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Sugarcane yield and quality using soil magnetic susceptibility
Catelan, Michelle Gimenes; Marques Júnior, José; Siqueira, Diego Silva; Gomes, Romário Pimenta; Bahia, Angélica Santos Rabelo de Souza.
Affiliation
  • Catelan, Michelle Gimenes; Usina São Martinho. Pradópolis. BR
  • Marques Júnior, José; Universidade Estadual Paulista. FCAV. Depto. Ciências da Produção Agrícola. Jaboticabal. BR
  • Siqueira, Diego Silva; Universidade Estadual Paulista. FCAV. Depto. Ciências da Produção Agrícola. Jaboticabal. BR
  • Gomes, Romário Pimenta; Universidade Estadual Paulista. FCAV. Depto. Ciências da Produção Agrícola. Jaboticabal. BR
  • Bahia, Angélica Santos Rabelo de Souza; Universidade Estadual Paulista. FCAV. Depto. Ciências da Produção Agrícola. Jaboticabal. BR
Sci. agric ; 79(4): e20200329, 2022. tab, graf
Article in En | VETINDEX | ID: biblio-1290214
Responsible library: BR68.1
ABSTRACT
The concept of production environments, which is widely used to classify the yield potential of soils, and magnetic susceptibility (MS), is emerging as an important tool for mapping ultra-detailed areas. Given this background, this paper aims to evaluate the use of MS as a tool for the identification of areas with different potential the enhancing of sugarcane yield and quality, and the allocation of varieties. An area of 445 ha was sampled at 1 point every 7 ha, and 14 points were determined for stratified sampling following the top of the landscape. Particle size and MS of samples at depths of 0.0-0.2 and 0.2-0.4 m were analyzed. The data on yield and quality of raw material were obtained from a nine crop season database and biometry performed in the 2018/19 crop season. The multivariate analysis of historical results showed the formation of three groups with different yield and quality potential, with a difference of up to 17.28 mg of cane per hectare between the group with the highest and lowest potential, based on soil MS. An analysis of the performance of the varieties involved showed that MS is effective in identifying areas with different potential for sugarcane yield and quality, differentiating by up to 34.5 % the performance of the same variety in different MS classes and by up to 38.5 % the performance of different varieties in similar MS classes. Thus, MS is an effective tool for identifying areas with different potential for sugarcane yield and quality, and can be used for allocating varieties in the field.
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Full text: 1 Database: VETINDEX Main subject: Soil Microbiology / Soil Characteristics / Saccharum / Quality Improvement Language: En Journal: Sci. agric Year: 2022 Document type: Article

Full text: 1 Database: VETINDEX Main subject: Soil Microbiology / Soil Characteristics / Saccharum / Quality Improvement Language: En Journal: Sci. agric Year: 2022 Document type: Article