203 research outputs found
Hydraulic traits and drought mortality risk of tree species
Increased drought frequency and severity associated with global climate changehas contributed to large scale forest dieback on all vegetated continents. Forest dieback may alter community composition, leading to cascading negative impacts on ecosystem function and service, and creating a positive feedback loop between biosphere and atmosphere. Traits-based approaches have emerged as a promising way to accurately predict the impacts of climate change on vegetation dynamics. Yet predicting the forest mortality pattern resulting from drought stress remains challenging, largely because of a lack of knowledge of the plant traits determining the risk and modulating the process of drought-induced mortality, and how these traits vary across and within species. Hydraulic traits define species distributions along local or regional gradients of water availability, and recent advances in modelling forest dynamics highlight the critical role of hydraulic traits in improving model predictive power with respect to mortality events. Using various ecologically and economically important tree species from New South Wales, Australia, my PhD thesis was designed to examine inter-specific variation of various hydraulic traits across a wide range of species native to five different vegetation types: Rainforest (Acmena smithii), Wet sclerophyll forest (Eucalyptus grandis, E. viminalis), Dry sclerophyll forest (Angophora costata, Corymbia gummifera, E. sideroxylon), Grassy woodland (E. blakelyi, E. macrorhyncha, E. melliodora) and Semi-arid woodland (Acacia aneura, E. largiflorens, E. populnea). In addition, intra-specific variation of key hydraulic traits was examined for Banksia serrata. The primary objective of my work was to provide trait values that will help to predict the dynamics of tree species upon climate change with vegetation models. Furthermore, the correlative relationships among hydraulic traits and between traits and climate presented in this study broaden our understanding of plant hydraulic strategies and plant adaptation to low-rainfall environments
A Coordination Language for Databases
We present a coordination language for the modeling of distributed database
applications. The language, baptized Klaim-DB, borrows the concepts of
localities and nets of the coordination language Klaim but re-incarnates the
tuple spaces of Klaim as databases. It provides high-level abstractions and
primitives for the access and manipulation of structured data, with integrity
and atomicity considerations. We present the formal semantics of Klaim-DB and
develop a type system that avoids potential runtime errors such as certain
evaluation errors and mismatches of data format in tables, which are monitored
in the semantics. The use of the language is illustrated in a scenario where
the sales from different branches of a chain of department stores are
aggregated from their local databases. Raising the abstraction level and
encapsulating integrity checks in the language primitives have benefited the
modeling task considerably
PeF: Poisson's Equation Based Large-Scale Fixed-Outline Floorplanning
Floorplanning is the first stage of VLSI physical design. An effective
floorplanning engine definitely has positive impact on chip design speed,
quality and performance. In this paper, we present a novel mathematical model
to characterize non-overlapping of modules, and propose a flat fixed-outline
floorplanning algorithm based on the VLSI global placement approach using
Poisson's equation. The algorithm consists of global floorplanning and
legalization phases. In global floorplanning, we redefine the potential energy
of each module based on the novel mathematical model for characterizing
non-overlapping of modules and an analytical solution of Poisson's equation. In
this scheme, the widths of soft modules appear as variables in the energy
function and can be optimized. Moreover, we design a fast approximate
computation scheme for partial derivatives of the potential energy. In
legalization, based on the defined horizontal and vertical constraint graphs,
we eliminate overlaps between modules remained after global floorplanning, by
modifying relative positions of modules. Experiments on the MCNC, GSRC, HB+ and
ami49\_x benchmarks show that, our algorithm improves the average wirelength by
at least 2\% and 5\% on small and large scale benchmarks with certain
whitespace, respectively, compared to state-of-the-art floorplanners
On the locality of local neural operator in learning fluid dynamics
This paper launches a thorough discussion on the locality of local neural
operator (LNO), which is the core that enables LNO great flexibility on varied
computational domains in solving transient partial differential equations
(PDEs). We investigate the locality of LNO by looking into its receptive field
and receptive range, carrying a main concern about how the locality acts in LNO
training and applications. In a large group of LNO training experiments for
learning fluid dynamics, it is found that an initial receptive range compatible
with the learning task is crucial for LNO to perform well. On the one hand, an
over-small receptive range is fatal and usually leads LNO to numerical
oscillation; on the other hand, an over-large receptive range hinders LNO from
achieving the best accuracy. We deem rules found in this paper general when
applying LNO to learn and solve transient PDEs in diverse fields. Practical
examples of applying the pre-trained LNOs in flow prediction are presented to
confirm the findings further. Overall, with the architecture properly designed
with a compatible receptive range, the pre-trained LNO shows commendable
accuracy and efficiency in solving practical cases
Case-Aware Adversarial Training
The neural network (NN) becomes one of the most heated type of models in
various signal processing applications. However, NNs are extremely vulnerable
to adversarial examples (AEs). To defend AEs, adversarial training (AT) is
believed to be the most effective method while due to the intensive
computation, AT is limited to be applied in most applications. In this paper,
to resolve the problem, we design a generic and efficient AT improvement
scheme, namely case-aware adversarial training (CAT). Specifically, the
intuition stems from the fact that a very limited part of informative samples
can contribute to most of model performance. Alternatively, if only the most
informative AEs are used in AT, we can lower the computation complexity of AT
significantly as maintaining the defense effect. To achieve this, CAT achieves
two breakthroughs. First, a method to estimate the information degree of
adversarial examples is proposed for AE filtering. Second, to further enrich
the information that the NN can obtain from AEs, CAT involves a weight
estimation and class-level balancing based sampling strategy to increase the
diversity of AT at each iteration. Extensive experiments show that CAT is
faster than vanilla AT by up to 3x while achieving competitive defense effect
SRoUDA: Meta Self-training for Robust Unsupervised Domain Adaptation
As acquiring manual labels on data could be costly, unsupervised domain
adaptation (UDA), which transfers knowledge learned from a rich-label dataset
to the unlabeled target dataset, is gaining increasing popularity. While
extensive studies have been devoted to improving the model accuracy on target
domain, an important issue of model robustness is neglected. To make things
worse, conventional adversarial training (AT) methods for improving model
robustness are inapplicable under UDA scenario since they train models on
adversarial examples that are generated by supervised loss function. In this
paper, we present a new meta self-training pipeline, named SRoUDA, for
improving adversarial robustness of UDA models. Based on self-training
paradigm, SRoUDA starts with pre-training a source model by applying UDA
baseline on source labeled data and taraget unlabeled data with a developed
random masked augmentation (RMA), and then alternates between adversarial
target model training on pseudo-labeled target data and finetuning source model
by a meta step. While self-training allows the direct incorporation of AT in
UDA, the meta step in SRoUDA further helps in mitigating error propagation from
noisy pseudo labels. Extensive experiments on various benchmark datasets
demonstrate the state-of-the-art performance of SRoUDA where it achieves
significant model robustness improvement without harming clean accuracy. Code
is available at https://github.com/Vision.Comment: This paper has been accepted for presentation at the AAAI202
PriBioAuth: Privacy-preserving biometric-based remote user authentication
National Research Foundation (NRF) Singapor
Formalization of Robot Collision Detection Method based on Conformal Geometric Algebra
Cooperative robots can significantly assist people in their productive
activities, improving the quality of their works. Collision detection is vital
to ensure the safe and stable operation of cooperative robots in productive
activities. As an advanced geometric language, conformal geometric algebra can
simplify the construction of the robot collision model and the calculation of
collision distance. Compared with the formal method based on conformal
geometric algebra, the traditional method may have some defects which are
difficult to find in the modelling and calculation. We use the formal method
based on conformal geometric algebra to study the collision detection problem
of cooperative robots. This paper builds formal models of geometric primitives
and the robot body based on the conformal geometric algebra library in HOL
Light. We analyse the shortest distance between geometric primitives and prove
their collision determination conditions. Based on the above contents, we
construct a formal verification framework for the robot collision detection
method. By the end of this paper, we apply the proposed framework to collision
detection between two single-arm industrial cooperative robots. The flexibility
and reliability of the proposed framework are verified by constructing a
general collision model and a special collision model for two single-arm
industrial cooperative robots
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