252 research outputs found
Bridge Resilience Assessment with INSPIRE Data
This project proposed a methodology to assess the impact of corrosion on the performance of bridges. The combined analytical and numerical modeling of shear-critical and lap-spliced columns is detailed, and outcomes are verified with previous experimental test data. The impact of corrosion on risk is assessed through conducting fragility analyses. Results quantify the increase in failure probabilities of these structures, measured by increasing probabilities of exceeding defined damage states, with increasing levels of corrosion. Corrosion is found to have a larger impact on increasing probabilities of exceeding more severe damage states. Twenty percent mass loss of reinforcement increases the probability of exceeding the complete damage state by up to 49% and 34% for a shear-critical and lap-spliced column, respectively. The effect is more pronounced at intermediate loading intensities, where there is uncertainty about the performance of the structure. Comparing between failure modes, bridges with columns of short lap splice are more vulnerable to collapse under the same degree of corrosion compared with shear-critical columns
Updating Bridge Resilience Assessment based on Corrosion and Foundation Scour Inspection Data
Aging and degradation of bridge structural components due to corrosion and scour create severe safety issues in the structural system and can lead to possible bridge failures. Collecting and analyzing inspection data provide a way to monitor and assess the safety condition of bridges. This paper proposes a framework to utilize collected inspection data to assess the condition of a bridge through updating both component- and system-level fragility curves of the bridge. Particularly, collected data such as mass loss of reinforcement and depth of scour hole are utilized to update the mechanical properties of structural members in the finite element model. Fragility curves are then updated through performing a series of nonlinear time analyses based on the inspection data. As bridges age, they are susceptible to increasing corrosion and scour. This study investigates the performance of bridges considering the combined effect of reinforcement corrosion and foundation scour under extreme loadings such as seismic events to assess bridge resilience. Fragility results quantify increases in the probabilities of damage and collapse of the structural system as measured mass loss and scour depth increase
Bridge Resilience Assessment with INSPIRE Data
In this research, we proposed analytical models validated with numerical results to assess how inspection-collected data on corrosion can be used to update bridge models and predict performance under future events. A detailed investigation of the vulnerability of bridges due to corrosion at both component and global levels. The results show the impact of corrosion-induced degradation on the seismic fragility of reinforced concrete columns under various failure modes, e.g., flexural, shear, and lap-spliced failures. As increasing amounts of data are collected on the states of bridges, the results show how these data can be used to update bridge assessments and prioritize decisions for repair and retrofit to increase component and system performance
NAS-Bench-Graph: Benchmarking Graph Neural Architecture Search
Graph neural architecture search (GraphNAS) has recently aroused considerable
attention in both academia and industry. However, two key challenges seriously
hinder the further research of GraphNAS. First, since there is no consensus for
the experimental setting, the empirical results in different research papers
are often not comparable and even not reproducible, leading to unfair
comparisons. Secondly, GraphNAS often needs extensive computations, which makes
it highly inefficient and inaccessible to researchers without access to
large-scale computation. To solve these challenges, we propose NAS-Bench-Graph,
a tailored benchmark that supports unified, reproducible, and efficient
evaluations for GraphNAS. Specifically, we construct a unified, expressive yet
compact search space, covering 26,206 unique graph neural network (GNN)
architectures and propose a principled evaluation protocol. To avoid
unnecessary repetitive training, we have trained and evaluated all of these
architectures on nine representative graph datasets, recording detailed metrics
including train, validation, and test performance in each epoch, the latency,
the number of parameters, etc. Based on our proposed benchmark, the performance
of GNN architectures can be directly obtained by a look-up table without any
further computation, which enables fair, fully reproducible, and efficient
comparisons. To demonstrate its usage, we make in-depth analyses of our
proposed NAS-Bench-Graph, revealing several interesting findings for GraphNAS.
We also showcase how the benchmark can be easily compatible with GraphNAS open
libraries such as AutoGL and NNI. To the best of our knowledge, our work is the
first benchmark for graph neural architecture search
Disentangled Representation Learning with Large Language Models for Text-Attributed Graphs
Text-attributed graphs (TAGs) are prevalent on the web and research over TAGs
such as citation networks, e-commerce networks and social networks has
attracted considerable attention in the web community. Recently, large language
models (LLMs) have demonstrated exceptional capabilities across a wide range of
tasks. However, the existing works focus on harnessing the potential of LLMs
solely relying on prompts to convey graph structure information to LLMs, thus
suffering from insufficient understanding of the complex structural
relationships within TAGs. To address this problem, in this paper we present
the Disentangled Graph-Text Learner (DGTL) model, which is able to enhance the
reasoning and predicting capabilities of LLMs for TAGs. Our proposed DGTL model
incorporates graph structure information through tailored disentangled graph
neural network (GNN) layers, enabling LLMs to capture the intricate
relationships hidden in text-attributed graphs from multiple structural
factors. Furthermore, DGTL operates with frozen pre-trained LLMs, reducing
computational costs and allowing much more flexibility in combining with
different LLM models. Experimental evaluations demonstrate the effectiveness of
the proposed DGTL model on achieving superior or comparable performance over
state-of-the-art baselines. Additionally, we also demonstrate that our DGTL
model can offer natural language explanations for predictions, thereby
significantly enhancing model interpretability
Graph Meets LLMs: Towards Large Graph Models
Large models have emerged as the most recent groundbreaking achievements in
artificial intelligence, and particularly machine learning. However, when it
comes to graphs, large models have not achieved the same level of success as in
other fields, such as natural language processing and computer vision. In order
to promote applying large models for graphs forward, we present a perspective
paper to discuss the challenges and opportunities associated with developing
large graph models. First, we discuss the desired characteristics of large
graph models. Then, we present detailed discussions from three key
perspectives: representation basis, graph data, and graph models. In each
category, we provide a brief overview of recent advances and highlight the
remaining challenges together with our visions. Finally, we discuss valuable
applications of large graph models. We believe this perspective can encourage
further investigations into large graph models, ultimately pushing us one step
closer towards artificial general intelligence (AGI). We are the first to
comprehensively study large graph models, to the best of our knowledge.Comment: Accepted by NeurIPS 2023 New Frontiers in Graph Learning Workshop.
Comments are welcom
Short-term power load forecasting method based on CNN-SAEDN-Res
In deep learning, the load data with non-temporal factors are difficult to
process by sequence models. This problem results in insufficient precision of
the prediction. Therefore, a short-term load forecasting method based on
convolutional neural network (CNN), self-attention encoder-decoder network
(SAEDN) and residual-refinement (Res) is proposed. In this method, feature
extraction module is composed of a two-dimensional convolutional neural
network, which is used to mine the local correlation between data and obtain
high-dimensional data features. The initial load fore-casting module consists
of a self-attention encoder-decoder network and a feedforward neural network
(FFN). The module utilizes self-attention mechanisms to encode high-dimensional
features. This operation can obtain the global correlation between data.
Therefore, the model is able to retain important information based on the
coupling relationship between the data in data mixed with non-time series
factors. Then, self-attention decoding is per-formed and the feedforward neural
network is used to regression initial load. This paper introduces the residual
mechanism to build the load optimization module. The module generates residual
load values to optimize the initial load. The simulation results show that the
proposed load forecasting method has advantages in terms of prediction accuracy
and prediction stability.Comment: in Chinese language, Accepted by Electric Power Automation Equipmen
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