Deep Learning-driven Community Resilience Rating based on Intertwined
Socio-Technical Systems Features
- URL: http://arxiv.org/abs/2311.01661v1
- Date: Fri, 3 Nov 2023 01:50:36 GMT
- Title: Deep Learning-driven Community Resilience Rating based on Intertwined
Socio-Technical Systems Features
- Authors: Kai Yin, Ali Mostafavi
- Abstract summary: This paper presents an integrated three-layer deep learning model for community resilience rating (called Resili-Net)
Using publicly accessible data from multiple metropolitan statistical areas in the United States, Resili-Net characterizes the resilience levels of spatial areas into five distinct levels.
The interpretability of the model outcomes enables feature analysis for specifying the determinants of resilience in areas within each resilience level.
- Score: 4.295013129588405
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Community resilience is a complex and muti-faceted phenomenon that emerges
from complex and nonlinear interactions among different socio-technical systems
and their resilience properties. However, present studies on community
resilience focus primarily on vulnerability assessment and utilize index-based
approaches, with limited ability to capture heterogeneous features within
community socio-technical systems and their nonlinear interactions in shaping
robustness, redundancy, and resourcefulness components of resilience. To
address this gap, this paper presents an integrated three-layer deep learning
model for community resilience rating (called Resili-Net). Twelve measurable
resilience features are specified and computed within community socio-technical
systems (i.e., facilities, infrastructures, and society) related to three
resilience components of robustness, redundancy, and resourcefulness. Using
publicly accessible data from multiple metropolitan statistical areas in the
United States, Resili-Net characterizes the resilience levels of spatial areas
into five distinct levels. The interpretability of the model outcomes enables
feature analysis for specifying the determinants of resilience in areas within
each resilience level, allowing for the identification of specific resilience
enhancement strategies. Changes in community resilience profiles under urban
development patterns are further examined by changing the value of related
socio-technical systems features. Accordingly, the outcomes provide novel
perspectives for community resilience assessment by harnessing machine
intelligence and heterogeneous urban big data.
Related papers
- Cooperative Resilience in Artificial Intelligence Multiagent Systems [2.0608564715600273]
This paper proposes a clear definition of cooperative resilience' and a methodology for its quantitative measurement.
The results highlight the crucial role of resilience metrics in analyzing how the collective system prepares for, resists, recovers from, sustains well-being, and transforms in the face of disruptions.
arXiv Detail & Related papers (2024-09-20T03:28:48Z) - PRIME: A CyberGIS Platform for Resilience Inference Measurement and Enhancement [1.4716925415659332]
Defining and quantifying resilience in the social domain is relatively subjective due to the intricate interplay of socioeconomic factors with disaster resilience.
There is a lack of computationally rigorous, user-friendly tools that can support customized resilience assessment considering local conditions.
This study aims to address these gaps through the power of CyberGIS with three objectives.
arXiv Detail & Related papers (2024-04-15T05:14:52Z) - Machine Learning-based Approach for Ex-post Assessment of Community Risk and Resilience Based on Coupled Human-infrastructure Systems Performance [2.4298177416856164]
We created a machine learning-based method for the ex-post assessment of community risk and resilience.
We examined the risk and resilience performance of communities in the context of the 2017 Hurricane Harvey in Harris County, Texas.
arXiv Detail & Related papers (2024-03-24T19:32:23Z) - The Risk of Federated Learning to Skew Fine-Tuning Features and
Underperform Out-of-Distribution Robustness [50.52507648690234]
Federated learning has the risk of skewing fine-tuning features and compromising the robustness of the model.
We introduce three robustness indicators and conduct experiments across diverse robust datasets.
Our approach markedly enhances the robustness across diverse scenarios, encompassing various parameter-efficient fine-tuning methods.
arXiv Detail & Related papers (2024-01-25T09:18:51Z) - Detecting Vulnerable Nodes in Urban Infrastructure Interdependent
Network [30.78792992230233]
We model the interdependent network as a heterogeneous graph and propose a system based on graph neural network with reinforcement learning.
The presented system leverages deep learning techniques to understand and analyze the heterogeneous graph, which enables us to capture the risk of cascade failure and discover vulnerable infrastructures of cities.
arXiv Detail & Related papers (2023-07-19T09:53:56Z) - Spatio-Temporal Representation Factorization for Video-based Person
Re-Identification [55.01276167336187]
We propose Spatio-Temporal Representation Factorization module (STRF) for re-ID.
STRF is a flexible new computational unit that can be used in conjunction with most existing 3D convolutional neural network architectures for re-ID.
We empirically show that STRF improves performance of various existing baseline architectures while demonstrating new state-of-the-art results.
arXiv Detail & Related papers (2021-07-25T19:29:37Z) - Methodological Foundation of a Numerical Taxonomy of Urban Form [62.997667081978825]
We present a method for numerical taxonomy of urban form derived from biological systematics.
We derive homogeneous urban tissue types and, by determining overall morphological similarity between them, generate a hierarchical classification of urban form.
After framing and presenting the method, we test it on two cities - Prague and Amsterdam.
arXiv Detail & Related papers (2021-04-30T12:47:52Z) - On Telecommunication Service Imbalance and Infrastructure Resource
Deployment [95.80185574417428]
We propose a fine-grained and easy-to-compute imbalance index, aiming to quantitatively link the relation among telecommunication service imbalance, telecommunication infrastructure, and demographic distribution.
Based on this index, we also propose an infrastructure resource deployment strategy by minimizing the average imbalance index of any geographical segment.
arXiv Detail & Related papers (2021-04-08T17:45:32Z) - Stochastic Multi-Agent-Based Model to Measure Community Resilience-Part
2: Simulation Results [2.6277263675268205]
We investigate the effect of empathy, cooperation, coordination, flexibility, and experience of individuals on their mental well-being.
We use a multi-agent-based numerical framework for estimating the social well-being of a community when facing natural disasters.
The results show that a high level of cooperation can positively change individual behavior.
arXiv Detail & Related papers (2020-04-02T01:56:20Z) - Entropy as a measure of attractiveness and socioeconomic complexity in
Rio de Janeiro metropolitan area [52.77024349608834]
We use a mobile phone dataset and an entropy-based metric to measure the attractiveness of a location.
The results show that the attractiveness of a given location measured by entropy is an important descriptor of the socioeconomic status of the location.
arXiv Detail & Related papers (2020-03-23T15:58:56Z) - Uncertainty Quantification for Deep Context-Aware Mobile Activity
Recognition and Unknown Context Discovery [85.36948722680822]
We develop a context-aware mixture of deep models termed the alpha-beta network.
We improve accuracy and F score by 10% by identifying high-level contexts.
In order to ensure training stability, we have used a clustering-based pre-training in both public and in-house datasets.
arXiv Detail & Related papers (2020-03-03T19:35:34Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.