Catálogo de publicaciones - libros
Mobile Phone Programming and its Application to Wireless Networks: and its Application to Wireless Networking
Frank H. P. Fitzek ; Frank Reichert (eds.)
Resumen/Descripción – provisto por la editorial
No disponible.
Palabras clave – provistas por la editorial
No disponibles.
Disponibilidad
Institución detectada | Año de publicación | Navegá | Descargá | Solicitá |
---|---|---|---|---|
No detectada | 2007 | SpringerLink |
Información
Tipo de recurso:
libros
ISBN impreso
978-1-4020-5968-1
ISBN electrónico
978-1-4020-5969-8
Editor responsable
Springer Nature
País de edición
Reino Unido
Fecha de publicación
2007
Información sobre derechos de publicación
© Springer 2007
Cobertura temática
Tabla de contenidos
Sensor Networks for Distributed Computing
Stephan Rein; Clemens Gühmann; Frank H. P. Fitzek
Summary. This chapter describes a sensor network for signal processing and distributed computing. In such a network, the sensors do not necessarily transfer the collected data to the user right away but cooperate to inspect the data in a shorter time for the desired information conveying the result to the user. As an example, the computation of a system of linear equations is given performed on the newly introduced . The hardware design and the developed software are made freely available.
Part VII - Sensor Networks | Pp. 397-410
Parking Assistant Application
Janne Dahl Rasmussen; Peter Østergaard; Jeppe Jensen; Anders Grauballe; Gian Paolo Perrucci; Ben Krøyer; Frank H. P. Fitzek
Summary. This chapter describes the .rst practical example for the wireless sensors described before. The idea is to equip a car with distance measurement sensors. The result of the distance measurements are displayed on mobile phone. The presented application is realized in JAVA and Python for S60.
Part VII - Sensor Networks | Pp. 411-417
Energy Efficiency of Video Decoder Implementations
Olli Silvén; Tero Rintaluoma
Summary. High-end mobile communication devices integrate video cameras, color displays, high-speed data modems, net browsers, media players, and phones into small battery-powered packages. The physical size limits the heat dissipation, while the battery capacity needs to be used conservatively to provide for satisfactory untethered active use time. Together with the required versatile capabilities of the devices, the physical size and battery capacity are essential constraints that must be taken into account from hardware to application software design. In video decoding additional constraints come from the need to support multiple digital video coding standards, and the platform-oriented design regimes of the device manufacturers. Along these lines, we consider the implementations of video capabilities for mobile devices in a top-down manner starting from typical applications, progressing to energy efficiency analysis via device architectures to codec implementations, and software platforms.
Part VIII - Power Consumption in Mobile Devices | Pp. 421-439
External Energy Consumption Measurements on Mobile Phones
Frank H. P. Fitzek
Summary. This chapter shows how to perform energy consumption measurements on mobile phones. We refer to this method as measurement approach as we are interested only in the overall consumption of the mobile phone. With this approach it is not possible to give a detailed description of the energy consumption per entity such as display, memory, or others, but will be explained in the following chapter. On the other side this approach is platform-independent and can therefore be used for all battery-driven devices.
Part VIII - Power Consumption in Mobile Devices | Pp. 441-447
Optimizing Mobile Software with Built-in Power Profiling
Gerard Bosch Creus; Mika Kuulusa
is an important application category in cyber-physical systems, and is a good canonical example of this application class. Such applications are interactive, dynamic, stream-based, computationally demanding, and needing real-time or near real-time guarantees. A control loop characterizes the behavior of this application class. ASAP is a scalable distributed architecture for a multi-modal sensor network that caters to the needs of this application class. Features of this architecture include (a) generation of cues that allow the infrastructure to pay to data streams of interest; (b) abstraction that allows easy integration of multi-modal sensing capabilities; and (c) dynamic redirection of sensor sources to distributed resources to deal with sudden burstiness in the application. In both empirical and emulated experiments, ASAP shows that it scales up to a thousand of sensor nodes (comprised of high bandwidth cameras and low bandwidth RFID readers), significantly mitigates infrastructure and cognitive overload, and reduces and due to its ability to integrate multi-modal sensing.
Part VIII - Power Consumption in Mobile Devices | Pp. 449-462