Castiglione, P. (2012). Cooperative and energy-neutral protocols for energy-limited wireless sensor networks [Dissertation, Technische Universität Wien]. reposiTUm. http://hdl.handle.net/20.500.12708/161108
E389 - Institut für Nachrichtentechnik und Hochfrequenztechnik
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Date (published):
2012
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Number of Pages:
134
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Keywords:
Sensor Netze; kooperative Nachrichtensysteme
de
Abstract:
A major challenge in the development of wireless sensor networks is posed by the difficulty in energy provisioning. There exist two options for powering wireless sensors: environmentally harvested energy or stored energy (batteries). According to this dichotomy, the scope of this thesis is twofold: the first part addresses the design of energy-neutral protocols that optimally manage the consumption of harvested energy in a single sensor; the second part deals with cooperative protocols that optimize the use of the finite amount of energy stored in the devices. The first addressed problem is that of allocating energy to compression and transmission. We find that the policies that stabilize the data queue under a given distortion constraint with arbitrarily large energy and data storage perform a separate adaptation of source and channel coding. Instead, for limited energy and data storage, we find that distortion-optimal policies perform joint adaptation. In some applications, conventional batteries are mandatory and energy-efficiency is the essential goal for the communication protocol. In the second part of the thesis, we design an efficient partner selection protocol for indoor-to-outdoor cooperative relaying access. Analyzing data from channel sounding measurements at 2.4GHz, we characterize the channel parameters with a novel stochastic model. From this model, Bayesian estimates of the partner selection metric are derived. Our low-complexity protocol requires infrequent updates of the model carried on by a subset of nodes only. The proposed methodology is compatible with the IEEE 802.15.4 standard and doubles the network lifetime compared to state-of-art algorithms.