危地马拉土著小规模农业和粮食系统建模--针对数据匮乏地区的混合贝叶斯推断法

IF 6.1 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY
Julien Malard-Adam , Jan Adamowski , Héctor Tuy , Hugo Melgar-Quiñonez
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引用次数: 0

摘要

参与式系统动力学建模是一种有用的方法,可用于描述农业系统的特征,以及决定其长期行为和可持续性的人与农艺对应物之间的复杂动态联系。然而,使用系统动力学方法面临的一个挑战是许多关键变量的时间序列数据稀缺,这阻碍了这些模型的校准和验证。本研究提出了一种新方法,用于量化社会-农业系统的系统动力学模型中难以量化的关系,即当许多相关社会经济模型变量的时间数据稀缺但空间数据丰富(如调查或普查数据)时。我们提出了一种量化系统动力学模型的方法,利用不同地区空间明确数据的贝叶斯推理来估算社会经济变量之间的关系形态,在这种情况下,一个国家数值的多样性可以弥补相关地区时间序列数据的不足。该方法的分层组件允许根据每个站点与案例研究区域的相似程度自动加权每个站点的数据。该方法被应用于危地马拉 Tz'olöj Ya'和 K'iche' 两个不同土著农业社区的农业系统和粮食安全模型。1) 结果表明,该模型在社会经济和环境方面与案例研究地点相似的非研究地点城市中的表现要好于在相似度较低的城市中的表现(研究地点的 R 值为 0.81-0.98,但在许多相似度较低的地区小于 0.5)。新方法可以对农业系统的系统动力学模型进行量化和测试,否则,由于缺乏时间序列数据,就无法对这些模型进行正式校准或验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modelling Indigenous small-scale agriculture and food systems in Guatemala - Hybrid Bayesian inference for data-poor regions

Modelling Indigenous small-scale agriculture and food systems in Guatemala - Hybrid Bayesian inference for data-poor regions

CONTEXT

Participatory system dynamics modelling is a useful method for characterising agricultural systems and the complex dynamics linking their human and agronomic counterparts that determine their long-term behaviour and sustainability. One challenge facing this use of system dynamics methods, nonetheless, is the scarcity of time-series data for many key variables, which hinders the calibration and validation of these models.

OBJECTIVE

This research proposes a new approach for quantifying difficult-to-quantify relationships within system dynamics models of socio-agricultural systems when temporally scarce but spatially rich data (e.g., survey or census data) is available for many socioeconomic model variables of interest.

METHODS

We propose a methodology to quantify system dynamics models that uses Bayesian inference over spatially-explicit data from different regions to estimate the shape of relationships between socioeconomic variables, where the diversity of values across a country can serve to compensate for the lack of time-series data in regions of interest. The hierarchical component of the approach allows for the automatic weighting of each site's data according to its degree of similarity to the case study region. This approach was applied to a model of agricultural systems and food security developed in Tz'olöj Ya', and K'iche', Guatemala with two different Indigenous farming communities.

RESULTS AND CONCLUSIONS

1) Results indicate that the model performs better in non-study site municipalities that are socioeconomically and environmentally similar to the case study sites than in less similar municipalities (R2 0.81–0.98 in the study sites, but <0.5 in many dissimilar regions).

2) The spatial validation procedure across non-case study municipalities shows that trends in population and child chronic malnutrition are relatively well-represented by the model in similar municipalities (R2 0.81–0.99 in case study regions), while forest cover dynamics are much more difficult to generalise across regions (R2 0.26–0.87 in case study regions, and worse elsewhere).

3) The model showed that agricultural system resiliency was best improved not by technological fixes to improve crop productivity, but rather by structural changes to livelihood diversification.

4) These results were possible due to the hybrid approach used: stakeholder participation was central to the identification of key relationships between agronomic and socioeconomic variables, while Bayesian inference and spatial validation allowed for the assessment of the model's validity and geographical limits.

SIGNIFICANCE

The new methodology allows for quantification and testing of system dynamics models of agricultural systems that could otherwise not be formally calibrated or validated due to a lack of time-series data.

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来源期刊
Agricultural Systems
Agricultural Systems 农林科学-农业综合
CiteScore
13.30
自引率
7.60%
发文量
174
审稿时长
30 days
期刊介绍: Agricultural Systems is an international journal that deals with interactions - among the components of agricultural systems, among hierarchical levels of agricultural systems, between agricultural and other land use systems, and between agricultural systems and their natural, social and economic environments. The scope includes the development and application of systems analysis methodologies in the following areas: Systems approaches in the sustainable intensification of agriculture; pathways for sustainable intensification; crop-livestock integration; farm-level resource allocation; quantification of benefits and trade-offs at farm to landscape levels; integrative, participatory and dynamic modelling approaches for qualitative and quantitative assessments of agricultural systems and decision making; The interactions between agricultural and non-agricultural landscapes; the multiple services of agricultural systems; food security and the environment; Global change and adaptation science; transformational adaptations as driven by changes in climate, policy, values and attitudes influencing the design of farming systems; Development and application of farming systems design tools and methods for impact, scenario and case study analysis; managing the complexities of dynamic agricultural systems; innovation systems and multi stakeholder arrangements that support or promote change and (or) inform policy decisions.
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