702,966 research outputs found
Existence and multiplicity of Homoclinic solutions for the second order Hamiltonian systems
In this paper we study the existence and multiplicity of homoclinic solutions
for the second order Hamiltonian system ,
, by means of the minmax arguments in the critical
point theory, where is unnecessary uniformly positively definite for all
and sastisfies the asymptotically linear
condition.Comment: published in International Mathematical Forum, Vol. 6, 2011, no. 4,
159 - 17
Secrecy Wireless Information and Power Transfer in OFDMA Systems
In this paper, we consider simultaneous wireless information and power
transfer (SWIPT) in orthogonal frequency division multiple access (OFDMA)
systems with the coexistence of information receivers (IRs) and energy
receivers (ERs). The IRs are served with best-effort secrecy data and the ERs
harvest energy with minimum required harvested power. To enhance physical-layer
security and yet satisfy energy harvesting requirements, we introduce a new
frequency-domain artificial noise based approach. We study the optimal resource
allocation for the weighted sum secrecy rate maximization via transmit power
and subcarrier allocation. The considered problem is non-convex, while we
propose an efficient algorithm for solving it based on Lagrange duality method.
Simulation results illustrate the effectiveness of the proposed algorithm as
compared against other heuristic schemes.Comment: To appear in Globecom 201
Danger-aware Adaptive Composition of DRL Agents for Self-navigation
Self-navigation, referred as the capability of automatically reaching the
goal while avoiding collisions with obstacles, is a fundamental skill required
for mobile robots. Recently, deep reinforcement learning (DRL) has shown great
potential in the development of robot navigation algorithms. However, it is
still difficult to train the robot to learn goal-reaching and
obstacle-avoidance skills simultaneously. On the other hand, although many
DRL-based obstacle-avoidance algorithms are proposed, few of them are reused
for more complex navigation tasks. In this paper, a novel danger-aware adaptive
composition (DAAC) framework is proposed to combine two individually
DRL-trained agents, obstacle-avoidance and goal-reaching, to construct a
navigation agent without any redesigning and retraining. The key to this
adaptive composition approach is that the value function outputted by the
obstacle-avoidance agent serves as an indicator for evaluating the risk level
of the current situation, which in turn determines the contribution of these
two agents for the next move. Simulation and real-world testing results show
that the composed Navigation network can control the robot to accomplish
difficult navigation tasks, e.g., reaching a series of successive goals in an
unknown and complex environment safely and quickly.Comment: 7 pages, 9 figure
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