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Distributed resource management in wireless sensor networks[taliem.ir]

Distributed resource management in wireless sensor networks using reinforcement learning

In wireless sensor networks (WSNs), resourceconstrained nodes are expected to operate in highly dynamic and often unattended environments. Hence, support for intelligent, autonomous, adaptive and distributed resource management is an essential ingredient of a middleware solution for developing scalable and dynamic WSN applications. In this article, we present a resource management framework based on a two-tier reinforcement learning scheme to enable autonomous self-learning and adaptive applications with inherent support for efficient resource management. Our design goal is to build a system with a bottom-up approach where each sensor node is responsible for its resource allocation and task selection. The first learning tier (micro-learning) allows individual sensor nodes to self-schedule their tasks by using only local information, thus enabling a timely adaptation. The second learning tier (macro-learning) governs the micro-learners by tuning their operating parameters so as to guide the system towards a global application-specific optimization goal (e.g., maximizing the network lifetime). The effectiveness of our framework is exemplified by means of a target tracking application built on top of it. Finally, the performance of our scheme is compared against other existing approaches by simulation. We show that our twotier reinforcement learning scheme is significantly more efficient than traditional approaches to resource management while fulfilling the application requirements.
Selected parallel optimization methods for[taliem.ir]

Selected parallel optimization methods for ®nancial management under uncertainty

A review of some of the most important existing parallel solution algorithms for stochastic dynamic problems arising in ®nancial planning is the main focus of this work. Optimization remains the most dicult, time and resource consuming part of the process of decision support for ®nancial planning under uncertainty. However, other parts of a specialized decision support system (DSS) are also brie¯y outlined to provide appropriate background. Finally, ®nancial modeling is but one of the possible application ®elds of stochastic dynamic optimization. Therefore the same fairly general methods described here are also useful in many other contexts. Authors hope that the overview of this application ®eld may be of interest to readers concerned with development of parallel programming paradigms, methodology and tools. Therefore special care was taken to ensure that the presentation is easily understandable without much previous knowledge of theory and methods of operations research. Ó 2000 Published by Elsevier Science B.V. All rights reserved.