Exact(22)
It is theoretically shown that conventional motion-compensated predictive interframe coding outperforms DVC by 6 dB or more.
For the liquid batch reactor it is theoretically shown that preliminary saturation of the initial solution with gas prior to reaction profits more in comparison with "usual" mode.
By choosing appropriate Lyapunov function and employing Barbalat's lemma, it is theoretically shown that the synchronization errors can converge to zero asymptotically.
It is theoretically shown that the consensus can be achieved if the coupling gain is carefully chosen and other threshold conditions based on the communication graphs are satisfied.
Moreover, it is theoretically shown that the p-n junction can be formed by redistribution of impurities in co-doped Si in gradient temperature field[25].
In contrast, in [12] it is theoretically shown that (eta<0.5) only requires increasingly larger data sets for achieving small reconstruction errors.
Similar(38)
It has been theoretically shown that nanodots can have very high thermoelectric efficiencies due to their discrete energy spectrum [2 4].
The HSW in MAMR was theoretically shown to steadily decrease with increasing temperature because of thermal fluctuations [14].
It has been theoretically shown that vacancies can induce 2D magnetic ordering in graphene [16] besides modifying the electronic states near the Fermi level originating from the shape of electronic bands [17 19] near the Dirac point [20, 21].
The dataset signals are combined with a supervised learning model, that is a Decision Tree Regressor [17], where we have set a maximum tree depth equal to 3 and trained and tested using the Leave-One-Out Error [18] technique which has been theoretically shown to be an unbiased estimator of generalisation error.
In fact, it has been theoretically shown that the prediction error (residual) signal obtained using linear prediction in subbands is flatter in the frequency domain than the prediction error obtained using fullband linear prediction (for the same AR filter order) [22].
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