Reprint

Sensor Data Analytics

Challenges and Methods for Data-Intensive Applications

Edited by
August 2022
182 pages
  • ISBN978-3-0365-4851-7 (Hardback)
  • ISBN978-3-0365-4852-4 (PDF)

This book is a reprint of the Special Issue Sensor Data Analytics: Challenges and Methods for Data-Intensive Applications that was published in

Chemistry & Materials Science
Computer Science & Mathematics
Physical Sciences
Summary

At present, data-intensive applications are one of the most prominent lines of work in data science. Most of these projects occur in the context of sensor data analytics, in which different devices, equipment, and software applications provide dynamic datasets to be processed and analyzed with machine learning algorithms. Application domains span multiple areas, including smart cities and intelligent transport, economy and finance, energy management, biomedical applications, geographical systems, agriculture, and livestock or cybersecurity.

This volume is centered on emerging challenges, methods, algorithms, and tools that address sensor data analytics, with a special emphasis on approaches that leverage information theory to accomplish projected goals. It includes practical applications following interdisciplinary approaches using real-world data. Articles are focused on new methods applied to a wide range of applications, from electricity markets to healthcare, among others. Practical cases with real or simulated data demonstrate the usefulness of these methods. Outcomes stemming from these works constitute essential inputs for data-driven decision making.

Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
clustering; data stream; machine learning; smart metering; time series; assistive technology; elderly people; wearable devices; smart footwear; deep learning; artificial neural networks; driving risk assessment; usage-based insurance; driving risk score; telematics; near-miss event; driving behavior; panel data analysis; count data model; econometrics; generalized linear model; absolute orientation; inertial sensors; orientation and mobility; visually impaired rehabilitation; 3D angle of arrival (AOA) localization; Cramér–Rao lower bound (CRLB); optimal sensor placement; covariance matrix; fisher information matrix (FIM); classification; machine learning; Support Vector Machines; sensor networks; distributed algorithms; human activity recognition; information gain; attention mechanism; Attention-RNN; electronic fetal monitoring; fetal heart rate; sensors; acidemia; machine learning; random forest; clinical utility curve; animal behaviour; pattern recognition; anomaly detection; clustering; spectral analysis; accelerometer sensor; GPS sensor; n/a