1,507 research outputs found
Research on Innovation Ability of Industrial Clusters Based On the Fuzzy Comprehensive Evaluation Method ——In Case Of Si Chuan Software Industry Cluster
This paper was first based on the introduction of the fuzzy comprehensive evaluation method and the index system of innovation ability of industrial clusters, and apply the fuzzy comprehensive evaluation method to the cluster\u27s innovation capability for the scientific evaluation, then do the practical situation on the Sichuan Cheng du software industry cluster, obtaining the result is consistent with the practical situation. Therefore, using the fuzzy analytic hierarchy process can not only be on different clusters for horizontal comparison analysis, but also on different periods of the same cluster of longitudinal analysis, so as to clear the superiority and the insufficiency of clusters in the innovation, this method are meaningful for the evaluation of cluster\u27s innovation capability
Coupled Physics-informed Neural Networks for Inferring Solutions of Partial Differential Equations with Unknown Source Terms
Physics-informed neural networks (PINNs) provide a transformative development
for approximating the solutions to partial differential equations (PDEs). This
work proposes a coupled physics-informed neural network (C-PINN) for the
nonhomogeneous PDEs with unknown dynamical source terms, which is used to
describe the systems with external forces and cannot be well approximated by
the existing PINNs. In our method, two neural networks, NetU and NetG, are
proposed. NetU is constructed to generate a quasi-solution satisfying PDEs
under study. NetG is used to regularize the training of NetU. Then, the two
networks are integrated into a data-physics-hybrid cost function. Finally, we
propose a hierarchical training strategy to optimize and couple the two
networks. The performance of C-PINN is proved by approximating several
classical PDEs
Physically Informed Synchronic-adaptive Learning for Industrial Systems Modeling in Heterogeneous Media with Unavailable Time-varying Interface
Partial differential equations (PDEs) are commonly employed to model complex
industrial systems characterized by multivariable dependence. Existing
physics-informed neural networks (PINNs) excel in solving PDEs in a homogeneous
medium. However, their feasibility is diminished when PDE parameters are
unknown due to a lack of physical attributions and time-varying interface is
unavailable arising from heterogeneous media. To this end, we propose a
data-physics-hybrid method, physically informed synchronic-adaptive learning
(PISAL), to solve PDEs for industrial systems modeling in heterogeneous media.
First, Net1, Net2, and NetI, are constructed to approximate the solutions
satisfying PDEs and the interface. Net1 and Net2 are utilized to synchronously
learn each solution satisfying PDEs with diverse parameters, while NetI is
employed to adaptively learn the unavailable time-varying interface. Then, a
criterion combined with NetI is introduced to adaptively distinguish the
attributions of measurements and collocation points. Furthermore, NetI is
integrated into a data-physics-hybrid loss function. Accordingly, a
synchronic-adaptive learning (SAL) strategy is proposed to decompose and
optimize each subdomain. Besides, we theoretically prove the approximation
capability of PISAL. Extensive experimental results verify that the proposed
PISAL can be used for industrial systems modeling in heterogeneous media, which
faces the challenges of lack of physical attributions and unavailable
time-varying interface
Motion Control of Two Mobile Robots under Allowable Collisions
This letter investigates the motion control problem of two mobile robots
under allowable collisions. Here, the allowable collisions mean that the
collisions do not damage the mobile robots. The occurrence of the collisions is
discussed and the effects of the collisions on the mobile robots are analyzed
to develop a hybrid model of each mobile robot under allowable collisions.
Based on the effects of the collisions, we show the necessity of redesigning
the motion control strategy for mobile robots. Furthermore, impulsive control
techniques are applied to redesign the motion control strategy to guarantee the
task accomplishment for each mobile robot. Finally, an example is used to
illustrate the redesigned motion control strategy.Comment: 8 pages, 5 figure
- …