In this paper, we propose an
adaptive data-harvesting approach for mobile-agent-assisted data collection in
wireless sensor networks (WSNs) inspired by Behavioral Ecology. By using the marginal
value theorem, we divide the entire sensor field into small patches and gather
the correlated data from each patch. Each observationX gathered by a given
sensor node to be considered to be a marginal information source with a
relative standard deviation σ(x|Y, I), where Y is a set of previously collected
observations by the mobile agent, and I is the background knowledge learned from
the sensor field. The mobile agent estimates the correlation based on the
available knowledge gathered from the current patch and the previous patches
and then chooses the next visiting sensor node. The next node should have the
maximum information gain obtained until σ(x|Y, I) is smaller than a predefined
threshold (TH). Since, in a dynamically changing environment, the correlation varies among different patches,
an efficient way to understand the correlation model is the key to efficient
data harvesting. The proposed estimation technique of the marginal value
theorem, which is called estimation technique based on the marginal value theorem
(EMVT), is used to maintain the fidelity of the interested data with relatively
fewer collected sensor observations.
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