Managing Acrylamide at the Agricultural Stage: Variety Selection, Crop Management, and the Prospects for Solving the Acrylamide Problem Through Plant Breeding and Biotechnology

Author(s):  
Nigel G. Halford
2021 ◽  
pp. 89-123
Author(s):  
Dennis B. Egli

Abstract This chapter discusses planting-seed quality, variety selection, plant population, planting date and row spacing. The goal of crop management is to create the perfect environment for the growth of the crop, where the perfect environment is characterized by the absence of stress or other factors that reduce crop growth and yield. This goal may be impossible or uneconomical to achieve, but that does not detract from its usefulness as a goal. The management practices discussed in this chapter are fundamental components of grain production systems that contribute to reaching the goal of the perfect environment. There are many management options available to an individual producer; selecting the best combination is not always easy and it may be constrained by factors outside the realm of the physiological processes controlling crop yield.


Energy ◽  
2001 ◽  
Vol 26 (11) ◽  
pp. 1031-1040 ◽  
Author(s):  
Maria Márcia Pereira Sartori ◽  
Helenice de Oliveira Florentino ◽  
Cesar Basta ◽  
Alcides Lopes Leão

OCL ◽  
2018 ◽  
Vol 25 (6) ◽  
pp. D605 ◽  
Author(s):  
Perrine Tonin ◽  
Nathalie Gosselet ◽  
Emélie Halle ◽  
Marjorie Henrion

Oil & protein ideotypes might be “ideal” in terms of agronomy, they cannot be grown if they do not meet a demand. And while plant breeding takes years to develop new varieties, consumers can change their habits very quickly. Understand the “ideal” crops from the downstream point of view is therefore of paramount importance for R&D. In this review, we look at the current and what may be the future demands for the oil and protein crops. Because of diversity of products and consumers around the world, we chose to focus on French and Western Europe productions and markets: 1) consumers are in a quest for quality, traceability and sustainability (economic, social and environmental) with specific focus on GMO-free and organic demands. Some go vegan and more and more people switch from animal to vegetal protein intakes. And they want to rethink the agriculture model. 2) The food industry must adapt to all these demands while develop solutions for technological obstacles and remain cost-competitive. 3) The farmer needs crop profitability that relies on high and steady yields, eco-friendly and cost-competitive crop management techniques and decent price.


2020 ◽  
Vol 12 (15) ◽  
pp. 2445
Author(s):  
Walter Chivasa ◽  
Onisimo Mutanga ◽  
Chandrashekhar Biradar

Accelerating crop improvement for increased yield and better adaptation to changing climatic conditions is an issue of increasing urgency in order to satisfy the ever-increasing global food demand. However, the major bottleneck is the absence of high-throughput plant phenotyping methods for rapid and cost-effective data-driven variety selection and release in plant breeding. Traditional phenotyping methods that rely on trained experts are slow, costly, labor-intensive, subjective, and often require destructive sampling. We explore ways to improve the efficiency of crop phenotyping through the use of unmanned aerial vehicle (UAV)-based multispectral remotely sensed data in maize (Zea mays L.) varietal response to maize streak virus (MSV) disease. Twenty-five maize varieties grown in a trial with three replications were evaluated under artificial MSV inoculation. Ground scoring for MSV infection was carried out at mid-vegetative, flowering, and mid-grain filling on a scale of 1 (resistant) to 9 (susceptible). UAV-derived spectral data were acquired at these three different phenological stages in multispectral bands corresponding to Green (0.53–0.57 μm), Red (0.64–0.68 μm), Rededge (0.73–0.74 μm), and Near-Infrared (0.77–0.81 μm). The imagery captured was stitched together in Pix4Dmapper, which generates two types of multispectral orthomosaics: the NoAlpha and the transparent mosaics for each band. The NoAlpha imagery was used as input into QGIS to extract reflectance data. Six vegetation indices were derived for each variety: normalized difference vegetation index (NDVI), green normalized difference vegetation index (GNDVI), Rededge NDVI (NDVIrededge), Simple Ratio (SR), green Chlorophyll Index (CIgreen), and Rededge Chlorophyll Index (CIrededge). The Random Forest (RF) classifier was used to evaluate UAV-derived spectral and VIs with and without variable optimization. Correlations between the UAV-derived data and manual MSV scores were significant (R = 0.74–0.84). Varieties were classified into resistant, moderately resistant, and susceptible with overall classification accuracies of 77.3% (Kappa = 0.64) with optimized and 68.2% (Kappa = 0.51) without optimized variables, representing an improvement of ~13.3% due to variable optimization. The RF model selected GNDVI, CIgreen, CIrededge, and the Red band as the most important variables for classification. Mid-vegetative was the most ideal phenological stage for accurate varietal phenotyping and discrimination using UAV-derived multispectral data with RF under artificial MSV inoculation. The results provide a rapid UAV-based remote sensing solution that offers a step-change towards data availability at high spatial (submeter) and temporal (daily/weekly) resolution in varietal analysis for quick and robust high-throughput plant phenotyping, important for timely and unbiased data-driven variety selection and release in plant breeding programs, especially as climate change accelerates.


Author(s):  
Gunta Bebre ◽  
Maija Gaiķe ◽  
Ilze Skrabule ◽  
Vita Gaiķe ◽  
Arta Kronberga

The State Priekuïi Plant Breeding Institute (previously Wenden, Cçsis or Priekuïi Experimental and Breeding Station) started its operation in 1913. The main aims of research have remained the same for the last century: to provide knowledge on crop management and to create crop varieties suitable to local growing conditions and farming systems, acceptable to consumer requirements. Supply to farmers of high quality seed material of cereals, potato, pea, clover and grasses is an essential part of the scope. Overall, 31 crop species have been involved in a wide range of studies. More than 100 different crop varieties have been bred since the beginning of the 20th century. Potato varieties ‘Brasla’, ‘Agrie Dzeltenie’, winter rye variety ‘Kaupo’, pea varieties ‘Vitra’, ‘Retrija’, barley variety ‘Idumeja’ and several clover and grass varieties are widely grown in farmers’ fields. The first hulless barley variety in the Baltic States, ‘Irbe’, and winter triticale variety ‘Inarta’ have been bred in the Institute recently. Long-term crop rotation trials have been run for more than 50 years. A number of outstanding scientists and agronomists have worked in the Institute: potato breeders E. Knappe and V. Gaujers, cereal breeders J. Lindermanis, M. Gaiíe, and M. Sovere, grass breeders P. Pommers, A. Apinis, and I. Holms, pea breeder M. Vitjaþkova, researchers on crop management R. Sniedze and V. Miíelsons, research manager and director U. Miglavs and others


2018 ◽  
Author(s):  
Jolie WAX ◽  
Zhu Zhuo ◽  
Anna Bower ◽  
Jessica Cooper ◽  
Susan Gachara ◽  
...  

Author(s):  
Yu.V. Chesnokov ◽  
◽  
N.V. Kocherina ◽  
A.M. Artemyeva ◽  
◽  
...  

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