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Publications

2022

Sustainability Prize 1 Green Endoscopy to reduce CO2e generated by endoscopic waste - the GECO(2e) interventional study

Authors
Neves, JAC; Roseira, J; Queiros, P; de Sousa, HT; Pellino, G; Cunha, M;

Publication
BRITISH JOURNAL OF SURGERY

Abstract
Abstract Aims Endoscopy is healthcare's third-largest waste-generating procedure. This study aimed to measure a single unit's waste carbon footprint and to perform a pioneer evaluation applying the principles of green endoscopy towards a more sustainable unit. Methods This was a 3-stage, prospective study. Stage 1: 4-week observational audit, during which daily endoscopic waste (landfill, biohazard) was weighed. Stage 2: 1-week intervention with presentation of retrieved data and education of the team towards waste handling. Recycling bins were placed in endoscopy rooms, and landfill and biohazard bins were relocated. Stage 3: 4-week post-interventional period, during which daily endoscopic waste was weighed. An engineer-calibrated scale was used. Equivalence of 1kg of landfill waste to 1kg carbon dioxide equivalent (CO2e) and 1kg of biohazard waste to 3kgCO2e was applied. Paired samples T-tests were used for comparisons before and after the intervention. The opinion of the staff was collected. Results Total waste and biohazard waste were diminished by 12.2% (p=0.166) and 41.4% (p=0.010), respectively, whereas landfill waste (p=0.059) and recycling waste increased (paper: p=0.001; plastic: p=0.007). In terms of CO2e, a total decrease of 31.6% (138.8kgCO2e) was found (mean kgCO2e 109.7 vs 74.9, pre- vs post-intervention, p=0.018). Mean endoscopy load was similar (46.2 vs 44.5, p=0.275). The endoscopy unit may achieve an estimated annual reduction of 1665.6kgCO2e. The personnel agreed “the project did not disturb daily work”. Conclusions In this interventional study applying green endoscopy principles to a real-world scenario, biohazard waste reduction and daily recycling were achieved, without compromising endoscopy productivity.

2022

Machine Learning-Based Approaches for Predicting SPAD Values of Maize Using Multi-Spectral Images

Authors
Guo, YH; Chen, SZ; Li, XX; Cunha, M; Jayavelu, S; Cammarano, D; Fu, YS;

Publication
REMOTE SENSING

Abstract
Precisely monitoring the growth condition and nutritional status of maize is crucial for optimizing agronomic management and improving agricultural production. Multi-spectral sensors are widely applied in ecological and agricultural domains. However, the images collected under varying weather conditions on multiple days show a lack of data consistency. In this study, the Mini MCA 6 Camera from UAV platform was used to collect images covering different growth stages of maize. The empirical line calibration method was applied to establish generic equations for radiometric calibration. The coefficient of determination (R-2) of the reflectance from calibrated images and ASD Handheld-2 ranged from 0.964 to 0.988 (calibration), and from 0.874 to 0.927 (validation), respectively. Similarly, the root mean square errors (RMSE) were 0.110, 0.089, and 0.102% for validation using data of 5 August, 21 September, and both days in 2019, respectively. The soil and plant analyzer development (SPAD) values were measured and applied to build the linear regression relationships with spectral and textural indices of different growth stages. The Stepwise regression model (SRM) was applied to identify the optimal combination of spectral and textural indices for estimating SPAD values. The support vector machine (SVM) and random forest (RF) models were independently applied for estimating SPAD values based on the optimal combinations. SVM performed better than RF in estimating SPAD values with R-2 (0.81) and RMSE (0.14), respectively. This study contributed to the retrieval of SPAD values based on both spectral and textural indices extracted from multi-spectral images using machine learning methods.

2022

ProtoAtlantic: Innovation in the Marine Environment in the Atlantic Area Region

Authors
Lima, AP; Hernandez, HM; Giannoumis, J; O'Suilleabhain, D; OReilly, A; Heward, M; Presse, P; Santana, M; Falcon, JG; Silva, E;

Publication
OCEANS 2022

Abstract
Blue Growth, a term first coined by the European Commission as an initiative to harness the untapped potential of Europe's oceans, seas and coasts, identified rich marine resources as an unique asset for economic development in coastal regions and on islands. The European Commission has through the Blue Growth objectives for the first time highlighted marine sectors as unique market opportunities with high growth potential which carry socio-economic importance to the development of coastal regions. Particularly marine sectors such as aquaculture, marine robotics, and marine renewable energy which fulfil global needs in food safety and security, enable monitoring and exploration in harsh and remote conditions, and globally growing energy needs were recognized as catalysts to achieve sustainable development. Marine start-ups and small and medium-sized enterprises (SME) were identified as potential drivers in emerging marine sectors. However, they require support mechanisms tailored to their needs as they are competing for the same business and financial support as land-based SMEs, yet the research and development infrastructure is more difficult to access. ProtoAtlantic, an Interreg Atlantic Area funded project, provided marine-specific support mechanisms to marine start-ups and SMEs in emerging sectors, including business support through the accelerator and mentorship programs, enabling companies to fast track their product development through access to prototyping and testing facilities in all partner regions. The Interreg Atlantic Area encompasses partner regions in France, Ireland, Portugal, Scotland, and Spain. The consortium partners consist of Technopole Brest Iroise (Brest, France), University College Cork - UCC (Cork, Ireland), County Council Cork (Cork, Ireland), INESC TEC (Porto, Portugal), the European Marine Energy Centre - EMEC (Orkney, Scotland), EMERGE (Canary Islands, Spain), and the lead partner, Innovalia Association (Canary Islands, Spain). The strategic collaboration between the partners provided marine start-ups access to testing facilities in the Atlantic Ocean. The extreme living laboratories provided by EMEC, the LiR National Ocean Testing Facilities at UCC's Centre of Marine and Renewable Energy (MaREI centre), and INESC TEC promise harsh real-life conditions which test the suitability of marine technologies to the limit thereby providing start-ups and SMEs with an extra layer of confidence in developing their technologies. This cross-regional collaboration puts the ProtoAltantic program in a unique position, as it is the first of its kind to dedicate marine-specific support to marine start-ups and SMEs which have benefited from the opportunities that ProtoAtlantic has provided. ProtoAtlantic developed a holistic model for the prototyping and exploitation of innovative ideas in emerging maritime sectors. After the identification of ideas from the research community, start-ups, and SMEs with product innovation capacity in the maritime sector, an acceleration program with a normed and structured process was implemented, thus creating a unique ecosystem in the Atlantic that is addressing a co-creation paradigm with the local European start-ups communities and all the stakeholders.

2022

Demand Response Impact Evaluation: A Review of Methods for Estimating the Customer Baseline Load

Authors
Valentini, O; Andreadou, N; Bertoldi, P; Lucas, A; Saviuc, I; Kotsakis, E;

Publication
ENERGIES

Abstract
Climate neutrality is one of the greatest challenges of our century, and a decarbonised energy system is a key step towards this goal. To this end, the electricity system is expected to become more interconnected, digitalised, and flexible by engaging consumers both through microgeneration and through demand side flexibility. A successful use of these flexibility tools depends widely on the evaluation of their effects, hence the definition of methods to assess and evaluate them is essential for their implementation. In order to enable a reliable assessment of the benefits from participating in demand response, it is necessary to define a reference value (baseline) to allow for a fair comparison. Different methodologies have been investigated, developed, and adopted for estimating the customer baseline load. The article presents a structured overview of methods for the estimating the customer baseline load, based on a review of academic literature, existing standardisation efforts, and lessons from use cases. In particular, the article describes and focuses on the different baseline methods applied in some European H2020 projects, showing the results achieved in terms of measurement accuracy and costs in real test cases. The most suitable methodology choice among the several available depends on many factors. Some of them can be the function of the Demand Response (DR) service in the system, the broader regulatory framework for DR participation in wholesale markets, or the DR providers characteristics, and this list is not exclusive. The evaluation shows that the baseline methodology choice presents a trade-off among complexity, accuracy, and cost.

2022

Advanced Clearing Model in Prosumer Centric Local Flexibility Market

Authors
Carvalho, R; Faia, R; Santos, G; Pinto, T; Vale, Z;

Publication
International Conference on the European Energy Market, EEM

Abstract
The local flexibility market models have emerged as a market-based solution to respond to the challenges that the increase in distributed energy resources caused in the power and energy systems. Using Smart Grid enabling technologies, consumers and prosumers are prepared to respond to any possible demand-side flexibility event. In this scope, this work presents an advanced bidding model for the prosumers/consumers' participation in a local flexibility market to solve existing issues in the local grid. The proposed advanced model consists of a single-sided auction-based clearing method where prosumer offers are ranked and chosen according to the price and other characteristics, such as their location and distance to the problem to be solved. The aim is to prioritize and select the offers that have a more positive impact on the situation to solve at the lowest possible cost. © 2022 IEEE.

2022

GIS APPLICATION TO DETECT INVASIVE SPECIES IN AQUATIC ECOSYSTEMS

Authors
Duarte, L; Castro, JP; Sousa, JJ; Padua, L;

Publication
2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022)

Abstract
The detection of invasive plant species in aquatic ecosystems is important to help in the control or to mitigate its spread and impacts. Remote sensing (RS) can be explored in this context, helping to monitor this type of plants. This study intends to present a free to use and open-source software application that, through a graphical user interface, can process remote sensed data to monitor the spread of invasive plant species in aquatic environments, enabling a multi-temporal monitoring. Both unmanned aerial vehicle and satellite-based data were used to validate the potential of the proposed application. A site containing water hyacinth (Eichhornia crassipes) was selected as case study. Both RS platforms provided effective data to detect the areas containing water hyacinth. Thus, this tool provides an alternative and user-friendly way to include RS-based data in ecological studies allowing the detection of invasive plants in water channels.

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