642 research outputs found
Geometry Dependent Current-Voltage Characteristics of ZnO Nanostructures: A Combined Nonequilibrium Green’s Function and Density Functional Theory Study
Current-voltage I-V characteristics of different ZnO nanostructures were studied using a combined nonequilibrium Green’s function and density functional theory techniques with the two-probe model. It was found that I-V characteristics of ZnO nanostructures depend strongly on their geometry. For wurtzite ZnO nanowires, currents decrease with increasing lengths under the same applied voltage conditions. The I-V characteristics are similar for single-walled ZnO nanotubes and triangular cross section ZnO nanowires but they are different from I-V characteristics of hexagonal cross section ZnO nanowires. Finally, our results are discussed in the context of calculated transmission spectra and densities of states
Corpus-Level End-to-End Exploration for Interactive Systems
A core interest in building Artificial Intelligence (AI) agents is to let
them interact with and assist humans. One example is Dynamic Search (DS), which
models the process that a human works with a search engine agent to accomplish
a complex and goal-oriented task. Early DS agents using Reinforcement Learning
(RL) have only achieved limited success for (1) their lack of direct control
over which documents to return and (2) the difficulty to recover from wrong
search trajectories. In this paper, we present a novel corpus-level end-to-end
exploration (CE3) method to address these issues. In our method, an entire text
corpus is compressed into a global low-dimensional representation, which
enables the agent to gain access to the full state and action spaces, including
the under-explored areas. We also propose a new form of retrieval function,
whose linear approximation allows end-to-end manipulation of documents.
Experiments on the Text REtrieval Conference (TREC) Dynamic Domain (DD) Track
show that CE3 outperforms the state-of-the-art DS systems.Comment: Accepted into AAAI 202
Distributed H
This paper considers a distributed H∞ sampled-data filtering problem in sensor networks with stochastically switching topologies. It is assumed that the topology switching is triggered by a Markov chain. The output measurement at each sensor is first sampled and then transmitted to the corresponding filters via a communication network. Considering the effect of a transmission delay, a distributed filter structure for each sensor is given based on the sampled data from itself and its neighbor sensor nodes. As a consequence, the distributed H∞ sampled-data filtering in sensor networks under Markovian switching topologies is transformed into H∞ mean-square stability problem of a Markovian jump error system with an interval time-varying delay. By using Lyapunov Krasovskii functional and reciprocally convex approach, a new bounded real lemma (BRL) is derived, which guarantees the mean-square stability of the error system with a desired H∞ performance. Based on this BRL, the topology-dependent H∞ sampled-data filters are obtained. An illustrative example is given to demonstrate the effectiveness of the proposed method
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