1,121 research outputs found
Distributed Interference-Aware Energy-Efficient Resource Allocation for Device-to-Device Communications Underlaying Cellular Networks
The introduction of device-to-device (D2D) into cellular networks poses many
new challenges in the resource allocation design due to the co-channel
interference caused by spectrum reuse and limited battery life of user
equipments (UEs). In this paper, we propose a distributed interference-aware
energy-efficient resource allocation algorithm to maximize each UE's energy
efficiency (EE) subject to its specific quality of service (QoS) and maximum
transmission power constraints. We model the resource allocation problem as a
noncooperative game, in which each player is self-interested and wants to
maximize its own EE. The formulated EE maximization problem is a non-convex
problem and is transformed into a convex optimization problem by exploiting the
properties of the nonlinear fractional programming. An iterative optimization
algorithm is proposed and verified through computer simulations.Comment: 6 pages, 3 figures, IEEE GLOBECOM 201
Energy Efficiency and Spectral Efficiency Tradeoff in Device-to-Device (D2D) Communications
In this letter, we investigate the tradeoff between energy efficiency (EE)
and spectral efficiency (SE) in device-to-device (D2D) communications
underlaying cellular networks with uplink channel reuse. The resource
allocation problem is modeled as a noncooperative game, in which each user
equipment (UE) is self-interested and wants to maximize its own EE. Given the
SE requirement and maximum transmission power constraints, a distributed
energy-efficient resource allocation algorithm is proposed by exploiting the
properties of the nonlinear fractional programming. The relationships between
the EE and SE tradeoff of the proposed algorithm and system parameters are
analyzed and verified through computer simulations.Comment: 8 pages, 6 figures, long version paper of IEEE Wireless
Communications Letters, accepted for publication. arXiv admin note: text
overlap with arXiv:1405.196
Understanding whole-body inter-personal dynamics between two players using neural Granger causality as the explainable AI (XAI)
Background: Simultaneously focusing on intra- and inter-individual body
dynamics and elucidating how these affect each other will help understand human
inter-personal coordination behavior. However, this association has not been
investigated previously owing to difficulties in analyzing complex causal
relations among several body components.To address this issue, this study
proposes a new analytical framework that attempts to understand the underlying
causal structures behind each joint movement of individual baseball players
using neural Granger causality (NGC) as the explainable AI. Methods: In the NGC
analysis, causal relationships were defined as the size of the weight
parameters of the first layer of a machine-learning model trained to predict
the future state of a specific time-series variable. To verify the approach in
a practical context, we conducted an experiment with 16 pairs of expert
baseball pitchers and batters; input datasets with 27 joint resultant velocity
data (joints of 13 pitchers and 14 batters) were generated and used for model
training.Results: NGC analysis revealed significant causal relations among
intra- and inter-individual body components such as the batter's hands having a
causal effect from the pitcher's throwing arm. Remarkably, although the
causality from the batter's body to pitcher's body is much lower than the
reverse, it is significantly correlated with batter performance outcomes.
Conclusions: The above results suggest the effectiveness of NGC analysis for
understanding whole-body inter-personal coordination dynamics and that of the
AI technique as a new approach for analyzing complex human behavior from a
different perspective than conventional techniques.Comment: 35 pages (including 6 supporting information), 9 figures, 1 tabl
Zic2 and Zic3 synergistically control neurulation and segmentation of paraxial mesoderm in mouse embryo
AbstractZic family zinc-finger proteins play various roles in animal development. In mice, five Zic genes (Zic1–5) have been reported. Despite the partly overlapping expression profiles of these genes, mouse mutants for each Zic show distinct phenotypes. To uncover possible redundant roles, we characterized Zic2/Zic3 compound mutant mice. Zic2 and Zic3 are both expressed in presomitic mesoderm, forming and newly generated somites with differential spatiotemporal accentuation. Mice heterozygous for the hypomorphic Zic2 allele together with null Zic3 allele generally showed severe malformations of the axial skeleton, including asymmetric or rostro-caudally bridged vertebrae, and reduction of the number of caudal vertebral bones, that are not obvious in single mutants. These defects were preceded by perturbed somitic marker expression, and reduced paraxial mesoderm progenitors in the primitive streak. These results suggest that Zic2 and Zic3 cooperatively control the segmentation of paraxial mesoderm at multiple stages. In addition to the segmentation abnormality, the compound mutant also showed neural tube defects that ran the entire rostro-caudal extent (craniorachischisis), suggesting that neurulation is another developmental process where Zic2 and Zic3 have redundant functions
A Green TDMA Scheduling Algorithm for Prolonging Lifetime in Wireless Sensor Networks
Fast data collection is one of the most important research issues for Wireless Sensor Networks (WSNs). In this paper, a TMDA based energy consumption balancing algorithm is proposed for the general k-hop WSNs, where one data packet is collected in one cycle. The optimal k that achieves the longest network life is obtained through our theoretical analysis. Required time slots, maximum energy consumption and residual network energy are all thoroughly analyzed in this paper. Theoretical analysis and simulation results demonstrate the effectiveness of the proposed algorithm in terms of energy efficiency and time slot scheduling
Big Data Analysis-based Security Situational Awareness for Smart Grid
Advanced communications and data processing technologies bring great benefits to the smart grid. However, cyber-security threats also extend from the information system to the smart grid. The existing security works for smart grid focus on traditional protection and detection methods. However, a lot of threats occur in a very short time and overlooked by exiting security components. These threats usually have huge impacts on smart gird and disturb its normal operation. Moreover, it is too late to take action to defend against the threats once they are detected, and damages could be difficult to repair. To address this issue, this paper proposes a security situational awareness mechanism based on the analysis of big data in the smart grid. Fuzzy cluster based analytical method, game theory and reinforcement learning are integrated seamlessly to perform the security situational analysis for the smart grid. The simulation and experimental results show the advantages of our scheme in terms of high efficiency and low error rate for security situational awareness
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