4.7 Article

Evaluating Decision Support Tools for Precision Nitrogen Management on Creeping Bentgrass Putting Greens

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Agronomy

Guiding fall fertilization of cool-season turfgrass lawns with NDVI sufficiency index

Karl Guillard et al.

Summary: This study conducted over 3 years in Connecticut determined the fall and spring NDVI SI values for a mixed species, cool-season lawn. Using NDVI SI can offer guidance for nutrient status and fertilization of cool-season turfgrass lawns.

CROP SCIENCE (2021)

Article Plant Sciences

Creeping Bentgrass Yield Prediction With Machine Learning Models

Qiyu Zhou et al.

Summary: This study developed machine-learning-based turf growth models using the random forest algorithm, with temperature and relative humidity being the most important weather factors affecting model accuracy. Including NDRE improved the prediction accuracy, with an R² of 0.47 for the testing data set. The research demonstrated the feasibility of creating machine-learning-based yield prediction models for guiding N fertilization decisions on golf course putting greens.

FRONTIERS IN PLANT SCIENCE (2021)

Article Ecology

Assessing urban ecosystem services provided by green infrastructure: Golf courses in the Minneapolis-St. Paul metro area

Eric Lonsdorf et al.

Summary: With over half of the world's population living in urban areas, the potential for people to benefit from ecosystem services is mainly concentrated in cities. However, there is still a lack of a straightforward and replicable method to quantify multiple urban ecosystem services, leading to the undervaluation of nature in urban planning decisions. Through a study in Minnesota, USA, a replicable framework was developed to assess changes in urban ecosystem services and found that golf courses provide an intermediate amount of services compared to other land use options. This approach could be applied to other cities to help integrate the value of nature into urban planning.

LANDSCAPE AND URBAN PLANNING (2021)

Review Environmental Sciences

Export of nitrogen and phosphorus from golf courses: A review

Emily M. Bock et al.

JOURNAL OF ENVIRONMENTAL MANAGEMENT (2020)

Review Agriculture, Multidisciplinary

Crop yield prediction using machine learning: A systematic literature review

Thomas van Klompenburg et al.

COMPUTERS AND ELECTRONICS IN AGRICULTURE (2020)

Article Multidisciplinary Sciences

Effects of water stress on spectral reflectance of bermudagrass

Lisa Caturegli et al.

SCIENTIFIC REPORTS (2020)

Article Plant Sciences

California Almond Yield Prediction at the Orchard Level With a Machine Learning Approach

Zhou Zhang et al.

FRONTIERS IN PLANT SCIENCE (2019)

Article Agronomy

Plant Colorants Interfere with Reflectance-Based Vegetation Indices

Glen R. Obear et al.

CROP SCIENCE (2017)

Article Agronomy

Accurate prediction of sugarcane yield using a random forest algorithm

Yvette Everingham et al.

AGRONOMY FOR SUSTAINABLE DEVELOPMENT (2016)

Article Multidisciplinary Sciences

Unmanned Aerial Vehicle to Estimate Nitrogen Status of Turfgrasses

Lisa Caturegli et al.

PLOS ONE (2016)

Article Agronomy

Documenting Trends in Pest Management Practices on US Golf Courses

Wendy D. Gelernter et al.

CROP FORAGE & TURFGRASS MANAGEMENT (2016)

Article Agriculture, Multidisciplinary

Use of a virtual-reference concept to interpret active crop canopy sensor data

Kyle H. Holland et al.

PRECISION AGRICULTURE (2013)

Article Agronomy

Demand-driven fertilization. Part I: Nitrogen productivity in four high-maintenance turf grass species

Tom Ericsson et al.

ACTA AGRICULTURAE SCANDINAVICA SECTION B-SOIL AND PLANT SCIENCE (2012)

Article Agronomy

Nitrogen remote diagnosis in a creeping bentgrass golf green

Rafael J. Lopez-Bellido et al.

EUROPEAN JOURNAL OF AGRONOMY (2012)

Article Ecology

Environmental management of UK golf courses for biodiversity - attitudes and actions

Robert A. Hammond et al.

LANDSCAPE AND URBAN PLANNING (2007)

Article Agronomy

Remote sensing of nitrogen stress in creeping bentgrass

Jason K. Kruse et al.

AGRONOMY JOURNAL (2006)