271 research outputs found
Issues related to velocity structure estimation in small coastal sedimentary plains: case of Tottori plain facing the Sea of Japan
Issues of predominant period of ground motion and derived underground velocity structure model are investigated in the coastal plains affected by the shallow soft sedimentary layer after the last ice age. It is found that two predominant periods due to the shallow soft layer and deeper drastic sedimentary boundaries are close in a small plain such as the Tottori plain, Japan as an example. This study analyzes the underground velocity structure derived from EHVSR (H/V spectrum ratio of earthquake ground motions) with the diffuse field theory. It is considered that the interaction of close predominant periods due to the different layer boundaries with high contrast may amplify the seismic ground motion in the period range that affects building structures in small plains in coastal area
A Study to Optimize Heterogeneous Resources for Open IoT
Recently, IoT technologies have been progressed, and many sensors and
actuators are connected to networks. Previously, IoT services were developed by
vertical integration style. But now Open IoT concept has attracted attentions
which achieves various IoT services by integrating horizontal separated devices
and services. For Open IoT era, we have proposed the Tacit Computing technology
to discover the devices with necessary data for users on demand and use them
dynamically. We also implemented elemental technologies of Tacit Computing. In
this paper, we propose three layers optimizations to reduce operation cost and
improve performance of Tacit computing service, in order to make as a
continuous service of discovered devices by Tacit Computing. In optimization
process, appropriate function allocation or offloading specific functions are
calculated on device, network and cloud layer before full-scale operation.Comment: 3 pages, 1 figure, 2017 Fifth International Symposium on Computing
and Networking (CANDAR2017), Nov. 201
Yukawa hierarchy from extra dimensions and infrared fixed points
We discuss the existence of hierarchy of Yukawa couplings in the models with
extra spatial dimensions. The hierarchical structure is induced by the power
behavior of the cutoff dependence of the evolution equations which yield large
suppressions of couplings at the compactification scale. The values of coupling
constants at this scale can be made stable almost independently of the initial
input parameters by utilizing the infrared fixed point. We find that the Yukawa
couplings converge to the fixed points very quickly because of the enhanced
energy dependence of the suppression factor from extra dimensions as well as in
the case of large gauge couplings at high-energy scale.Comment: 13 pages, 3 eps figure
ビドウ オヨビ ジュウリョク イジョウ オ モチイタ トットリ ヘイヤ ノ ジバン コウゾウ スイテイ ニ カンスル ケンキュウ
鳥取大学 博士(工学) 2002年03月26日授与 甲第127
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LAN with collision avoidance : switch implementation and simulation study
Packet collisions and their resolution create a performance bottleneck in random access LANs. A hardware solution to this problem is to use collision avoidance switches. These switches allow the implementation of random access protocols without the penalty of collisions among packets. The simplest network based on collision avoidance is the Broadcast Star network, where all the stations are connected to a central switch. A more sophisticated architecture based on collision avoidance is the CAMB (Collision Avoidance Multiple Broadcast) Tree network, where concurrent broadcast is possible. This paper presents a design of a collision avoidance switch for the CAMB Tree using TTL devices. Simulation study exploring the performance of the Broadcast Star network in both synchronous and asynchronous operations is also presented in this paper
Singular behavior of the macroscopic quantities in the free molecular gas
Steady behavior of the free molecular gas is studied with a special interest in the behavior around a convex body. Two types of singular behavior are shown to occur at the level of the macroscopic quantities. Their occurrence and the strength of singularity are discussed in detail both numerically and analytically. A universal law behind them is revealed by the consideration of the local geometry of the boundary
Unsupervised Learning of Efficient Geometry-Aware Neural Articulated Representations
We propose an unsupervised method for 3D geometry-aware representation
learning of articulated objects. Though photorealistic images of articulated
objects can be rendered with explicit pose control through existing 3D neural
representations, these methods require ground truth 3D pose and foreground
masks for training, which are expensive to obtain. We obviate this need by
learning the representations with GAN training. From random poses and latent
vectors, the generator is trained to produce realistic images of articulated
objects by adversarial training. To avoid a large computational cost for GAN
training, we propose an efficient neural representation for articulated objects
based on tri-planes and then present a GAN-based framework for its unsupervised
training. Experiments demonstrate the efficiency of our method and show that
GAN-based training enables learning of controllable 3D representations without
supervision.Comment: 19 pages, project page https://nogu-atsu.github.io/ENARF-GAN
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