltage was varied over time, and the resulting output electrical power of the micro gas turbine was measured. The data has a resolution of approximately 1 second and is structured in a CSV file with the following columns: - time: Time in seconds, denoted as $t$. - input_voltage: Input control voltage in volts, representing the control signal $x_t$. - el_power: electrical power in watts, representing the output signal $y_t$.

Prediction Task

The data was used for a time-series prediction task, aiming to predict el_power based on input_voltage. In the paper, the objective was to forecast the output $y_t$ given the control inputs $x_t, x_{t-1}, \dots, x_{t-N+1}$.

Additional Information

Requirements for running create_plots.ipynb: - Python 3.8.17 - Jupyter Notebook 6.5.4 - Pandas 1.2.2 - Matplotlib 3.5.2 - Seaborn 0.12.2

When using this dataset, please cite the following paper: Pawel Bielski, Aleksandr Eismont, Jakob Bach, Florian Leiser, Dustin Kottonau, and Klemens Böhm. 2024. Knowledge-Guided Learning of Temporal Dynamics and its Application to Gas Turbines, 15th ACM International Conference on Future Energy Systems (e-Energy '24), Singapore.

For more details and the code used in the experiments, visit the GitHub repository.

Cite this as

Bielski, Pawel, Kottonau, Dustin (2024). Dataset: Experimental data for the paper "knowledge-guided learning of temporal dynamics and its application to gas turbines". https://doi.org/10.35097/sLJiahifxvfDKMEc

DOI retrieved: 2024

Additional Info

Field Value
Imported on November 28, 2024
Last update November 28, 2024
License CC BY 4.0 Attribution
Source https://doi.org/10.35097/sLJiahifxvfDKMEc
Author Bielski, Pawel
Given Name Pawel
Family Name Bielski
More Authors
Kottonau, Dustin
Source Creation 2024
Publishers
Karlsruhe Institute of Technology
Production Year 2024
Publication Year 2024
Subject Areas
Name: Other
Additional: Allgemeines, Hochschulwesen, Wissenschaft und Forschung