Site-specific weed management on organic grain farms using variable rate seeding and data driven simulation

被引:0
|
作者
Loewen, Sasha [1 ]
Maxwell, Bruce D. [1 ]
机构
[1] Montana State Univ, Dept Land Resources & Environm Sci, Bozeman, MT USA
关键词
crop competition; integrated weed management; net return; organic agriculture; precision agriculture; CROPPING SYSTEMS; WHEAT; GROWTH;
D O I
10.1111/wre.12669
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Integrated weed management is integral to organic farming, with increased crop seeding rates as one effective weed suppression tactic. Precision agriculture, which uses guidance and sensor technologies to direct site-specific management, could allow for targeted weed management using variable seeding rates. On farm precision experimentation (OFPE) can be used to predict site-specific sub-field weed biomass response to a range of varied crop and cover crop seed rates across whole fields to provide decision support directly to farmers. We used OFPE to compare five simulated precision seeding strategies to either maximize net return or minimize weed biomass. Five site-years of OFPE data were collected from organic farms in Manitoba, Canada and Montana, USA. Seeding rate, weed biomass, crop yield, topographic variables and other remotely sensed data were collected on a 10-m grid to model yield and weed response to seeding rates for each field. Simulated site-specific variable seeding rate net returns improved upon farmer chosen uniform seeding rate net returns on average by $115 ha-1. When variable seeding rates were optimized to minimize weed biomass, simulated weeds were reduced on average by 10 kg ha-1 relative to the farmer chosen uniform seed rates. A combined variable rate approach which balanced net return and weed minimization improved both net return and weed suppression compared to farmer-chosen seeding rates in every site-year. The various seeding rate strategies represent different methods from which farmers can choose to implement OFPE to optimize sub-field-specific planting rates and to increase their field-scale ecological knowledge.
引用
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页数:13
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