Willkommen, schön sind Sie da!
Logo Ex Libris

Teaching Networks How to Learn

  • Kartonierter Einband
  • 236 Seiten
Routing and clustering for wireless sensor networks (WSN) play a significant role for reliable and energy efficient data dissemina... Weiterlesen
20%
71.00 CHF 56.80
Auslieferung erfolgt in der Regel innert 3 bis 4 Werktagen.

Beschreibung

Routing and clustering for wireless sensor networks (WSN) play a significant role for reliable and energy efficient data dissemination. Although these research areas attract a lot of interest lately, there is still no holistic approach that is able to meet the requirements and challenges of many different applications and network scenarios, like various network sizes and topologies, multiple mobile data sinks, or node failures. The main goal of this work is to demonstrate that machine learning is a practical approach to a range of complex distributed problems in WSNs. Showing this will open up new paths for development at all levels of the communication stack. To achieve this goal we present a robust, energy-efficient, and flexible data dissemination framework consisting of the routing protocol FROMS and the clustering protocol Clique. Both are based on reinforcement learning, and exhibit vital properties such as robustness against mobility, node and link failures, fast recovery after failures, very low control overhead and a wide variety of supported network scenarios and applications. Both protocols are fully distributed and have minimal communication overhead.

Autorentext

holds a Master degree from the Freie Universität Berlin, Germany and a PhD degree from the University in Lugano, Switzerland, where she is currently a postdoctoral researcher. Her research is dedicated to all aspects of sensor networks, with a special focus on improving their performance and usability through machine learning techniques.

Produktinformationen

Titel: Teaching Networks How to Learn
Untertitel: Data Dissemination in Wireless Sensor Networks with Reinforcement Learning
Autor:
EAN: 9783838109367
ISBN: 978-3-8381-0936-7
Format: Kartonierter Einband
Herausgeber: Südwestdeutscher Verlag für Hochschulschriften AG
Genre: IT & Informatik
Anzahl Seiten: 236
Gewicht: 368g
Größe: H220mm x B150mm x T14mm
Jahr: 2015