2,066 research outputs found
Optimized Hierarchical Power Oscillations Control for Distributed Generation Under Unbalanced Conditions
Control structures have critical influences on converter-interfaced
distributed generations (DG) under unbalanced conditions. Most of previous
works focus on suppressing active power oscillations and ripples of DC bus
voltage. In this paper, the relationship between amplitudes of the active power
oscillations and the reactive power oscillations are firstly deduced and the
hierarchical control of DG is proposed to reduce power oscillations. The
hierarchical control consists of primary and secondary levels. Current
references are generated in primary control level and the active power
oscillations can be suppressed by a dual current controller. Secondary control
reduces the active power and reactive power oscillations simultaneously by
optimal model aiming for minimum amplitudes of oscillations. Simulation results
show that the proposed secondary control with less injecting negative-sequence
current than traditional control methods can effectively limit both active
power and reactive power oscillations.Comment: Accepted by Applied Energ
Modeling Dependent Structure for Utterances in ASR Evaluation
The bootstrap resampling method has been popular for performing significance
analysis on word error rate (WER) in automatic speech recognition (ASR)
evaluation. To deal with dependent speech data, the blockwise bootstrap
approach is also introduced. By dividing utterances into uncorrelated blocks,
this approach resamples these blocks instead of original data. However, it is
typically nontrivial to uncover the dependent structure among utterances and
identify the blocks, which might lead to subjective conclusions in statistical
testing. In this paper, we present graphical lasso based methods to explicitly
model such dependency and estimate uncorrelated blocks of utterances in a
rigorous way, after which blockwise bootstrap is applied on top of the inferred
blocks. We show the resulting variance estimator of WER in ASR evaluation is
statistically consistent under mild conditions. We also demonstrate the
validity of proposed approach on LibriSpeech dataset
Complex electronic states in double layered ruthenates (Sr1-xCax)3Ru2O7
The magnetic ground state of (SrCa)RuO (0 1) is complex, ranging from an itinerant metamagnetic state (0
0.08), to an unusual heavy-mass, nearly ferromagnetic (FM) state (0.08
0.4), and finally to an antiferromagnetic (AFM) state (0.4 1). In
this report we elucidate the electronic properties for these magnetic states,
and show that the electronic and magnetic properties are strongly coupled in
this system. The electronic ground state evolves from an AFM
quasi-two-dimensional metal for 1.0, to an Anderson localized state for
(the AFM region). When the magnetic state undergoes a
transition from the AFM to the nearly FM state, the electronic ground state
switches to a weakly localized state induced by magnetic scattering for , and then to a magnetic metallic state with the in-plane
resistivity ( 2) for .
The system eventually transforms into a Fermi liquid ground state when the
magnetic ground state enters the itinerant metamagnetic state for .
When approaches the critical composition ( 0.08), the Fermi liquid
temperature is suppressed to zero Kelvin, and non-Fermi liquid behavior is
observed. These results demonstrate the strong interplay between charge and
spin degrees of freedom in the double layered ruthenates.Comment: 10 figures. To be published in Phys. Rev.
Joint Object and Part Segmentation using Deep Learned Potentials
Segmenting semantic objects from images and parsing them into their
respective semantic parts are fundamental steps towards detailed object
understanding in computer vision. In this paper, we propose a joint solution
that tackles semantic object and part segmentation simultaneously, in which
higher object-level context is provided to guide part segmentation, and more
detailed part-level localization is utilized to refine object segmentation.
Specifically, we first introduce the concept of semantic compositional parts
(SCP) in which similar semantic parts are grouped and shared among different
objects. A two-channel fully convolutional network (FCN) is then trained to
provide the SCP and object potentials at each pixel. At the same time, a
compact set of segments can also be obtained from the SCP predictions of the
network. Given the potentials and the generated segments, in order to explore
long-range context, we finally construct an efficient fully connected
conditional random field (FCRF) to jointly predict the final object and part
labels. Extensive evaluation on three different datasets shows that our
approach can mutually enhance the performance of object and part segmentation,
and outperforms the current state-of-the-art on both tasks
Integrated Design and Implementation of Embedded Control Systems with Scilab
Embedded systems are playing an increasingly important role in control
engineering. Despite their popularity, embedded systems are generally subject
to resource constraints and it is therefore difficult to build complex control
systems on embedded platforms. Traditionally, the design and implementation of
control systems are often separated, which causes the development of embedded
control systems to be highly time-consuming and costly. To address these
problems, this paper presents a low-cost, reusable, reconfigurable platform
that enables integrated design and implementation of embedded control systems.
To minimize the cost, free and open source software packages such as Linux and
Scilab are used. Scilab is ported to the embedded ARM-Linux system. The drivers
for interfacing Scilab with several communication protocols including serial,
Ethernet, and Modbus are developed. Experiments are conducted to test the
developed embedded platform. The use of Scilab enables implementation of
complex control algorithms on embedded platforms. With the developed platform,
it is possible to perform all phases of the development cycle of embedded
control systems in a unified environment, thus facilitating the reduction of
development time and cost.Comment: 15 pages, 14 figures; Open Access at
http://www.mdpi.org/sensors/papers/s8095501.pd
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