13 results on '"SHI Peijun"'
Search Results
2. A Heterogeneous Sampling Strategy to Model Earthquake-Triggered Landslides.
- Author
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Yang, Hui, Shi, Peijun, Quincey, Duncan, Qi, Wenwen, and Yang, Wentao
- Subjects
LANDSLIDES ,LANDSLIDE hazard analysis ,LANDSLIDE prediction ,RANDOM forest algorithms ,RISK assessment - Abstract
Regional modeling of landslide hazards is an essential tool for the assessment and management of risk in mountain environments. Previous studies that have focused on modeling earthquake-triggered landslides report high prediction accuracies. However, it is common to use a validation strategy with an equal number of landslide and non-landslide samples, scattered homogeneously across the study area. Consequently, there are overestimations in the epicenter area, and the spatial pattern of modeled locations does not agree well with real events. In order to improve landslide hazard mapping, we proposed a spatially heterogeneous non-landslide sampling strategy by considering local ratios of landslide to non-landslide area. Coseismic landslides triggered by the 2008 Wenchuan Earthquake on the eastern Tibetan Plateau were used as an example. To assess the performance of the new strategy, we trained two random forest models that shared the same hyperparameters. The first was trained using samples from the new heterogeneous strategy, and the second used the traditional approach. In each case the spatial match between modeled and measured (interpreted) landslides was examined by scatterplot, with a 2 km-by-2 km fishnet. Although the traditional approach achieved higher AUC
ROC (0.95) accuracy than the proposed one (0.85), the coefficient of determination (R2 ) for the new strategy (0.88) was much higher than for the traditional strategy (0.55). Our results indicate that the proposed strategy outperforms the traditional one when comparing against landslide inventory data. Our work demonstrates that higher prediction accuracies in landslide hazard modeling may be deceptive, and validation of the modeled spatial pattern should be prioritized. The proposed method may also be used to improve the mapping of precipitation-induced landslides. Application of the proposed strategy could benefit precise assessment of landslide risks in mountain environments. [ABSTRACT FROM AUTHOR]- Published
- 2023
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3. Event-based probabilistic risk assessment of livestock snow disasters in the Qinghai–Tibetan Plateau.
- Author
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Ye, Tao, Liu, Weihang, Wu, Jidong, Li, Yijia, Shi, Peijun, and Zhang, Qiang
- Subjects
RISK assessment ,SNOW ,LIVESTOCK ,PLATEAUS ,REGRESSION trees ,SHRUBLANDS - Abstract
Understanding risk using quantitative risk assessment offers critical information for risk-informed reduction actions, investing in building resilience, and planning for adaptation. This study develops an event-based probabilistic risk assessment (PRA) model for livestock snow disasters in the Qinghai–Tibetan Plateau (QTP) region and derives risk assessment results based on historical climate conditions (1980–2015) and present-day prevention capacity. In the model, a hazard module was developed to identify and simulate individual snow disaster events based on boosted regression trees. By combining a fitted quantitative vulnerability function and exposure derived from vegetation type and grassland carrying capacity, we estimated risk metrics based on livestock mortality and mortality rate. In our results, high-risk regions include the Nyainqêntanglha Range, Tanggula Range, Bayankhar Mountains and the region between the Kailas Range and the neighbouring Himalayas. In these regions, annual livestock mortality rates were estimated as >2 % and mortality was estimated as >2 sheep unit km -1 at a return period of 20 years. Prefectures identified with extremely high risk include Guoluo in Qinghai Province and Naqu, and Shigatse in the Tibet Autonomous Region. In these prefectures, a snow disaster event with a return period of 20 years or higher can easily claim total losses of more than 500 000 sheep units. Our event-based PRA results provide a quantitative reference for preparedness and insurance solutions in reducing mortality risk. The methodology developed here can be further adapted to future climate change risk analyses and provide important information for planning climate change adaption in the QTP region. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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4. Development of an Asset Value Map for Disaster Risk Assessment in China by Spatial Disaggregation Using Ancillary Remote Sensing Data.
- Author
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Wu, Jidong, Li, Ying, Li, Ning, and Shi, Peijun
- Subjects
EMERGENCY management ,RISK assessment ,REMOTE sensing ,NATURAL disasters ,ECONOMIC impact ,SPATIAL data infrastructures ,GEOGRAPHIC information systems ,WATERSHEDS - Abstract
The extent of economic losses due to a natural hazard and disaster depends largely on the spatial distribution of asset values in relation to the hazard intensity distribution within the affected area. Given that statistical data on asset value are collected by administrative units in China, generating spatially explicit asset exposure maps remains a key challenge for rapid postdisaster economic loss assessment. The goal of this study is to introduce a top-down (or downscaling) approach to disaggregate administrative-unit level asset value to grid-cell level. To do so, finding the highly correlated 'surrogate' indicators is the key. A combination of three data sets-nighttime light grid, LandScan population grid, and road density grid, is used as ancillary asset density distribution information for spatializing the asset value. As a result, a high spatial resolution asset value map of China for 2015 is generated. The spatial data set contains aggregated economic value at risk at 30 arc-second spatial resolution. Accuracy of the spatial disaggregation reflects redistribution errors introduced by the disaggregation process as well as errors from the original ancillary data sets. The overall accuracy of the results proves to be promising. The example of using the developed disaggregated asset value map in exposure assessment of watersheds demonstrates that the data set offers immense analytical flexibility for overlay analysis according to the hazard extent. This product will help current efforts to analyze spatial characteristics of exposure and to uncover the contributions of both physical and social drivers of natural hazard and disaster across space and time. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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5. Towards Quantitatively Understanding the Complexity of Social-Ecological Systems-From Connection to Consilience.
- Author
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Hu, Xiao-Bing, Shi, Peijun, Wang, Ming, Ye, Tao, Leeson, Mark, Leeuw, Sander, Wu, Jianguo, Renn, Ortwin, and Jaeger, Carlo
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SOCIAL systems ,ECOSYSTEMS ,COEVOLUTION ,HAZARD mitigation ,RISK assessment - Abstract
The complexity of social-ecological systems (SES) is rooted in the outcomes of node activities connected by network topology. Thus far, in network dynamics research, the connectivity degree (CND), indicating how many nodes are connected to a given node, has been the dominant concept. However, connectivity focuses only on network topology, neglecting the crucial relation to node activities, and thereby leaving system outcomes largely unexplained. Inspired by the phenomenon of 'consensus of wills and coordination of activities' often observed in disaster risk management, we propose a new concept of network characteristic, the consilience degree (CSD), aiming to measure the way in which network topology and node activities together contribute to system outcomes. The CSD captures the fact that nodes may assume different states that make their activities more or less compatible. Connecting two nodes with in/compatible states will lead to outcomes that are un/desirable from the perspective of the SES in question. We mathematically prove that the CSD is a generalized CND, and the CND is a special case of CSD. As a general, fundamental concept, the CSD can facilitate the development of a new framework of network properties, models, and theories that allows us to understand patterns of network behavior that cannot be explained in terms of connectivity alone. We further demonstrate that a co-evolutionary mechanism can naturally improve the CSD. Given the generality of co-evolution in SES, we argue that the CSD is an inherent attribute rather than an artificial concept, which underpins the fundamental importance of the CSD to the study of SES. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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6. Fuzzy risk and calculation
- Author
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Huang Chong-fu and Shi Peijun
- Subjects
Distribution (number theory) ,business.industry ,Fuzzy set ,computer.software_genre ,Fuzzy number ,Data mining ,Risk assessment ,business ,computer ,Value (mathematics) ,Risk management ,Possibility theory ,Mathematics ,Fuzzy risk - Abstract
Reviewing some concepts of fuzzy risk, we give a new definition of fuzzy risk. To improve probability-risk analysis, we propose the concept of possibility-probability distribution. Fuzzy sets are employed to show the imprecision of probability estimation. We use the information distribution method to calculate a possibility-probability distribution instead of expert experience. With a flood example, we show how to calculate a fuzzy risk, where the probability of exceeding losses is not one value but a fuzzy number. The benefit of this result is that one can easily understand the imprecision of risk assessment of natural disasters when data is lacking.
- Published
- 2003
7. Performance of detrending models of crop yield risk assessment: evaluation on real and hypothetical yield data.
- Author
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Ye, Tao, Nie, Jianliang, Wang, Jun, Shi, Peijun, and Wang, Zhu
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TIME series analysis ,RISK assessment ,CROP yields ,CROP insurance ,BOX-Jenkins forecasting - Abstract
Detrending is a widely used technique for obtaining stationary time series data in residual analysis and risk assessment. The technique is frequently applied in crop yield risk assessment and insurance ratings. Although several trend models have been proposed in the literature, whether these models achieve consistent detrending results and successfully extract the true yield trends is rarely discussed. In the present article, crop insurance pricing is evaluated by different trend models using real and historical yield data, and hypothetical yield data generated by Monte Carlo simulations. Applied to real historical data, the linear, loglinear, autoregressive integrated moving average trend models produce different risk assessment results. The differences among the model outputs are statistically significant. The largest deviation in the county crop assessment reaches 6-8 %, substantially larger than the present countrywide gross premium rate of 5-7 %. In performance tests on simulated yield trends, popular detrending methods based on smoothing techniques proved overall superior to linear, loglinear, and integrated autoregression models. The best performances were yielded by the moving average and robust locally weighted regression models. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
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8. Quantitative multi-hazard risk assessment with vulnerability surface and hazard joint return period.
- Author
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Ming, Xiaodong, Xu, Wei, Li, Ying, Du, Juan, Liu, Baoyin, and Shi, Peijun
- Subjects
RISK assessment ,EMERGENCY management ,HAZARDS ,WINDS ,FLOODS - Abstract
Risk assessment plays an important role in disaster risk management. Existing multi-hazard risk assessment models are often qualitative or semi-quantitative in nature and used for comparative study of regional risk levels. They cannot estimate directly probability of disaster losses from the joint impact of several hazards. In this paper, a quantitative approach of multi-hazard risk assessment based on vulnerability surface and joint return period of hazards is put forward to assess the risk of crop losses in the Yangtze River Delta region of China. The impact of strong wind and flood, the two most prominent agricultural hazards in the area, is analyzed. The multi-hazard risk assessment process consists of three steps. First, a vulnerability surface, which denotes the functional relationship between the intensity of the hazards and disaster losses, was built using the crop losses data for losses caused by strong wind and flood in the recent 30 years. Second, the joint probability distribution of strong wind and flood was established using the copula functions. Finally, risk curves that show the probability of crop losses in this multi-hazard context at four case study sites were calculated according to the joint return period of hazards and the vulnerability surface. The risk assessment result of crop losses provides a useful reference for governments and insurance companies to formulate agricultural development plans and analyze the market of agricultural insurance. The multi-hazard risk assessment method developed in this paper can also be used to quantitatively assess multi-hazard risk in other regions. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
9. Local Spatial and Temporal Factors Influencing Population and Societal Vulnerability to Natural Disasters.
- Author
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Zhou, Yang, Li, Ning, Wu, Wenxiang, Wu, Jidong, and Shi, Peijun
- Subjects
PSYCHOLOGICAL vulnerability ,NATURAL disasters ,RISK assessment ,SOCIAL conditions in China ,DATA analysis ,SOCIOECONOMICS - Abstract
The identification of societal vulnerable counties and regions and the factors contributing to social vulnerability are crucial for effective disaster risk management. Significant advances have been made in the study of social vulnerability over the past two decades, but we still know little regarding China's societal vulnerability profiles, especially at the county level. This study investigates the county-level spatial and temporal patterns in social vulnerability in China from 1980 to 2010. Based on China's four most recent population censuses of 2,361 counties and their corresponding socioeconomic data, a social vulnerability index for each county was created using factor analysis. Exploratory spatial data analysis, including global and local autocorrelations, was applied to reveal the spatial patterns of county-level social vulnerability. The results demonstrate that the dynamic characteristics of China's county-level social vulnerability are notably distinct, and the dominant contributors to societal vulnerability for all of the years studied were rural character, development (urbanization), and economic status. The spatial clustering patterns of social vulnerability to natural disasters in China exhibited a gathering-scattering-gathering pattern over time. Further investigations indicate that many counties in the eastern coastal area of China are experiencing a detectable increase in social vulnerability, whereas the societal vulnerability of many counties in the western and northern areas of China has significantly decreased over the past three decades. These findings will provide policymakers with a sound scientific basis for disaster prevention and mitigation decisions. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
10. Maize drought disaster risk assessment of China based on EPIC model.
- Author
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Jia, Huicong, Wang, Jingai, Cao, Chunxiang, Pan, Donghua, and Shi, Peijun
- Subjects
DROUGHTS ,CORN ,ENVIRONMENTAL risk assessment ,ECOLOGICAL models ,GEOGRAPHIC information systems - Abstract
Digital Agriculture is one of the important applications of Digital Earth. As the global climate changes and food security becomes an increasingly important issue, agriculture drought comes to the focus of attention. China is a typical monsoon climate country as well as an agricultural country with the world's largest population. The East Asian monsoon has had a tremendous impact upon agricultural production. Therefore, a maize drought disaster risk assessment, in line with the requirements of sustainable development of agriculture, is important for ensuring drought disaster reduction and food security. Meteorology, soil, land use, and agro-meteorological observation information of the research area were collected, and based on the concept framework of ‘hazard-inducing factors assessment (hazard)-vulnerability assessment of hazard-affected body (vulnerability curve)-risk assessment (risk),’ importing crop model EPIC (Erosion-Productivity Impact Calculator), using crop model simulation and digital mapping techniques, quantitative assessment of spatio-temporal distribution of maize drought in China was done. The results showed that: in terms of 2, 5, 10, and 20 year return periods, the overall maize drought risk decreased gradually from northwest to southeast in the maize planting areas. With the 20 year return period, high risk value regions (drought loss rate ≥0.5) concentrate in the irrigated maize region of Northwest china, ecotone between agriculture and animal husbandry in Northern China, Hetao Irrigation Area, and north-central area of North China Plain, accounting for 6.41% of the total maize area. These results can provide a scientific basis for the government's decision-making in risk management and drought disaster prevention in China. [ABSTRACT FROM AUTHOR]
- Published
- 2012
- Full Text
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11. Typhoon Disasters in China
- Author
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Fang, Weihua, Zhong, Xingchun, Shi, Xianwu, Jaeger, Carlo, Series editor, and Shi, Peijun, Series editor
- Published
- 2016
- Full Text
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12. How earthquake-induced direct economic losses change with earthquake magnitude, asset value, residential building structural type and physical environment: An elasticity perspective.
- Author
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Wu, Jidong, He, Xin, Li, Ying, Shi, Peijun, Ye, Tao, and Li, Ning
- Subjects
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CLIMATE change , *EARTHQUAKE hazard analysis , *DWELLING design & construction , *MERTON Model , *ELASTICITY - Abstract
Abstract Diagnosing all components of risk is essential in earthquake loss attribution science, but quantitative estimates on how sensitive the earthquake-induced direct economic losses (DELs) are to changes in hazard, exposure and vulnerability is rarely known. Here the relationship between earthquake DELs and earthquake magnitude (Ms), asset value exposure (K), proportion of non-steel-concrete residential buildings (H) and physical environment instability (E) is quantified using the concept of economic elasticity. Earthquake disaster event-based DEL records over the period from 1990 to 2016 for the mainland of China are fitted to a regression model. Elasticity values for Ms , K , H and E are 7.63, 0.75, 4.92 and 0.91, respectively, indicating that on average, DEL changes are more sensitive to changes in Ms and H —a 13% increase in Ms or a 20% increase in H would double earthquake DELs, while it may take a 133% increase in K or a 110% increase in E to cause the same economic losses. In turn, this suggests that human factors—decreasing H and K —could be efficient ways to reduce earthquake risk, while these two factors will become increasingly relevant for risk assessment in the future with continued economic growth. The elasticity estimate results could be used for studying future change in earthquake risks and for supporting disaster risk reduction strategies. Graphical abstract Image Highlights • Earthquake loss attribution is performed considering three components of risk. • Elasticity value is used to compare loss relationships at earthquake event level. • Physical environment is an important factor amplifying direct economic losses. • A 13% increase in earthquake magnitude would double direct economic losses. • A 133% increase in asset value exposure would double direct economic losses. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
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13. Coastal flood risks in China through the 21st century – An application of DIVA.
- Author
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Fang, Jiayi, Lincke, Daniel, Brown, Sally, Nicholls, Robert J., Wolff, Claudia, Merkens, Jan-Ludolf, Hinkel, Jochen, Vafeidis, Athanasios T., Shi, Peijun, and Liu, Min
- Abstract
• A refined coastal database of China is developed under DIVA framework. • Potential damage and adaptation costs of coastal flooding in China is quantified. • Maintaining constant protection reduces impacts by about one order of magnitude. • Dike costs are two orders of magnitude smaller than flood costs across all scenarios. • SLR is important to China with high potential impacts and adaptation needs. China experiences frequent coastal flooding, with nearly US$ 77 billion of direct economic losses and over 7,000 fatalities reported from 1989 to 2014. Flood damages are likely to grow due to climate change induced sea-level rise and increasing exposure if no further adaptation measures are taken. This paper quantifies potential damage and adaptation costs of coastal flooding in China over the 21st Century, including the effects of sea-level rise. It develops and utilises a new, detailed coastal database of China developed within the Dynamic Interactive Vulnerability Assessment (DIVA) model framework. The refined database provides a more realistic spatial representation of coasts, with more than 2700 coastal segments, covering 28,966 km of coastline. Over 50% of China's coast is artificial, representing defended coast and/or claimed land. Coastal flood damage and adaptation costs for China are assessed for different Representative Concentration Pathway (RCP) and Shared Socio-economic Pathways (SSP) combinations representing climate change and socio-economic change and two adaptation strategies: no upgrade of currently existing defences and maintaining current protection levels. By 2100, 0.7–20.0 million people may be flooded/yr and US$ 67–3,308 billion damages/yr are projected without upgrade to defences. In contrast, maintaining the current protection level would reduce those numbers to 0.2–0.4 million people flooded/yr and US$ 22–60 billion/yr flood costs by 2100, with protection investment costs of US$ 8–17 billion/yr. In 2100, maintaining current protection levels, dikes costs are two orders of magnitude smaller than flood costs across all scenarios, even without accounting for indirect damages. This research improves on earlier national assessments of China by generating a wider range of projections, based on improved datasets. The information delivered in this study will help governments, policy-makers, insurance companies and local communities in China understand risks and design appropriate strategies to adapt to increasing coastal flood risk in an uncertain world. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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