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By using this scheme we develop two numerical approaches to the time-dependent Schrödinger equation in momentum space.
In particular, while the original method employs a fully-explicit time-integration scheme we develop a high-order semi-implicit splitting scheme, which we implement in the context of spectral/hp element discretization.
To estimate the network capacity and decide on an appropriate resource management scheme, we develop an analytical framework to quantify the maximum number of IPTV connections that can be supported with guaranteed QoS over wired and multi-hop wireless networks.
Despite the similarity, the scheme we develop here does not coincide with any Rosenbrock type method formulated in [24, 27].
To overcome the implementation problems in the centralized scheme, we develop a decentralized algorithm next, which runs with low cross-tier control overhead.
To verify the performance of the proposed scheme, we develop a traffic and communication simulator that is based on car-following and random lane-changing models.
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We used a bottom-up development scheme: we developed low level modules first, and then combined them to form higher level ones.
The regularization scheme we developed for neural control policies enabled extensive and robust control ability that compares with cutting edge parametric control strategies despite that no preliminary calibration is needed with our method.
The scheme we developed is based on two supports: well-balanced treatment of the variable updating at the new time-level and flux evaluation by three-wave approximations of the intercell Riemann-problem that, without any split, embody the effect of the non-conservative term.
For the multi condition training scheme, we developed an ASR system based on the Kaldi toolkit [53] and DNN acoustic model.
Using this categorization scheme, we developed brief assessments (ten items for Grades 3 and 4, eight items for Grades 5 and 6) that included problems representing all three factors.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com