TSxtend: A Tool for Batch Analysis of Temporal Sensor Data
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
Time series Pre-processing Prediction Machine learning Deep learning
Fecha
2023-02-04Referencia bibliográfica
Morcillo-Jimenez, R.; Gutiérrez-Batista, K.; Gómez-Romero, J. TSxtend: A Tool for Batch Analysis of Temporal Sensor Data. Energies 2023, 16, 1581. [https://doi.org/10.3390/en16041581]
Patrocinador
FEDER/Junta de Andalucia A-TIC-244-UGR20; Ministry of Science and Innovation, Spain (MICINN); Spanish Government PID2021-125537NA-I00; NextGenerationEU funds MIA.2021.M04.0008Resumen
Pre-processing and analysis of sensor data present several challenges due to their increasingly
complex structure and lack of consistency. In this paper, we present TSxtend, a software tool
that allows non-programmers to transform, clean, and analyze temporal sensor data by defining and
executing process workflows in a declarative language. TSxtend integrates several existing techniques
for temporal data partitioning, cleaning, and imputation, along with state-of-the-art machine learning
algorithms for prediction and tools for experiment definition and tracking. Moreover, the modular
architecture of the tool facilitates the incorporation of additional methods. The examples presented
in this paper using the ASHRAE Great Energy Predictor dataset show that TSxtend is particularly
effective to analyze energy data.