Asynchronous Stochastic Approximation Based Learning Algorithms for As-You-Go Deployment of Wireless Relay Networks along a Line
Arpan Chattopadhyay, Avishek Ghosh, Anurag Kumar

TL;DR
This paper develops and analyzes asynchronous stochastic approximation algorithms for the sequential, as-you-go deployment of wireless relay networks along a line, optimizing for power, reliability, and deployment efficiency.
Contribution
It introduces deploy-and-learn algorithms for the pure as-you-go approach, formulating the problem as an average cost MDP and proving convergence of the algorithms.
Findings
Algorithms converge asymptotically to optimal policies.
Numerical results demonstrate fast convergence.
Practical for quick deployment of emergency networks.
Abstract
We are motivated by the need for impromptu (or as-you-go) deployment of multihop wireless networks, by human agents or robots; the agent moves along a line, makes wireless link quality measurements at regular intervals, and makes on-line placement decisions using these measurements. As a first step, we have formulated such deployment along a line as a sequential decision problem. In our earlier work, we proposed two possible deployment approaches: (i) the pure as-you-go approach where the deployment agent can only move forward, and (ii) the explore-forward approach where the deployment agent explores a few successive steps and then selects the best relay placement location. The latter was shown to provide better performance but at the expense of more measurements and deployment time, which makes explore-forward impractical for quick deployment by an energy constrained agent such as a…
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