13 results on '"Christopher R. Hackney"'
Search Results
2. Social differences in spatial perspectives about local benefits from rehabilitated mangroves: insights from Vietnam
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Rachael H. Carrie, Lindsay C. Stringer, Le Thi Van Hue, Nguyen Hong Quang, Dao Van Tan, Christopher R. Hackney, Pham Thi Thanh Nga, and Claire H. Quinn
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Catharina Schulp ,Adaptive capacity ,ecosystem services ,participatory GIS ,socioecological systems ,reforestation ,Human ecology. Anthropogeography ,GF1-900 ,Environmental sciences ,GE1-350 - Abstract
Change in mangrove extent and condition has potential consequences for social disparity in terms of who can adapt to change in ecosystem services and places perceived important for providing them. Participatory GIS can elicit spatial variation in the importance attached to ecosystem service places, but disaggregated research that can reveal difference over the small spatial extents often covered by mangroves is underdeveloped. Using mixed-methods (quantitative, qualitative and spatial) in a rehabilitated mangrove system in Vietnam, this study assesses if and why perspectives about ecosystem services and their providing places vary among households with different capacities to adapt to mangrove change.Three household groups with different adaptive capacities were characterised using quantitative adaptive capacity indicators, demographic and economic data, and trajectory interviews spanning three decades: accumulating, coping and flexible households Coastal protection was identified as beneficial by all, and sediment, habitat provisioning and food services were also frequently associated with mangroves. Only food was identified significantly more or less by different groups. Spatial hotspots generated for each group by quantifying overlap in places perceived important for providing these four services, revealed greatest difference in locations important for food. Interviews indicated change in the characteristics of mangrove localities and different abilities to adapt to them enabled some households to prosper while others struggled. We consider adaptive capacities that helped temper mangrove change, and who might be most impacted by continuing change. We conclude by identifying ways forward for rehabilitation strategies centred on local people’s differential adaptive capacity and multiple ecosystem service needs.
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- 2022
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3. Mapping 21st Century Global Coastal Land Reclamation
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Dhritiraj Sengupta, Young Rae Choi, Bo Tian, Sally Brown, Michael Meadows, Christopher R. Hackney, Abhishek Banerjee, Yingjie Li, Ruishan Chen, and Yunxuan Zhou
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coasts ,land reclamation ,remote sensing ,sea level rise ,anthropocene ,land use ,Environmental sciences ,GE1-350 ,Ecology ,QH540-549.5 - Abstract
Abstract Increasing population size and economic dependence on the coastal zone, coupled with the growing need for residential, agricultural, industrial, commercial and green space infrastructure, are key drivers of land reclamation. Until now, there has been no comprehensive assessment of the global distribution of land use on reclaimed space at the coast. Here, we analyze Landsat satellite imagery from 2000 to 2020 to quantify the spatial extent, scale, and land use of urban coastal reclamation for 135 cities with populations in excess of 1 million. Findings indicate that 78% (106/135) of these major coastal cities have resorted to reclamation as a source of new ground, contributing a total 253,000 ha of additional land to the Earth's surface in the 21st century, equivalent to an area the size of Luxembourg. Reclamation is especially prominent in East Asia, the Middle East, and Southeast Asia, followed by Western Europe and West Africa. The most common land uses on reclaimed spaces are port extension (>70 cities), followed by residential/commercial (30 cities) and industrial (19 cities). While increased global trade and the rapid urbanization have driven these uses, we argue that a city's prestigious place‐making effort to gain global reputation is emerging as another major driver underlying recent reclamation projects to create tourist and green spaces Meanwhile, the study suggests that 70% of recent reclamation has occurred in areas identified as potentially exposed to extreme sea level rise (SLR) by 2100 and this presents a significant challenge to sustainable development at the coast.
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- 2023
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4. Author Correction: Non-buoyant microplastic settling velocity varies with biofilm growth and ambient water salinity
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Freija Mendrik, Roberto Fernández, Christopher R. Hackney, Catherine Waller, and Daniel R. Parsons
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Geology ,QE1-996.5 ,Environmental sciences ,GE1-350 - Published
- 2023
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5. Recommendations to guide sampling effort for polygon-based participatory mapping used to identify perceived ecosystem services hotspots
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Rachael H. Carrie, Lindsay C. Stringer, Thi Van Hue Le, Nguyen Hong Quang, Christopher R. Hackney, Van Tan Dao, Thi Thanh Nga Pham, and Claire H. Quinn
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Recommendations to guide sampling effort for polygon-based participatory mapping to identify perceived ecosystem services hotspots ,Science - Abstract
Participatory mapping is increasingly used to map spatial variation in people's perceptions about ecosystem services. It has growing use in the identification of locations where places perceived to be important converge. Few recommendations have been published to navigate decisions about sampling effort in participatory mapping research when polygon data is collected, although one recommendation is for ≥ 25 participants assuming each participant maps c. 4–5 polygons per ecosystem service. Underlying data informing this recommendation reflects a particular context: collected using postal questionnaires to map a vast spatial area in southern Australia. Although not intended as definitive or suited to all contexts, the 25 participant (or 100-125 polygon) minimum sometimes informs participatory mapping research. Our empirical work, undertaken using face-to-face questionnaires in a small Vietnamese coastal study area, suggests the recommendation may not be appropriate in all contexts. We propose a modified stepwise approach which: • Prioritises spatial agreement (polygon overlap) rather than polygon count and participant numbers to assess data sufficiency • Uses narratives to triangulate outputs generated from participatory mapping data to reduce uncertainty related to low polygon counts
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- 2022
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6. Act of Hope: A Story of Climate Change and Water Puppetry Performance along the Red River, Vietnam
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Alison Lloyd Williams, Qu?nh Vu, Hu? Lê, Lisa Jones, Thu Th? Võ, Florence Halstead, Katie J. Parsons, Anh T.Q. Nguy?n, Christopher R. Hackney, and Daniel R. Parsons
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This case study explores a collaboration between young people, researchers and artists which captured stories of how people in the Red River Catchment of Northern Vietnam are responding to climate change, and then used the local art of water puppetry to communicate those stories to a wider audience. The performance evoked the interdependence of the human and physical worlds, showing the impacts of climate change but also people's adaptiveness. In this way, the piece highlighted how communities along the Red River are practising how to 'live with hope', as Gallagher describes it (2022), and how others could do so, too.
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- 2024
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7. Multi-Decadal Changes in Mangrove Extent, Age and Species in the Red River Estuaries of Viet Nam
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Nguyen Hong Quang, Claire H. Quinn, Lindsay C. Stringer, Rachael Carrie, Christopher R. Hackney, Le Thi Van Hue, Dao Van Tan, and Pham Thi Thanh Nga
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mangrove development ,mangrove plantation ,machine learning ,mangrove condition ,classification ,remote sensing ,Science - Abstract
This research investigated the performance of four different machine learning supervised image classifiers: artificial neural network (ANN), decision tree (DT), random forest (RF), and support vector machine (SVM) using SPOT-7 and Sentinel-1 images to classify mangrove age and species in 2019 in a Red River estuary, typical of others found in northern Viet Nam. The four classifiers were chosen because they are considered to have high accuracy, however, their use in mangrove age and species classifications has thus far been limited. A time-series of Landsat images from 1975 to 2019 was used to map mangrove extent changes using the unsupervised classification method of iterative self-organizing data analysis technique (ISODATA) and a comparison with accuracy of K-means classification, which found that mangrove extent has increased, despite a fall in the 1980s, indicating the success of mangrove plantation and forest protection efforts by local people in the study area. To evaluate the supervised image classifiers, 183 in situ training plots were assessed, 70% of them were used to train the supervised algorithms, with 30% of them employed to validate the results. In order to improve mangrove species separations, Gram–Schmidt and principal component analysis image fusion techniques were applied to generate better quality images. All supervised and unsupervised (2019) results of mangrove age, species, and extent were mapped and accuracy was evaluated. Confusion matrices were calculated showing that the classified layers agreed with the ground-truth data where most producer and user accuracies were greater than 80%. The overall accuracy and Kappa coefficients (around 0.9) indicated that the image classifications were very good. The test showed that SVM was the most accurate, followed by DT, ANN, and RF in this case study. The changes in mangrove extent identified in this study and the methods tested for using remotely sensed data will be valuable to monitoring and evaluation assessments of mangrove plantation projects.
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- 2020
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8. Monitoring riverine traffic from space: The untapped potential of remote sensing for measuring human footprint on inland waterways
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Magdalena Smigaj, Christopher R. Hackney, Phan Kieu Diem, Van Pham Dang Tri, Nguyen Thi Ngoc, Duong Du Bui, Stephen E. Darby, and Julian Leyland
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Environmental impact ,Environmental Engineering ,PlanetScope ,Laboratory of Geo-information Science and Remote Sensing ,Human waterway footprint ,Environmental Chemistry ,Deep learning ,Laboratorium voor Geo-informatiekunde en Remote Sensing ,Human pressure ,Ship detection ,Pollution ,Waste Management and Disposal - Abstract
Mass urbanisation and intensive agricultural development across river deltas have driven ecosystem degradation, impacting deltaic socio-ecological systems and reducing their resilience to climate change. Assessments of the drivers of these changes have so far been focused on human activity on the subaerial delta plains. However, the fragile nature of deltaic ecosystems and the need for biodiversity conservation on a global scale require more accurate quantification of the footprint of anthropogenic activity across delta waterways. To address this need, we investigated the potential of deep learning and high spatiotemporal resolution satellite imagery to identify river vessels, using the Vietnamese Mekong Delta (VMD) as a focus area. We trained the Faster R-CNN Resnet101 model to detect two classes of objects: (i) vessels and (ii) clusters of vessels, and achieved high detection accuracies for both classes (f-score = 0.84–0.85). The model was subsequently applied to available PlanetScope imagery across 2018–2021; the resultant detections were used to generate monthly, seasonal and annual products mapping the riverine activity, termed here the Human Waterway Footprint (HWF), with which we showed how waterborne activity has increased in the VMD (from approx. 1650 active vessels in 2018 to 2070 in 2021 - a 25 % increase). Whilst HWF values correlated well with population density estimates (R 2 = 0.59–0.61, p < 0.001), many riverine activity hotspots were located away from population centres and varied spatially across the investigated period, highlighting that more detailed information is needed to fully evaluate the extent, and type, of human footprint on waterways. High spatiotemporal resolution satellite imagery in combination with deep learning methods offers great promise for such monitoring, which can subsequently enable local and regional assessment of environmental impacts of anthropogenic activities on delta ecosystems around the globe.
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- 2022
9. Comparisons of regression and machine learning methods for estimating mangrove above-ground biomass using multiple remote sensing data in the red River Estuaries of Vietnam
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Nguyen Hong Quang, Claire H. Quinn, Rachael Carrie, Lindsay C. Stringer, Le Thi Van Hue, Christopher R. Hackney, and Dao Van Tan
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Geography, Planning and Development ,Computers in Earth Sciences - Abstract
Currently, remote sensing platforms provide state-of-the-art data for multiple purposes including applications related to coastal wetlands. Mangrove above-ground biomass (MAGB) together with its extent is considered well correlated with the habitats’ environmental and economic values. Above-ground biomass can be estimated by models that integrate remote sensing, field data and statistical information. However, it remains difficult to decide which model and which data offer the best performance for any one study location. Hence, this study aims to assess the spatial change in MAGB over a 45-year period and investigate different approaches to quantify this change through linear and multi linear regression models. Specifically, we test a non-linear model (Multivariate Adaptive Regression Splines; MARS), and non-parametric machine learning models, to predict MAGB using vegetation indices and biophysical variables derived from optical remote sensing data from Sentinel-2, Landsat-8, SPOT-7 and synthetic aperture radar remote sensing data from ALOS-2. The multi linear regression (MLR) and the MARS models were trained by field measured MAGB data to a good level of accuracy (R2 = 0.80 and RMSE = 5.56 Mg ha−1 for MLR and R2 = 0.89, RMSE = 5.42 Mg ha−1 for MARS). These models were subsequently applied to Landsat 2, 5 and 8 time-series images to assess changes in MAGB values and mangrove forest extent over the period 1975 to 2020. To ensure accurate training data for the models, we conducted field work to measure MAGB in 24 plots measured in May 2019. Findings showed that the MARS model generated MAGB values with higher accuracy than linear regression and multi linear regression models. Uses of vegetation indices (Normalized Differenced Vegetation Index, Soil-adjusted Vegetation Index, Green-Normalized Differenced Vegetation Index, Simple Ratio, and Red-edge Simple Ratio) generated MAGB values with accuracy slightly higher than using biophysical variables (Leaf area index, Fraction of Absorbed Radiation, Fractional vegetation cover, and Leaf chlorophyll content). Sentinel-2 and Landsat 8 were effective data sources for MAGB estimates, while SPOT-7 and ALOS-2 produced acceptable MAGB accuracy. Modelling the Landsat time series found an increase in both MAGB values and forest extent over the 1975–2020 period. The MARS model, Sentinel-2, Landsat 8 and vegetation indices are the recommended models and data to use to measure MAGB and could be used to understand changes in MAGB and forest extent at national and regional scales.
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- 2022
10. Insidious Retreat of the Holderness Coastline: Capturing Spatial and Temporal Patterns of Failure using Terrestrial Laser Scanning (TLS)
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Serena L Teasdale, Christopher R Hackney, David J Milan, Georgina L Bennett, and Daniel R Parsons
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The Holderness coastline of Eastern England is the fastest eroding coastline in Europe. The coast is characterised by ‘soft sediment’ tills, which make it distinctly susceptible to cliff retreat, in turn, these pose a socio-economic threat to local communities. The controls and future projections of the rates and patterns of retreat rely upon robust monitoring and process-based understanding of the geomorphological processes. Herein, we report on a 12-month monitoring study (June 2019 to May 2020) along a 220 m stretch of the Holderness coastline (Withernsea), whereby the spatial and temporal patterns of failure were captured using terrestrial LiDAR. Failure footprint, volumetric change and total eroded volume of the cliffs were estimated and compared against local hydrodynamic and meteorological records. The results reveal that >36% of individual failure events occurred solely in the upper portions (upper 75% vertical height) of the cliff, with a further >38% over the central section of the cliff face, with
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- 2022
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11. 2020 Vision: Using transdisciplinary approaches in understanding climate (in)action through youth led participation in mitigating hydrological extremes
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Katie J. Parsons, Lisa Jones, Florence Halstead, Hue Le, Thu Thi Vo, Christopher R. Hackney, and Daniel R. Parsons
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We are the midst of a climate emergency requiring urgent climate action that is, as yet, unforthcoming both on the scale, and at the speed, commensurate with the associated hazard and risk. This paper presents work that considers this current state of inaction and explores how we might understand the underpinning processes of attitudinal and behavioural change needed through the emotional framework of loss.This inaction is also explored through the additional lens of the year 2020, a year of tumultuous social change created by the COVID–19 pandemic. The article draws parallels with and looks to learn from the ways in which the collective loss experienced as a result of COVID–19 may offer a sense of hope in the fight to adequately address climate change but how meeting the Sustainable Development Goals will require climate injustices to also be addressed. We argue that appropriate leadership that guides widespread climate action from all is best sought from those groups already facing the loss of climate change and therefore already engaged in climate-related social action and activism, including youth and Indigenous peoples.In this regard we present work from an ongoing project based within the Red River catchment (Vietnam), which is already experiencing enhanced hydrological extremes. Resultant floods, landslides and soil erosion in the upper region is having impacts in communities, whilst relative sea-level rises in the region are affecting the frequency and magnitude of flooding. Our research is working with young people and their communities, alongside social and environmental scientists in partnership, to identify imaginative ways to mitigate these climate change challenges and foster action. The paper will outline how this youth-led approach explores how local, traditional, and indigenous knowledges can develop understandings and strengthen local and societal resilience, incorporating peer-to-peer, intergenerational and cross-/inter-cultural forms of collaborative, and socially just, learning.
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- 2022
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12. Learning from natural sediments to tackle microplastics challenges: a multidisciplinary perspective
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Kryss Waldschläger, Muriel Z.M. Brückner, Bethanie Carney Almroth, Christopher R. Hackney, Tanveer Mehedi Adyel, Olubukola S. Alimi, Sara Lynn Belontz, Win Cowger, Darragh Doyle, Andrew Gray, Ian Kane, Merel Kooi, Matthias Kramer, Simone Lechthaler, Laura Michie, Tor Nordam, Florian Pohl, Catherine Russell, Amalie Thit, Wajid Umar, Daniel Valero, Arianna Varrani, Anish Kumar Warrier, Lucy C. Woodall, Nan Wu, Waldschläger, Kryss, Brückner, Muriel Z M, Carney Almroth, Bethanie, Hackney, Christopher R, Adyel, Tanveer Mehedi, Alimi, Olubukola S, Belontz, Sara Lynn, Cowger, Win, Kane, Ian, Kramer, Matthias, Lechthaler, Simone, Michie, Laura, Pohl, Florian, Russell, Catherine, Woodall, Lucy C, and Wu, Nan
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Aquatic Ecology and Water Quality Management ,microplastics ,Microplastics ,Comparison ,Distribution ,Microparticles ,Hydrology and Quantitative Water Management ,Ecotoxicology ,sediment transport ,ecotoxicology ,Transport modelling ,plastic pollution ,Rivers ,Aquatic pollution ,ddc:550 ,distribution ,microparticles ,transport modelling ,Sediment analogy ,Fate ,Sediment transport ,Aquatische Ecologie en Waterkwaliteitsbeheer ,rivers ,aquatic pollution ,comparison ,fate ,Plastic pollution ,General Earth and Planetary Sciences ,sediment analogy ,Hydrologie en Kwantitatief Waterbeheer - Abstract
Earth science reviews 228, 104021 (2022). doi:10.1016/j.earscirev.2022.104021, Published by Elsevier, Amsterdam [u.a.]
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- 2022
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13. Hydrological/Hydraulic Modeling-Based Thresholding of Multi SAR Remote Sensing Data for Flood Monitoring in Regions of the Vietnamese Lower Mekong River Basin
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Nguyen Hong Quang, Vu Anh Tuan, Le Thi Thu Hang, Nguyen Manh Hung, Doan Thi The, Dinh Thi Dieu, Ngo Duc Anh, and Christopher R. Hackney
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Synthetic aperture radar ,lcsh:Hydraulic engineering ,010504 meteorology & atmospheric sciences ,Hydraulic engineering ,Geography, Planning and Development ,0207 environmental engineering ,vietnam lower mekong basin ,02 engineering and technology ,Aquatic Science ,01 natural sciences ,Biochemistry ,polarization effects ,lcsh:Water supply for domestic and industrial purposes ,lcsh:TC1-978 ,020701 environmental engineering ,0105 earth and related environmental sciences ,Water Science and Technology ,Remote sensing ,lcsh:TD201-500 ,Flood myth ,Flooding (psychology) ,Water extraction ,Thresholding ,flood mapping ,hydrological/hydraulic-based thresholding ,Remote sensing (archaeology) ,Environmental science ,local incidence angle assessment ,Surface water - Abstract
Synthetic Aperture Radar (SAR) remote sensing data can be used as an effective alternative to detect surface water and provide useful information regarding operational flood monitoring, in particular for the improvement of rapid flood assessments. However, this application frequently requires standard and simple, yet robust, algorithms. Although thresholding approaches meet these requirements, limitations such as data inequality over large spatial regions and challenges in estimating optimal threshold values remain. Here, we propose a new method for SAR water extraction named Hammock Swing Thresholding (HST). We applied this HST approach to four SAR remote sensing datasets, namely, Sentinel-1, ALOS-2, TerraSAR-X, and RadarSAT-2 for flood inundation mapping for a case study focusing on the Tam Nong district in the Vietnam Mekong delta. A 2D calibrated Hydrologic Engineering Centers River Analysis System (HEC-RAS) model was coupled with the HST outputs in order to estimate the optimal thresholds (OTs) where the SAR-based water masks fitted best with HEC-RAS&rsquo, s inundation patterns. Our results showed that water levels extracted from Sentinel-1 data best agreed with the HEC-RAS water extent (88.3%), following by ALOS-2 (85.9%), TerraSAR-X (77.2%). and RadarSAT-2 (72%) at OTs of &minus, 15, 68, 21, and 35 decibel (dB), respectively. Generated flood maps indicated changes in the flood extent of the flooding seasons from 2010 and 2014&ndash, 2016 with variations in spatial extent appearing greater in the TerraSAR-X and RadarSAT-2 higher resolution maps. We recommend the use of OTs in applications of flood monitoring using SAR remote sensing data, such as for an open data cube (ODC).
- Published
- 2019
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