Bruno Marcos
University of Porto
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Publication
Featured researches published by Bruno Marcos.
Journal of Environmental Management | 2013
Joana R. Vicente; Rui F. Fernandes; Christophe F. Randin; Olivier Broennimann; João Gonçalves; Bruno Marcos; Isabel Pôças; Paulo C. Alves; Antoine Guisan; João Honrado
Species distribution models (SDMs) studies suggest that, without control measures, the distribution of many alien invasive plant species (AIS) will increase under climate and land-use changes. Due to limited resources and large areas colonised by invaders, management and monitoring resources must be prioritised. Choices depend on the conservation value of the invaded areas and can be guided by SDM predictions. Here, we use a hierarchical SDM framework, complemented by connectivity analysis of AIS distributions, to evaluate current and future conflicts between AIS and high conservation value areas. We illustrate the framework with three Australian wattle (Acacia) species and patterns of conservation value in Northern Portugal. Results show that protected areas will likely suffer higher pressure from all three Acacia species under future climatic conditions. Due to this higher predicted conflict in protected areas, management might be prioritised for Acacia dealbata and Acacia melanoxylon. Connectivity of AIS suitable areas inside protected areas is currently lower than across the full study area, but this would change under future environmental conditions. Coupled SDM and connectivity analysis can support resource prioritisation for anticipation and monitoring of AIS impacts. However, further tests of this framework over a wide range of regions and organisms are still required before wide application.
International Journal of Applied Earth Observation and Geoinformation | 2015
Ana Sofia Vaz; Bruno Marcos; João Gonçalves; Antonio T. Monteiro; Paulo Alves; Emilio Civantos; Richard Lucas; Paola Mairota; Javier Garcia-Robles; Joaquim Alonso; Palma Blonda; Angela Lomba; João Honrado
Abstract There is an increasing need of effective monitoring systems for habitat quality assessment. Methods based on remote sensing (RS) features, such as vegetation indices, have been proposed as promising approaches, complementing methods based on categorical data to support decision making. Here, we evaluate the ability of Earth observation (EO) data, based on a new automated, knowledge-driven system, to predict several indicators for oak woodland habitat quality in a Portuguese Natura 2000 site. We collected in-field data on five habitat quality indicators in vegetation plots from woodland habitats of a landscape undergoing agricultural abandonment. Forty-three predictors were calculated, and a multi-model inference framework was applied to evaluate the predictive strength of each data set for the several quality indicators. Three indicators were mainly explained by predictors related to landscape and neighbourhood structure. Overall, competing models based on the products of the automated knowledge-driven system had the best performance to explain quality indicators, compared to models based on manually classified land cover data. The system outputs in terms of both land cover classes and spectral/landscape indices were considered in the study, which highlights the advantages of combining EO data with RS techniques and improved modelling based on sound ecological hypotheses. Our findings strongly suggest that some features of habitat quality, such as structure and habitat composition, can be effectively monitored from EO data combined with in-field campaigns as part of an integrative monitoring framework for habitat status assessment.
International Journal of Geographical Information Science | 2014
Isabel Pôças; João Gonçalves; Bruno Marcos; Joaquim Alonso; Pedro Castro; João Honrado
This article proposes and illustrates a practical methodological framework to evaluate the fitness for use of spatial data sets for environmental and ecological applications, focusing on user requirements for specified application contexts. The methodology is based on the use of metadata to analyze similarity between the data characteristics and the user’s needs or expectations for several quality indicators. Additionally, the concept of ‘critical factors’ is introduced in this framework, allowing users to define which quality indicators have greater importance given their own requirements or expectations and the specified application contexts. The proposed methodology further allows integrating and interconnecting the spatial data quality (SDQ) evaluation methodology with metadata geoportals in WebGIS platforms, facilitating its operation by users from non-spatial disciplines and with often limited expertise on this subject. Examples of the evaluation of fitness for use for specific application contexts within the project BIO_SOS (‘Biodiversity Multi-SOurce Monitoring System: From Space To Species’ FP7 project) are presented. By providing a prompt and straightforward evaluation tool, the proposed methodology can encourage the implementation of SDQ evaluation routines in ecological assessment and monitoring programs, promoting a more adequate use of geospatial data and ultimately contributing to well-supported policy and management decisions.
Biodiversity and Conservation | 2016
João Gonçalves; Paulo Alves; Isabel Pôças; Bruno Marcos; Rita Sousa-Silva; Ângela Lomba; João Honrado
Ongoing declines in biodiversity caused by global environmental changes call for adaptive conservation management, including the assessment of habitat suitability spatiotemporal dynamics potentially affecting species persistence. Remote sensing (RS) provides a wide-range of satellite-based environmental variables that can be fed into species distribution models (SDMs) to investigate species-environment relations and forecast responses to change. We address the spatiotemporal dynamics of species’ habitat suitability at the landscape level by combining multi-temporal RS data with SDMs for analysing inter-annual habitat suitability dynamics. We implemented this framework with a vulnerable plant species (Veronica micrantha), by combining SDMs with a time-series of RS-based metrics of vegetation functioning related to primary productivity, seasonality, phenology and actual evapotranspiration. Besides RS variables, predictors related to landscape structure, soils and wildfires were ranked and combined through multi-model inference (MMI). To assess recent dynamics, a habitat suitability time-series was generated through model hindcasting. MMI highlighted the strong predictive ability of RS variables related to primary productivity and water availability for explaining the test-species distribution, along with soil, wildfire regime and landscape composition. The habitat suitability time-series revealed the effects of short-term land cover changes and inter-annual variability in climatic conditions. Multi-temporal SDMs further improved predictions, benefiting from RS time-series. Overall, results emphasize the integration of landscape attributes related to function, composition and spatial configuration for improving the explanation of ecological patterns. Moreover, coupling SDMs with RS functional metrics may provide early-warnings of future environmental changes potentially impacting habitat suitability. Applications discussed include the improvement of biodiversity monitoring and conservation strategies.
Environmental Impact Assessment Review | 2013
João Honrado; Cristiana Vieira; Claudia Soares; Margarida B. Monteiro; Bruno Marcos; Henrique M. Pereira; Maria Rosário Partidário
Applied Vegetation Science | 2016
João Gonçalves; Renato F. Henriques; Paulo Alves; Rita Sousa-Silva; Antonio T. Monteiro; Ângela Lomba; Bruno Marcos; João Honrado
Diversity | 2017
Antonio T. Monteiro; João Gonçalves; Rui Fernandes; Susana Alves; Bruno Marcos; Richard Lucas; Ana Cláudia Teodoro; João Honrado
ISBN | 2013
Pedro Castro; Joaquim Alonso; Carlos Guerra; João Gonçalves; Isabel Pôças; Bruno Marcos; João Honrado
Remote Sensing | 2018
Cláudia Carvalho-Santos; Antônio Miguel Vieira Monteiro; Salvador Arenas-Castro; Felix Greifeneder; Bruno Marcos; Ana Portela; João Honrado
Ecological Complexity | 2018
Emilio Civantos; Antonio T. Monteiro; João Gonçalves; Bruno Marcos; Paulo C. Alves; João Honrado