Ecdysis Foundation, Estelline, South Dakota, United States of America.
PeerJ. 2023 Aug 2;11:e15740. doi: 10.7717/peerj.15740. eCollection 2023.
Plant biomass is a commonly used metric to assess agricultural health and productivity. Removing plant material is the most accurate method to estimate plant biomass, but this approach is time consuming, labor intensive, and destructive. Previous attempts to use indirect methods to estimate plant biomass have been limited in breadth and/or have added complexity in data collection and/or modeling. A cost-effective, quick, accurate, and easy to use and understand approach is desirable for use by scientists and growers.
An indirect method for estimating plant biomass using a drop-plate meter was explored for use in broad array of crop systems.
Drop-plate data collected by more than 20 individuals from 16 crop types on 312 farms across 15 states were used to generate models to estimate plant biomass among and within crop types.
A linear model using data from all crop types explained approximately 67% of the variation in plant biomass overall. This model performed differently among crop types and stand heights, which was owed to differences among sample sizes and farming between annual and perennial systems. Comparatively, the model using the combined dataset explained more variance in biomass than models generated with commodity specific data, with the exception of wheat.
The drop-plate approach described here was inexpensive, quick, simple, and easy to interpret, and the model generated was robust to error and accurate across multiple crop types. The methods met all expectations for a broad-use approach to estimating plant biomass and are recommended for use across all agroecosystems included in this study. While it may be useful in crops beyond those included, validation is suggested before application.
植物生物量是评估农业健康和生产力的常用指标。去除植物材料是估计植物生物量最准确的方法,但这种方法既耗时又费力,而且具有破坏性。以前使用间接方法估计植物生物量的尝试在广度上受到限制,或者在数据收集和/或建模方面增加了复杂性。需要一种具有成本效益、快速、准确、易于使用和理解的方法,供科学家和种植者使用。
探索使用落板计间接估计植物生物量的方法,以应用于广泛的作物系统。
从 15 个州的 312 个农场的 16 种作物中由 20 多人收集的落板数据用于生成模型,以估计作物类型之间和内部的植物生物量。
使用所有作物类型的数据生成的线性模型总体上解释了植物生物量变化的约 67%。该模型在作物类型和株高之间表现不同,这归因于样本量和种植年度与多年生系统之间的差异。相比之下,使用组合数据集的模型比使用特定商品数据生成的模型解释了更多的生物量变化,除了小麦。
此处描述的落板方法成本低、速度快、简单且易于解释,生成的模型对误差具有鲁棒性,并且在多个作物类型中都准确。该方法满足了估计植物生物量的广泛应用方法的所有期望,并建议在本研究中包含的所有农业生态系统中使用。虽然它在超出本研究涵盖的作物中可能有用,但建议在应用之前进行验证。