29 research outputs found
Contextual quantum metrology
Quantum metrology promises higher precision measurements than classical
methods. Entanglement has been identified as one of quantum resources to
enhance metrological precision. However, generating entangled states with high
fidelity presents considerable challenges, and thus attaining metrological
enhancement through entanglement is generally difficult. Here, we show that
contextuality of measurement selection can enhance metrological precision, and
this enhancement is attainable with a simple linear optical experiment. We call
our methodology "contextual quantum metrology" (coQM). Contextuality is a
nonclassical property known as a resource for various quantum information
processing tasks. Until now, it has remained an open question whether
contextuality can be a resource for quantum metrology. We answer this question
in the affirmative by showing that the coQM can elevate precision of an optical
polarimetry by a factor of 1.4 to 6.0, much higher than the one by quantum
Fisher information, known as the limit of conventional quantum metrology. We
achieve the contextuality-enabled enhancement with two polarization
measurements which are mutually complementary, whereas, in the conventional
method, some optimal measurements to achieve the precision limit are either
theoretically difficult to find or experimentally infeasible. These results
highlight that the contextuality of measurement selection is applicable in
practice for quantum metrology.Comment: 18 pages, 6 figures, companion paper: arXiv:2311.1178
Metrological power of incompatible measurements
We show that measurement incompatibility is a necessary resource to enhance
the precision of quantum metrology. To utilize incompatible measurements, we
propose a probabilistic method of operational quasiprobability (OQ) consisting
of the measuring averages. OQ becomes positive semidefinite for some quantum
states. We prove that Fisher information (FI), based on positive OQ, can be
larger than the conventional quantum FI. Applying the proof, we show that FI of
OQ can be extremely larger than quantum FI, when estimating a parameter encoded
onto a qubit state with two mutually unbiased measurements. By adopting maximum
likelihood estimator and linear error propagation methods, we illustrate that
they achieve the high precision that our model predicts. This approach is
expected to be applicable to improve quantum sensors
Space Target Classification Improvement by Generating Micro-Doppler Signatures Considering Incident Angle
Classifying space targets from debris is critical for radar resource management as well as rapid response during the mid-course phase of space target flight. Due to advances in deep learning techniques, various approaches have been studied to classify space targets by using micro-Doppler signatures. Previous studies have only used micro-Doppler signatures such as spectrogram and cadence velocity diagram (CVD), but in this paper, we propose a method to generate micro-Doppler signatures taking into account the relative incident angle that a radar can obtain during the target tracking process. The AlexNet and ResNet-18 networks, which are representative convolutional neural network architectures, are transfer-learned using two types of datasets constructed using the proposed and conventional signatures to classify six classes of space targets and a debris–cone, rounded cone, cone with empennages, cylinder, curved plate, and square plate. Among the proposed signatures, the spectrogram had lower classification accuracy than the conventional spectrogram, but the classification accuracy increased from 88.97% to 92.11% for CVD. Furthermore, when recalculated not with six classes but simply with only two classes of precessing space targets and tumbling debris, the proposed spectrogram and CVD show the classification accuracy of over 99.82% for both AlexNet and ResNet-18. Specially, for two classes, CVD provided results with higher accuracy than the spectrogram
Optimization of the Design Configuration and Operation Strategy of Single-Pass Seawater Reverse Osmosis
The numerical study was conducted to compare process performance depending on the pump type and process configuration. The daily monitoring data of seawater temperature and salinity offshore from Daesan, Republic of Korea was used to reflect the site-specific seawater conditions. An algorithm for reverse osmosis in constant permeate mode was developed to simulate the process in time-variant conditions. Two types of pumps with different maximum leachable efficiencies were employed to organize pump-train configuration: separated feed lines and common pressure center design. The results showed pump type and design configuration did not have a significant effect on process performance. The annual means of specific energy consumption (SEC) for every design configuration were under 2 kWh/m3, except for a worst-case. The worst-case was decided when the pump was operated out of the best operation range. The two operation strategies were evaluated to determine the optimal configuration. The permeate flow rate was reduced to 80% of the designed permeate flow rate with two approaches: feed flow rate reduction in every train and pump shutdown in a specific train. The operation mode with feed flow rate reduction was more efficient than the other. The operating pressure reduction led to a decrease in SEC