94 research outputs found

    Fast-Convergent Learning-aided Control in Energy Harvesting Networks

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    In this paper, we present a novel learning-aided energy management scheme (LEM\mathtt{LEM}) for multihop energy harvesting networks. Different from prior works on this problem, our algorithm explicitly incorporates information learning into system control via a step called \emph{perturbed dual learning}. LEM\mathtt{LEM} does not require any statistical information of the system dynamics for implementation, and efficiently resolves the challenging energy outage problem. We show that LEM\mathtt{LEM} achieves the near-optimal [O(ϵ),O(log(1/ϵ)2)][O(\epsilon), O(\log(1/\epsilon)^2)] utility-delay tradeoff with an O(1/ϵ1c/2)O(1/\epsilon^{1-c/2}) energy buffers (c(0,1)c\in(0,1)). More interestingly, LEM\mathtt{LEM} possesses a \emph{convergence time} of O(1/ϵ1c/2+1/ϵc)O(1/\epsilon^{1-c/2} +1/\epsilon^c), which is much faster than the Θ(1/ϵ)\Theta(1/\epsilon) time of pure queue-based techniques or the Θ(1/ϵ2)\Theta(1/\epsilon^2) time of approaches that rely purely on learning the system statistics. This fast convergence property makes LEM\mathtt{LEM} more adaptive and efficient in resource allocation in dynamic environments. The design and analysis of LEM\mathtt{LEM} demonstrate how system control algorithms can be augmented by learning and what the benefits are. The methodology and algorithm can also be applied to similar problems, e.g., processing networks, where nodes require nonzero amount of contents to support their actions

    Distributed Optimization in Energy Harvesting Sensor Networks with Dynamic In-network Data Processing

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    Energy Harvesting Wireless Sensor Networks (EH- WSNs) have been attracting increasing interest in recent years. Most current EH-WSN approaches focus on sensing and net- working algorithm design, and therefore only consider the energy consumed by sensors and wireless transceivers for sensing and data transmissions respectively. In this paper, we incorporate CPU-intensive edge operations that constitute in-network data processing (e.g. data aggregation/fusion/compression) with sens- ing and networking; to jointly optimize their performance, while ensuring sustainable network operation (i.e. no sensor node runs out of energy). Based on realistic energy and network models, we formulate a stochastic optimization problem, and propose a lightweight on-line algorithm, namely Recycling Wasted Energy (RWE), to solve it. Through rigorous theoretical analysis, we prove that RWE achieves asymptotical optimality, bounded data queue size, and sustainable network operation. We implement RWE on a popular IoT operating system, Contiki OS, and eval- uate its performance using both real-world experiments based on the FIT IoT-LAB testbed, and extensive trace-driven simulations using Cooja. The evaluation results verify our theoretical analysis, and demonstrate that RWE can recycle more than 90% wasted energy caused by battery overflow, and achieve around 300% network utility gain in practical EH-WSNs

    Multihop Routing for Energy Efficiency in Wireless Sensor Networks

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    Green communication in energy renewable wireless mesh networks: routing, rate control, and power allocation

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    PublishedJournal Article© 2014 IEEE. The increasing demand for wireless services has led to a severe energy consumption problem with the rising of greenhouse gas emission. While the renewable energy can somehow alleviate this problem, the routing, flow rate, and power still have to be well investigated with the objective of minimizing energy consumption in multi-hop energy renewable wireless mesh networks (ER-WMNs). This paper formulates the problem of network-wide energy consumption minimization under the network throughput constraint as a mixed-integer nonlinear programming problem by jointly optimizing routing, rate control, and power allocation. Moreover, the min-max fairness model is applied to address the fairness issue because the uneven routing problem may incur the sharp reduction of network performance in multi-hop ER-WMNs. Due to the high computational complexity of the formulated mathematical programming problem, an energy-aware multi-path routing algorithm (EARA) is also proposed to deal with the joint control of routing, flow rate, and power allocation in practical multi-hop WMNs. To search the optimal routing, it applies a weighted Dijkstra's shortest path algorithm, where the weight is defined as a function of the power consumption and residual energy of a node. Extensive simulation results are presented to show the performance of the proposed schemes and the effects of energy replenishment rate and network throughput on the network lifetime
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