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The CR network using centralized interference minimizing algorithm (CminSumInt) for assigning frequencies results in the lowest interference with the other concurrent users but also results in a lower individual throughput reward comparing to other algorithms.
This is because when ϕ increases, the SCTP throughput reward in (12) becomes more important than the SCTP packet delay reward in (11), the two heuristic handoff decision policies do not care about the SCTP congestion window, which is a very important factor for SCTP throughput.
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When the weight factor increases in (4), more emphasis is put on the throughput in the reward function.
However, high throughput models of nicotine reward have not been developed in mice.
Therefore, a natural definition of the reward is the throughput that can be obtained at each decision epoch.
The results show that the proposed scheme can significantly decrease the handoff latency, as well as improve SCTP throughput and the expected total reward in CBTC networks.
The higher complexity of the continuous refolding process was rewarded with higher throughput and productivity as well as significantly lower buffer consumption compared to the batch dilution refolding processes.
We propose first, a throughput-only approach, where the reward is computed primarily based on successful transmissions, subject to a pre-decided threshold on the interference offered to the licensed or primary users (PUs).
Note that since we consider cumulative discounted reward, the total system throughput under a policy π, in packets delivered per time slot, is (1−γ R π.
Specifically, we give the matrix equation that computes the cumulative expected reward (equivalent to the system throughput when a unit reward is given to decoding of one packet) for any state in the system given the transition probabilities and the reward vector.
As a result, users with good channels experience a very steep increase in the reward, and the total system throughput is higher in the semi-greedy approach.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com