177 research outputs found
Human motion retrieval based on freehand sketch
In this paper, we present an integrated framework of human motion retrieval based on freehand sketch. With some simple rules, the user can acquire a desired motion by sketching several key postures. To retrieve efficiently and accurately by sketch, the 3D postures are projected onto several 2D planes. The limb direction feature is proposed to represent the input sketch and the projected-postures. Furthermore, a novel index structure based on k-d tree is constructed to index the motions in the database, which speeds up the retrieval process. With our posture-by-posture retrieval algorithm, a continuous motion can be got directly or generated by using a pre-computed graph structure. What's more, our system provides an intuitive user interface. The experimental results demonstrate the effectiveness of our method. © 2014 John Wiley & Sons, Ltd
MICROFABRICATION OF MEMS AND AFM PLATFORMS FOR LUBRICATION STUDY
Ph.DDOCTOR OF PHILOSOPH
Cost-optimal energy management of hybrid electric vehicles using fuel cell/battery health-aware predictive control
Energy management is an enabling technology for increasing the economy of fuel cell/battery hybrid electric vehicles. Existing efforts mostly focus on optimization of a certain control objective (e.g., hydrogen consumption), without sufficiently considering the implications for on-board power sources degradation. To address this deficiency, this article proposes a cost-optimal, predictive energy management strategy, with an explicit consciousness of degradation of both fuel cell and battery systems. Specifically, we contribute two main points to the relevant literature, with the purpose of distinguishing our study from existing ones. First, a model predictive control framework, for the first time, is established to minimize the total running cost of a fuel cell/battery hybrid electric bus, inclusive of hydrogen cost and costs caused by fuel cell and battery degradation. The efficacy of this framework is evaluated, accounting for various sizes of prediction horizon and prediction uncertainties. Second, the effects of driving and pricing scenarios on the optimized vehicular economy are explored
Human-like Energy Management Based on Deep Reinforcement Learning and Historical Driving Experiences
Development of hybrid electric vehicles depends on an advanced and efficient
energy management strategy (EMS). With online and real-time requirements in
mind, this article presents a human-like energy management framework for hybrid
electric vehicles according to deep reinforcement learning methods and
collected historical driving data. The hybrid powertrain studied has a
series-parallel topology, and its control-oriented modeling is founded first.
Then, the distinctive deep reinforcement learning (DRL) algorithm, named deep
deterministic policy gradient (DDPG), is introduced. To enhance the derived
power split controls in the DRL framework, the global optimal control
trajectories obtained from dynamic programming (DP) are regarded as expert
knowledge to train the DDPG model. This operation guarantees the optimality of
the proposed control architecture. Moreover, the collected historical driving
data based on experienced drivers are employed to replace the DP-based
controls, and thus construct the human-like EMSs. Finally, different categories
of experiments are executed to estimate the optimality and adaptability of the
proposed human-like EMS. Improvements in fuel economy and convergence rate
indicate the effectiveness of the constructed control structure.Comment: 8 pages, 10 figure
3D Body Shapes Estimation from Dressed-Human Silhouettes
Estimation of 3D body shapes from dressed-human photos is an important but challenging problem in virtual fitting. We propose a novel automatic framework to efficiently estimate 3D body shapes under clothes. We construct a database of 3D naked and dressed body pairs, based on which we learn how to predict 3D positions of body landmarks (which further constrain a parametric human body model) automatically according to dressed-human silhouettes. Critical vertices are selected on 3D registered human bodies as landmarks to represent body shapes, so as to avoid the time-consuming vertices correspondences finding process for parametric body reconstruction. Our method can estimate 3D body shapes from dressed-human silhouettes within 4 seconds, while the fastest method reported previously need 1 minute. In addition, our estimation error is within the size tolerance for clothing industry. We dress 6042 naked bodies with 3 sets of common clothes by physically based cloth simulation technique. To the best of our knowledge, We are the first to construct such a database containing 3D naked and dressed body pairs and our database may contribute to the areas of human body shapes estimation and cloth simulation
Nonlinear Spring-Mass-Damper Modeling and Parameter Estimation of Train Frontal Crash Using CLGAN Model
Due to the complexity of a train crash, it is a challenging process to describe and estimate mathematically. Although different
mathematical models have been developed, it is still difficult to balance the complexity of models and the accuracy of estimation.
,is paper proposes a nonlinear spring-mass-damper model of train frontal crash, which achieves high accuracy and maintains
low complexity. ,e Convolutional Long-short-term-memory Generation Adversarial Network (CLGAN) model is applied to
study the nonlinear parameters dynamic variation of the key components of a rail vehicle (e.g., the head car, anticlimbing energy
absorber, and the coupler buffer devices). Firstly, the nonlinear lumped model of train frontal crash is built, and then the physical
parameters are deduced in twenty different cases using D’Alembert’s principle. Secondly, the input/output relationship of the
CLGAN model is determined, where the inputs are the nonlinear physical parameters in twenty initial conditions, and the output
is the nonlinear relationship between the train crash nonlinear parameters under other initial cases. Finally, the train crash
dynamic characteristics are accurately estimated during the train crash processes through the training of the CLGAN model, and
then the crash processes under different given conditions can be described effectively. ,e estimation results exhibit good
agreement with finite element (FE) simulations and experimental results. Furthermore, the CLGAN model shows great potential
in nonlinear estimation, and CLGAN can better describe the variation of nonlinear spring damping compared with the traditional
model. ,e nonlinear spring-mass-damper modeling is involved in improving the speed and accuracy of the train crash estimation, as well as being able to offer guidance for structure optimization in the early design stage
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