129 research outputs found
Design and Assessment of an Electric Vehicle Powertrain Model Based on Real-World Driving and Charging Cycles
In this paper, an advanced analytical model for an electric vehicle (EV) powertrain has been developed to illustrate the vehicular dynamics by combining electrical and mechanical models in the analysis. This study is based on a Nissan Leaf EV. In the electrical system, the powertrain has various components including a battery pack, a battery management system, a dc/dc converter, a dc/ac inverter, a permanent magnet synchronous motor, and a control system. In the mechanical system, it consists of power transmissions, axial shaft, and vehicle wheels. Furthermore, the driving performance of the Nissan Leaf is studied through the real-world driving tests and simulation tests in MATLAB/Simulink. In the analytical model, the vehicular dynamics is evaluated against changes in the vehicle velocity and acceleration, state of charge of the battery, and the motor power. Finally, a number of EVs involved in the power dispatch is studied. The greenhouse gas emissions of the EV are analyzed according to various energy power and driving features, and compared with the conventional internal combustion engine vehicle. In this case, Nissan Leaf is a pure EV. For a given drive cycle, Nissan Leaf can reduce CO2 emissions by 70%, depending on the way electricity is generated and duty cycles
Characterization of Wireless Channel Semantics: A New Paradigm
Recently, deep learning enabled semantic communications have been developed
to understand transmission content from semantic level, which realize effective
and accurate information transfer. Aiming to the vision of sixth generation
(6G) networks, wireless devices are expected to have native perception and
intelligent capabilities, which associate wireless channel with surrounding
environments from physical propagation dimension to semantic information
dimension. Inspired by these, we aim to provide a new paradigm on wireless
channel from semantic level. A channel semantic model and its characterization
framework are proposed in this paper. Specifically, a channel semantic model
composes of status semantics, behavior semantics and event semantics. Based on
actual channel measurement at 28 GHz, as well as multi-mode data, example
results of channel semantic characterization are provided and analyzed, which
exhibits reasonable and interpretable semantic information
Channel Measurements and Modeling for Dynamic Vehicular ISAC Scenarios at 28 GHz
Integrated sensing and communication (ISAC) is a promising technology for 6G,
with the goal of providing end-to-end information processing and inherent
perception capabilities for future communication systems. Within ISAC emerging
application scenarios, vehicular ISAC technologies have the potential to
enhance traffic efficiency and safety through integration of communication and
synchronized perception abilities. To establish a foundational theoretical
support for vehicular ISAC system design and standardization, it is necessary
to conduct channel measurements, and modeling to obtain a deep understanding of
the radio propagation. In this paper, a dynamic statistical channel model is
proposed for vehicular ISAC scenarios, incorporating Sensing Multipath
Components (S-MPCs) and Clutter Multipath Components (C-MPCs), which are
identified by the proposed tracking algorithm. Based on actual vehicular ISAC
channel measurements at 28 GHz, time-varying sensing characteristics in front,
left, and right directions are investigated. To model the dynamic evolution
process of channel, number of new S-MPCs, lifetimes, initial power and delay
positions, dynamic variations within their lifetimes, clustering, power decay,
and fading of C-MPCs are statistically characterized. Finally, the paper
provides implementation of dynamic vehicular ISAC model and validates it by
comparing key simulation statistics between measurements and simulations
Compact InGaAs/InP single-photon detector module with ultra-narrowband interference circuits
Gated InGaAs/InP avalanche photodiodes are the most practical device for
detection of telecom single photons arriving at regular intervals.Here, we
report the development of a compact single-photon detector (SPD) module
measured just 8.8cm * 6cm * 2cm in size and fully integrated with driving
signal generation, faint avalanche readout, and discrimination circuits as well
as temperature regulation and compensation. The readout circuit employs our
previously reported ultra-narrowband interference circuits (UNICs) to eliminate
the capacitive response to the gating signal. We characterize a UNIC-SPD module
with a 1.25-GHz clock input and find its performance comparable to its
counterpart built upon discrete functional blocks. Setting its detection
efficiency to 30% for 1,550-nm photons, we obtain an afterpulsing probability
of 2.4% and a dark count probability of 8E-7 per gate under 3-ns hold-off time.
We believe that UNIC-SPDs will be useful in important applications such as
quantum key distribution
AdaTT: Adaptive Task-to-Task Fusion Network for Multitask Learning in Recommendations
Multi-task learning (MTL) aims at enhancing the performance and efficiency of
machine learning models by training them on multiple tasks simultaneously.
However, MTL research faces two challenges: 1) modeling the relationships
between tasks to effectively share knowledge between them, and 2) jointly
learning task-specific and shared knowledge. In this paper, we present a novel
model Adaptive Task-to-Task Fusion Network (AdaTT) to address both challenges.
AdaTT is a deep fusion network built with task specific and optional shared
fusion units at multiple levels. By leveraging a residual mechanism and gating
mechanism for task-to-task fusion, these units adaptively learn shared
knowledge and task specific knowledge. To evaluate the performance of AdaTT, we
conduct experiments on a public benchmark and an industrial recommendation
dataset using various task groups. Results demonstrate AdaTT can significantly
outperform existing state-of-the-art baselines
Let Models Speak Ciphers: Multiagent Debate through Embeddings
Discussion and debate among Large Language Models (LLMs) have gained
considerable attention due to their potential to enhance the reasoning ability
of LLMs. Although natural language is an obvious choice for communication due
to LLM's language understanding capability, the token sampling step needed when
generating natural language poses a potential risk of information loss, as it
uses only one token to represent the model's belief across the entire
vocabulary. In this paper, we introduce a communication regime named CIPHER
(Communicative Inter-Model Protocol Through Embedding Representation) to
address this issue. Specifically, we remove the token sampling step from LLMs
and let them communicate their beliefs across the vocabulary through the
expectation of the raw transformer output embeddings. Remarkably, by deviating
from natural language, CIPHER offers an advantage of encoding a broader
spectrum of information without any modification to the model weights. While
the state-of-the-art LLM debate methods using natural language outperforms
traditional inference by a margin of 1.5-8%, our experiment results show that
CIPHER debate further extends this lead by 1-3.5% across five reasoning tasks
and multiple open-source LLMs of varying sizes. This showcases the superiority
and robustness of embeddings as an alternative "language" for communication
among LLMs
The correlation between multimodal radiomics and pathology about thermal ablation lesion of rabbit lung VX2 tumor
ObjectiveTo explore the correlation of CT-MRI pathology with lung tumor ablation lesions by comparing CT, MRI, and pathological performance of rabbit lung VX2 tumor after thermal ablation.MethodsThermal ablation including microwave ablation (MWA) and radiofrequency ablation (RFA) was carried out in 12 experimental rabbits with lung VX2 tumors under CT guidance. CT and MRI performance was observed immediately after ablation, and then the rabbits were killed and pathologically examined. The maximum diameter of tumors on CT before ablation, the central hypointense area on T2-weighted image (T2WI) after ablation, and the central hyperintense area on T1-weighted image (T1WI) after ablation and pathological necrosis were measured. Simultaneously, the maximum diameter of ground-glass opacity (GGO) around the lesion on CT after ablation, the surrounding hyperintense area on T2WI after ablation, the surrounding isointense area on T1WI after ablation, and the pathological ablation area were measured, and then the results were compared and analyzed.ResultsAblation zones showed GGO surrounding the original lesion on CT, with a central hypointense and peripheral hyperintense zone on T2WI as well as a central hyperintense and peripheral isointense zone on T1WI. There was statistical significance in the comparison of the maximum diameter of the tumor before ablation with a central hyperintense zone on T1WI after ablation and pathological necrosis. There was also statistical significance in the comparison of the maximum diameter of GGO around the lesion on CT with the surrounding hyperintense zone on T2WI and isointense on T1WI after ablation and pathological ablation zone. There was only one residual tumor abutting the vessel in the RFA group.ConclusionsMRI manifestations of thermal ablation of VX2 tumors in rabbit lungs have certain characteristics with a strong pathological association. CT combined with MRI multimodal radiomics is expected to provide an effective new method for clinical evaluation of the immediate efficacy of thermal ablation of lung tumors
Electrical and magnetic properties of antiferromagnetic semiconductor MnSi2N4 monolayer
Two-dimensional antiferromagnetic semiconductors have triggered significant attention due to their unique physical properties and broad application. Based on first-principles calculations, a novel two-dimensional (2D) antiferromagnetic material MnSi2N4 monolayer is predicted. The calculation results show that the two-dimensional MnSi2N4 prefers an antiferromagnetic state with a small band gap of 0.26 eV. MnSi2N4 has strong antiferromagnetic coupling which can be effectively tuned under strain. Interestingly, the MnSi2N4 monolayer exhibits a half-metallic ferromagnetic properties under an external magnetic field, in which the spin-up electronic state displays a metallic property, while the spin-down electronic state exhibits a semiconducting characteristic. Therefore, 100% spin polarization can be achieved. Two-dimensional MnSi2N4 monolayer has potential application in the field of high-density information storage and spintronic devices
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