454 research outputs found
Disentangled Text Representation Learning with Information-Theoretic Perspective for Adversarial Robustness
Adversarial vulnerability remains a major obstacle to constructing reliable
NLP systems. When imperceptible perturbations are added to raw input text, the
performance of a deep learning model may drop dramatically under attacks.
Recent work argues the adversarial vulnerability of the model is caused by the
non-robust features in supervised training. Thus in this paper, we tackle the
adversarial robustness challenge from the view of disentangled representation
learning, which is able to explicitly disentangle robust and non-robust
features in text. Specifically, inspired by the variation of information (VI)
in information theory, we derive a disentangled learning objective composed of
mutual information to represent both the semantic representativeness of latent
embeddings and differentiation of robust and non-robust features. On the basis
of this, we design a disentangled learning network to estimate these mutual
information. Experiments on text classification and entailment tasks show that
our method significantly outperforms the representative methods under
adversarial attacks, indicating that discarding non-robust features is critical
for improving adversarial robustness
Investigation of the Frequency Shift of a SAD Circuit Loop and the Internal Micro-Cantilever in a Gas Sensor
Micro-cantilever sensors for mass detection using resonance frequency have attracted considerable attention over the last decade in the field of gas sensing. For such a sensing system, an oscillator circuit loop is conventionally used to actuate the micro-cantilever, and trace the frequency shifts. In this paper, gas experiments are introduced to investigate the mechanical resonance frequency shifts of the micro-cantilever within the circuit loop(mechanical resonance frequency, MRF) and resonating frequency shifts of the electric signal in the oscillator circuit (system working frequency, SWF). A silicon beam with a piezoelectric zinc oxide layer is employed in the experiment, and a Self-Actuating-Detecting (SAD) circuit loop is built to drive the micro-cantilever and to follow the frequency shifts. The differences between the two resonating frequencies and their shifts are discussed and analyzed, and a coefficient α related to the two frequency shifts is confirmed
Online Time-Optimal Trajectory Generation for Two Quadrotors with Multi-Waypoints Constraints
The autonomous quadrotor's flying speed has kept increasing in the past 5
years, especially in the field of autonomous drone racing. However, the
majority of the research mainly focuses on the aggressive flight of a single
quadrotor. In this letter, we propose a novel method called Pairwise Model
Predictive Control (PMPC) that can guide two quadrotors online to fly through
the waypoints with minimum time without collisions. The flight task is first
modeled as a nonlinear optimization problem and then an efficient two-step mass
point velocity search method is used to provide initial values and references
to improve the solving efficiency so that the method can run online with a
frequency of 50 Hz and can handle dynamic waypoints. The simulation and
real-world experiments validate the feasibility of the proposed method and in
the real-world experiments, the two quadrotors can achieve a top speed of
8.1m/s in a 6-waypoint racing track in a compact flying arena of 6m*4m*2m
Random vibration analysis for coupled vehicle-track systems with uncertain parameters
Purpose
– The purpose of this paper is to present a new random vibration-based assessment method for coupled vehicle-track systems with uncertain parameters when subjected to random track irregularity.
Design/methodology/approach
– The uncertain parameters of vehicle are described as bounded random variables. The track is regarded as an infinite periodic structure, and the dynamic equations of the coupled vehicle-track system, under mixed physical coordinates and symplectic dual coordinates, are established through wheel-rail coupling relationships. The random track irregularities at the wheel-rail contact points are converted to a series of deterministic harmonic excitations with phase lag by using the pseudo excitation method. Based on the polynomial chaos expansion of the pseudo response, a chaos expanded pseudo equation is derived, leading to the combined hybrid pseudo excitation method-polynomial chaos expansion method.
Findings
– The impact of uncertainty propagation on the random vibration analysis is assessed efficiently. According to GB5599-85, the reliability analysis for the stability index is implemented, which can grade the comfort level by the probability. Comparing to the deterministic analysis, it turns out that neglect of the parameter uncertainty will lead to potentially risky analysis results.
Originality/value
– The proposed method is compared with Monte Carlo simulations, achieving good agreement. It is an effective means for random vibration analysis of uncertain coupled vehicle-track systems and has good engineering practicality
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