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Publicações

Publicações por Filipe Neves Santos

2023

Enhancing Grape Brix Prediction in Precision Viticulture: A Benchmarking Study of Predictive Models using Hyperspectral Proximal Sensors

Autores
Santos-Campos, M; Tosin, R; Rodrigues, L; Gonçalves, I; Barbosa, C; Martins, R; Santos, F; Cunha, M;

Publicação
The 3rd International Electronic Conference on Agronomy

Abstract

2023

Machine Vision for Smart Trap Bandwidth Optimization and New Threat Identification

Autores
Moura, P; Pinheiro, I; Terra, F; Pinho, T; Santos, F;

Publicação
The 3rd International Electronic Conference on Agronomy

Abstract

2023

Synergizing Crop Growth Models and Digital Phenotyping: The Design of a Cost-Effective Internet of Things-Based Sensing Network

Autores
Rodrigues, L; Moura, P; Terra, F; Carvalho, AM; Sarmento, J; dos Santos, FN; Cunha, M;

Publicação
The 3rd International Electronic Conference on Agronomy

Abstract

2023

Robotic Pollinating Tools for Actinidia Crops

Autores
Pinheiro, I; Santos, F; Valente, A; Cunha, M;

Publicação
The 3rd International Electronic Conference on Agronomy

Abstract

2013

Robust and Fast Algorithm for Artificial Landmark Detection in an Industrial Environment

Autores
Pinto, M; Santos, F; Moreira, AP; Corves, BJ; Silva, R;

Publicação
Journal of Automation and Control Engineering - JOACE

Abstract

2023

Phenobot - Intelligent photonics for molecular phenotyping in Precision Viticulture

Autores
Martins, RC; Cunha, M; Santos, F; Tosin, R; Barroso, TG; Silva, F; Queirós, C; Pereira, MR; Moura, P; Pinho, T; Boaventura, J; Magalhães, S; Aguiar, AS; Silvestre, J; Damásio, M; Amador, R; Barbosa, C; Martins, C; Araújo, J; Vidal, JP; Rodrigues, F; Maia, M; Rodrigues, V; Garcia, A; Raimundo, D; Trindade, M; Pestana, C; Maia, P;

Publicação
BIO Web of Conferences

Abstract
The Phenobot platform is comprised by an autonomous robot, instrumentation, artificial intelligence, and digital twin diagnosis at the molecular level, marking the transition from pure data-driven to knowledge-driven agriculture 4.0, towards a physiology-based approach to precision viticulture. Such is achieved by measuring the plant metabolome 'in vivo' and 'in situ', using spectroscopy and artificial intelligence for quantifying metabolites, e.g.: i. grapes: chlorophylls a and b, pheophytins a and b, anthocyanins, carotenoids, malic and tartaric acids, glucose and fructose; ii. foliage: chlorophylls a and b, pheophytins a and b, anthocyanins, carotenoids, nitrogen, phosphorous, potassium, sugars, and leaf water potential; and iii. soil nutrients (NPK). The geo-referenced metabolic information of each plant (organs and tissues) is the basis of multi-scaled analysis: i. geo-referenced metabolic maps of vineyards at the macroscopic field level, and ii. genome-scale 'in-silico' digital twin model for inferential physiology (phenotype state) and omics diagnosis at the molecular and cellular levels (transcription, enzyme efficiency, and metabolic fluxes). Genome-scale 'in-silico' Vitis vinifera numerical network relationships and fluxes comprise the scientific knowledge about the plant's physiological response to external stimuli, being the comparable mechanisms between laboratory and field experimentation - providing a causal and interpretable relationship to a complex system subjected to external spurious interactions (e.g., soil, climate, and ecosystem) scrambling pure data-driven approaches. This new approach identifies the molecular and cellular targets for managing plant physiology under different stress conditions, enabling new sustainable agricultural practices and bridging agriculture with plant biotechnology, towards faster innovations (e.g. biostimulants, anti-microbial compounds/mechanisms, nutrition, and water management). Phenobot is a project under the Portuguese emblematic initiative in Agriculture 4.0, part of the Recovery and Resilience Plan (Ref. PRR: 190 Ref. 09/C05-i03/2021 - PRR-C05-i03-I-000134). © The Authors, published by EDP Sciences. This is an open access article distributed under the terms of the Creative Commons Attribution License 4.0 (https://creativecommons.org/licenses/by/4.0/).

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