在太平洋地区数据匮乏的环境中进行土壤安全评估的快速土壤属性评价

J.P. Moloney , Y. Ma , U. Stockmann , V.T. Manu , V. Minoneti , S.T. Hui , S.M. Halavatau , S. Patolo , T. Tukia , S. Foliaki , T. Carter , B.C.T. Macdonald , J. Barringer , P. Roudier
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引用次数: 0

摘要

全球许多环境都面临着土壤资源日益增长的压力,而有效、可扩展的土壤条件和资本评估方法对于应对有形的土壤威胁至关重要。这种情况在太平洋岛屿国家和地区(PICTs)很常见,那里的高通量土壤分析实验室有限,而且存在土壤有机碳减少、酸化和肥力下降等问题。土壤光谱推断为这些地区提供了一个快速了解土壤资本和状况的机会,但对强大校准库的需求仍然是一个限制因素。本研究通过对汤加王国汤加塔普岛的案例研究,调查了适合该地区的光谱库--新西兰土壤光谱库(NZSSL)的实用性,以支持在数据匮乏的环境(如太平洋岛屿信息和通信技术中心)中开发土壤光谱推断。我们对比了为新西兰土壤开发的现有偏最小二乘回归 (PLSR) 模型在汤加塔普岛土壤上的表现,并探索了通过基于记忆的学习 (MBL) 并辅以当地数据来提高预测结果的机会。我们的工作表明,通过 PICTs 中的土壤光谱推断,具有成本效益和及时进行土壤监测的潜力。这项工作进一步强调了区域合作和数据共享对于解决土壤安全问题的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid soil attribute evaluation for soil security assessments in data-poor environments in the Pacific region

Many global environments face increasing pressures on soil resources, and effective, scalable methods for assessment of soil condition and capital are essential to respond to tangible soil threats. This situation is common across Pacific Island Countries and Territories (PICTs), where high throughput soil analysis laboratories are limited, and issues such as soil organic carbon decline, acidification and fertility declines are present. Soil spectral inference presents an opportunity in such regions to provide rapid insights into soil capital and condition, though the need for robust calibration libraries remains a limiting factor. This work investigates the utility of a regionally appropriate spectral library, the New Zealand Soil Spectral Library (NZSSL) to support the development of soil spectral inference in data-poor environments, such as PICTs, through a case study on the island of Tongatapu in The Kingdom of Tonga. We contrast the performance of existing partial least squares regression (PLSR) models developed for New Zealand soils on soils from Tongatapu and explore the opportunities for enhancement of predictions formed through memory-based learning (MBL) supplemented with local data. Our work shows the potential for cost-effective and timely soil monitoring through soil spectral inference in PICTs. The work further underscores the importance of regional cooperation and data-sharing for addressing soil security.

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来源期刊
Soil security
Soil security Soil Science
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